FINANCE & MARKETS GLOBAL PRACTICE Report No: ACS18885 Enhancing Financial Capability and Inclusion in Senegal A Demand-side Survey SENEGAL, June 2016 ii © 2016 International Bank for Reconstruction and Development / The World Bank Group 1818 H Street NW Washington DC 20433 Telephone: 202-473-1000 Internet: www.worldbank.org Standard Disclaimer This volume is a product of the staff of the International Bank for Reconstruction and Development/ The World Bank. The findings, interpretations, and conclusions expressed in this work do not necessarily reflect the views of The World Bank, its Board of Executive Directors, or the governments they represent. The World Bank does not guarantee the accuracy of the data included in this work. The boundaries, colors, denominations, and other information shown on any map in this work do not imply any judgment on the part of The World Bank concerning the legal status of any territory or the endorsement or acceptance of such boundaries. 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Acknowledgements This Financial Capability and Inclusion Survey Report was prepared by a team led by Siegfried Zottel 1 (Senior Financial Sector Specialist) from the World Bank Group’s (WBG) Finance & Markets Global Practice and included Bilal Zia (Senior Economist, DECFP), and Fares Khoury (Economist and President of Étude Économique Conseil, EEC Canada). The team is grateful to the peer reviewers of this report – Jean-Michel N. Marchat (Lead Private Sector Development Specialist, GTC07), Miriam Bruhn (Senior Economist, DECFP), and Luis Trevino Garza (Senior Financial Sector Specialist, GFM2B) - for their valuable comments. Irina Astrakhan, Douglas Pearce (Practice Managers, GFMDR), and Cedric Mousset (Lead Financial Sector Specialist, GFMDR) provided overall guidance to the team. Research assistance and design inputs provided to the team by Minah Je (Consultant, GFMDR) and Lina Wedefort (Economist, EEC Canada) are also gratefully acknowledged. The team expresses its deepest appreciation to the Senegal authorities, including the Ministry of Finance and Economy of Senegal (MEFP) and the the Agence Nationale de la Statistique et de la Démographie (ANSD) for their cooperation and collaboration during the preparation and implementation of the survey. In particular the team wants to extend its sincere gratitude to the following officials and experts from the MEFP who provided invaluable support and strategic guidance: Ms. Diop Oulimata (Directrice), Cheikh A. Bamba Fall (Conseiller), and Oumar Diallo (Economiste Financier). The team’s sincere appreciation is further extended to the following ANSD officials and experts for their collaboration and technical support: Cheikh Tidiane Ndiaye (Directeur des Statistique Demographieques et Sociales). The team would also like to express its gratitude to EEC Canada’s core and field team, led by Isabelle Leyder (Deputy Project Director of the survey). We are grateful to Nicolas Megelas, (Country Manager at EEC Canada), as well as all supervisors and enumerators whose efforts and commitments made this project possible. Finally, the team owes particular appreciation to all Senegal women and men who patiently responded to the survey. The Survey Report was financed by the State Secretariat for Economic Affairs (SECO)-funded “Consumer Protection and Financial Literacy” Program. 1 The corresponding lead author can be contacted at: szottel@worldbank.org i Contents Acknowledgements ..................................................................................................................... i Abbreviations and Acronyms ................................................................................................... viii Preface ...................................................................................................................................... 1 Key Findings .............................................................................................................................. 2 Summary of Key Recommendations ......................................................................................... 3 Executive Summary .................................................................................................................. 4 Financial Inclusion ............................................................................................................ 4 Recommendations ............................................................................................................ 5 Financial Capability ........................................................................................................... 8 Recommendations ............................................................................................................ 9 Relationship between Financial Inclusion and Capability ............................................... 11 Recommendations .......................................................................................................... 11 Financial Consumer Protection ....................................................................................... 12 Recommendations .......................................................................................................... 12 Background on Senegal Survey .............................................................................................. 15 1 Financial Inclusion ........................................................................................................... 18 1.1 Introduction ............................................................................................................... 18 1.2 Headline Measures of Financial Inclusion ................................................................ 19 1.3 Usage of Financial Products ..................................................................................... 23 1.3.1 Commercial and Postal Banks ........................................................................ 23 1.3.2 Payment Providers .......................................................................................... 26 1.3.3 Microfinance Institutions .................................................................................. 31 1.3.4 Insurance Companies ..................................................................................... 33 1.3.5 Islamic Finance ............................................................................................... 34 1.3.6 Patterns of Formality and Informality in Saving and Credit ............................. 36 1.4 The Unbanked and Barriers to Owning a Formal Account ....................................... 38 2 Financial Capability ......................................................................................................... 39 2.1 Knowledge of Financial Concepts ............................................................................. 39 2.2 Knowledge of Financial Products.............................................................................. 47 2.3 Financial Behavior and Attitudes .............................................................................. 49 3 Relationship between Financial Inclusion and Financial Capability ................................ 57 3.1 Financial Literacy and Financial Inclusion ................................................................ 57 3.2 Knowledge about Financial Products and Financial Inclusion .................................. 60 ii 3.3 Financial Attitudes/Behavior and Financial Inclusion ................................................ 63 4 Financial Consumer Protection ....................................................................................... 65 4.1 Consumers’ Satisfaction with Financial Products ..................................................... 66 4.2 Consumers’ Approaches to Deal with Provider Conflicts.......................................... 68 References .............................................................................................................................. 72 Appendix ................................................................................................................................. 74 A.Cross-tabulation of Financial Inclusion ........................................................................ 74 B.Background on Senegal Financial Survey ................................................................... 76 C.Regression Tables ...................................................................................................... 79 Figures Figure 1. Financial Inclusion by Gender, Urban/ Rural, and Income .......................................... 21 Figure 2. Financial Inclusion by Employment ............................................................................. 22 Figure 3. Knowledge and Usage of Commercial or Postal Banks by Individual Characteristics 24 Figure 4. Knowledge and Usage of Money Transfer Services by Individual Characteristics ..... 26 Figure 5. Knowledge and Usage of E-money Agents by Individual Characteristics ................... 28 Figure 6. Number of mobile money accounts per 1,000 adults .................................................. 30 Figure 7. Consumer taxes as a proportion of total cost of mobile ownership 2014 .................... 30 Figure 8. Knowledge and usage of microfinance organizations by individual characteristics .... 32 Figure 9. Knowledge and Usage of Microfinance Organizations and Commercial and Postal Banks by Individual Characteristics ............................................................................................ 32 Figure 10. Knowledge and Usage of Insurance Companies by Individual Characteristics ........ 33 Figure 11. Reasons for not using Islamic Products .................................................................... 34 Figure 12. Choice of Financial Institution (% Preferring Islamic Banks over Conventional Banks) .................................................................................................................................................... 35 Figure 13. Formal and Informal Savings .................................................................................... 36 Figure 14. Formal and Informal Credit ....................................................................................... 36 Figure 15. Reasons for Not having a Formal Account (% of Unbanked Senegalese Without an Account) ..................................................................................................................................... 38 Figure 16. Financial Literacy distribution .................................................................................... 41 Figure 17. Financial Literacy Quiz Overview .............................................................................. 42 iii Figure 18. Low (0 – 2), medium (3 – 4) or high (5 – 7) financial literacy scores by income and education level ........................................................................................................................... 42 Figure 19. Attitudes toward debt ................................................................................................ 43 Figure 20. Awareness on Financial Concepts and Products ...................................................... 45 Figure 21. Comparison of Reported Understanding and Financial Literacy Quiz Results ......... 45 Figure 22. Media consumption by social and demographic groups ........................................... 46 Figure 23. Distribution of Financial Product Awareness Scores ................................................ 47 Figure 24. Overview of Financial Product Awareness by Financial Institutions ......................... 48 Figure 25. Average Financial Product Awareness Score by Area, Income Level, Age and Education ................................................................................................................................... 48 Figure 26. Fraction of Senegalese who know about Financial Products of Different Providers by Urban/Rural ................................................................................................................................ 49 Figure 27. Average Financial Capability Scores ........................................................................ 51 Figure 28. Average Financial Capability Scores by Area and Income Level .............................. 53 Figure 29. Average Financial Capability Scores by Age ............................................................ 53 Figure 30. Average Financial Capability Scores by Child Saving Behavior ............................... 54 Figure 31. Purpose of saving (Have strategies for meeting expenses in old age or cover expenses in old age) .................................................................................................................. 55 Figure 32. Implemented strategies for meeting expenses in old age or cover expenses in old age ............................................................................................................................................. 55 Figure 33. Average household income by household size ......................................................... 56 Figure 34. Household distribution and total population by household size ................................ 56 Figure 35. Distribution of Financial Literacy Score by Formal/informal Financial Products and Services Ownership ................................................................................................................... 58 Figure 36. Distribution of Financial Literacy Score by Usage of Formal/Informal Saving and Credit Products ........................................................................................................................... 59 Figure 37. Distribution of Financial Product Awareness Score by Reasons for not having a Formal Account .......................................................................................................................... 60 Figure 38. Distribution of Financial Product Awareness Score by Formal/Informal Financial Products and Services Ownership ............................................................................................. 61 Figure 39. Distribution of Financial Product Awareness Score by Usage of Formal/Informal Saving and Credit Products ........................................................................................................ 62 iv Figure 40. Financial Product Awareness by Financial Inclusion and Services Ownership ........ 63 Figure 41. Distribution of Financial Attitudes and Behaviors by Financial Inclusion .................. 64 Figure 42. Distribution of Financial Attitudes and Behaviors with and Without Different Financial Products ..................................................................................................................................... 64 Figure 43. Clients’ Satisfaction with Services Provided by Common Types of Financial Institutions .................................................................................................................................. 66 Figure 44. Clients’ Satisfaction with Services Provided by Commercial or Postal Banks .......... 66 Figure 45. Approaches to Deal with Financial Services Provider Conflicts ................................ 68 Figure 46. Overview of Disputes by Social and Demographics Factors .................................... 68 Figure 47. Action Taken to Redress Conflicts with Financial Service Providers ........................ 69 Figure 48. Reasons for Not Solving the Conflicts with Financial Service Providers ................... 70 Figure 49. Characterization of Senegalese Adults Who Did Not Take Any Actions to Solve a Dispute ....................................................................................................................................... 71 Figure 50. Estimated Population Break-down by Urban/Rural ................................................... 76 Figure 51. Estimated Population Break-down by Region ........................................................... 76 Figure 52. Estimated Population Break-down by Gender .......................................................... 77 Figure 53. Estimated Population Break-down by Age groups .................................................... 77 Figure 54. Estimated Population Break-down by Household Size ............................................. 77 Figure 55. Estimated Population Break-down by Education Groups ......................................... 78 Figure 56. Estimated Population Break-down by Stable/Unstable Income Groups ................... 78 Figure 57. Estimated Population Break-down by Different Income Groups ............................... 78 Tables Table 1. Comparison between Census Key Characteristics and Financial Capability Survey Profile ......................................................................................................................................... 17 Table 2. Measures of Financial Inclusion and Development across Economies ....................... 20 Table 3. Evolution of Financial Inclusion 2011-2015 .................................................................. 20 Table 4. ATM penetration ........................................................................................................... 24 Table 5. Measures of Mobile Financial Service Penetration across Economies ........................ 29 Table 6.Cross-country Comparison of Different Financial Literacy Scores ................................ 44 v Table 7. Main Identified Financial Components from PCA Analysis .......................................... 50 Table 8. Cross-country Comparison of Different Financial Capability Scores ............................ 52 Table 9. Financial Inclusion Summary by Social and Demographic Factors ............................. 74 Table 10. Financial Inclusion by Social and Demographic Factors ............................................ 79 Table 11. Probability of Having Ever Used Bank, Money Transfer or E-money Products by Social and Demographic Factors ............................................................................................... 80 Table 12. Probability of Having Ever Used Bank Products by Village Factors ........................... 81 Table 13. Probability of Knowing Products by Social and Demographic Factors ....................... 83 Table 14. Probability of Currently Having a Bank Account by Social and Demographic Factors 84 Table 15. Probability of Having Ever Used MFI or Money Charger Products by Social and Demographic Factors ................................................................................................................. 85 Table 16. Probability of Having Ever Used Insurance Products by Social and Demographic Factors........................................................................................................................................ 87 Table 17. Probability of Having Ever Used Brokerage Houses Products by Social and Demographic Factors ................................................................................................................. 88 Table 18. Financial Literacy Score by Social and Demographic Factors ................................... 90 Table 19. Financial Literacy Score by Village Factors ............................................................... 92 Table 20. Financial Capabilities by Social and Demographic Factors (I) ................................... 94 Table 21. Financial Capabilities by Social and Demographic Factors (II) .................................. 95 Table 22. Financial Capabilities by Social and Demographic Factors (III) ................................. 97 Table 23. Probability of Financial Inclusion by Financial Literacy Score, Financial Product Awareness, Social and Demographic Factors ......................................................................... 100 Table 24. Probability of Using Financial Instruments on Financial Capabilities Scores (I) ....... 101 Table 25. Probability of Using Financial Instruments on Financial Capabilities Scores (II) ...... 103 Table 26. Probability of Encountering a Financial Conflict by Social and Demographic Factors .................................................................................................................................................. 105 Boxes Box 1. Remittances and Money Transfer Services in Senegal .................................................. 27 Box 2. Financial Literacy Quiz .................................................................................................... 40 Box 3. Debt level and financial knowledge ................................................................................. 43 vi Box 4. Media Consumption Overview ........................................................................................ 46 Box 5. Planning for Old Age Expenses ...................................................................................... 55 Box 6. Household Size and Planning for Old Age ...................................................................... 56 Maps Map 1. Financial inclusion by region (%) .................................................................................... 21 Map 2. Spatial Distribution of Formal Borrowing (% of Adults with Formal Credit) .................... 37 Map 3. Spatial Distribution of Informal Borrowing (% of Adults with Formal Credit) .................. 37 Map 4. Historical Usage of Commercial and Postal Banks by Region (%) ................................ 67 Map 5. Clients’ Satisfaction with Commercial and Postal Bank Services by Region (%) ........... 67 Map 6. Regional Overview of Disputes with Financial Providers (%) ......................................... 69 vii Abbreviations and Acronyms AFI Alliance for Financial Inclusion Annual Percentage Rate, being the annual rate for borrowing expressed as a single APR percentage number that represents the actual yearly cost of funds over the term of the loan, including any fees and additional costs associated with the transaction AML/CFT Anti-Money Laundering/Combating the Financing of Terrorism ANSD “Agence Nationale de la Statistique et de la Démographie” ATM Automated Teller Machine BCEAO Central Bank of West African States BNDE National Economic Development Bank CAPI Computer-assisted Personal Interview CCT Conditional Cash Transfers EA Enumeration Area ECOWAS Economic Community of West African States EEC Étude Économique Conseil FCPD Financial Consumer Protection Department GPFI Global Partnership for International Inclusion GSMA GSM Association IFAS Inclusive Finance Advocacy Staff KFS Key Fact Statements KYC Know Your Customer MCSCPPP Minister of Commerce, Informal Sector, Consumption, Promotion of Local Products and SMEs MEF Ministry of Finance, Economy and Plan MEN Ministry of National Education MFI Microfinance Institutions MFS Mobile Financial Services PAFI Payment Aspects for Financial Inclusion PCA Principal Component Analysis PPS Probability Proportional to Size PSU Probability Sampling Unit SME Small and medium enterprises WAEMU West African Economic and Monetary Union WBG The World Bank Group viii Preface Financial capability, as defined by the World Bank and in this report, is the capacity to act in one’s best financial interest, given socioeconomic and environmental conditions. It encompasses knowledge (literacy), attitudes, skills and behavior of consumers with respect to understanding, selecting, and using financial services, and the ability to access financial services that fit their needs (World Bank 2013d). Financial capability has become a policy priority for policy makers seeking to promote beneficial financial inclusion and to ensure financial stability and functioning financial markets. Today people are required to take increasing responsibility for managing a variety of risks over the life cycle. People who make sound financial decisions and who effectively interact with financial service providers are more likely to achieve their financial goals, hedge against financial and economic risks, improve their household’s welfare, and support economic growth. Boosting financial capability has therefore emerged as a policy objective that complements governments’ financial inclusion and consumer protection agendas. To this end, policy makers are increasingly using surveys as diagnostic tools to identify financial capability areas that need improvement and vulnerable segments of the population which could be targeted with specific interventions. In response to a request of the Ministry of Finance and Economy (MEF) of Senegal, the World Bank has implemented a financial capability survey. Senegalese authorities have embarked on several reform initiatives to adopt measures to improve the operational and legal environment of the financial sector. As part of this goal, financial inclusion, financial capability and consumer protection (FCCP) are important priorities for the Senegalese government. FCCP are critical elements in building an inclusive financial system and Senegal authorities seek to identify sustainable methods of delivering financial education through effective partnerships. As the Senegal government’s financial inclusion initiatives are expected to usher in more Senegalese, including small and medium size business (SME), to access a wide range of financial services from a variety of financial institutions, they need to acquire knowledge and develop skills to enable them to make better financial decisions. This survey constitutes a key diagnostic tool that aims to guide the authorities on the models for delivering financial education and to set quantifiable and concrete targets. Moreover, it serves as a baseline to assess a detailed national financial inclusion strategy (NFIS) and an action plan for implementing reforms to make the financial sector more inclusive and access to credit for SMEs easier. The key findings and recommendations presented in this report cover three main areas: 1. Financial Inclusion, 2. Financial Capability, and 3. Financial Consumer Protection. The remaining chapters are structured as follows. Chapter 1 explores the financial inclusion landscape in Senegal. Chapter 2 gives an overview of Senegalese levels of financial capability, in particular about their financial knowledge, attitudes, and behaviors. Chapter 3 explores the relationship between financial inclusion and financial capability. The last chapter investigates if the products which financially included individuals use are effectively meeting their needs. 1 Key Findings 2 Summary of Key Recommendations Recommendations Responsible Term2 Financial Continue to develop National Financial Inclusion Strategy MEF, BCEAO ST/MT Inclusion (NFIS) Allow and advocate for branchless banking MEF, BCEAO, Private Sector MT Consider policies that encourage uptake and usage of basic MEF, BCEAO, Private Sector MT transaction accounts at no or low costs Promote the development and provision of diversified MEF, BCEAO, Private Sector LT financial services for the poor geared towards their specific needs Financial Develop either a stand-alone National Financial Capability MEF, Ministry of Gender, Youth, ST Capability Strategy (NFCS) or a dedicated financial capability section and Microfinance, BCEAO, as part of a broader NFIS based on results of this survey industry associations, consumer associations, private sector and other relevant stakeholders Share this survey results with financial institutions to help MEF, Ministry of Gender, Youth, ST them develop tailored products that promote better habits and Microfinance and behaviors Use a wide range of programs, including mass media MEF, Ministry of Gender, Youth, MT channels, text messages, mobile phone applications, etc., to and Microfinance, BCEAO, enhance financial knowledge and change attitudes and industry associations, consumer financial behaviors associations, private sector and other relevant stakeholders Explore opportunities for school-based financial education MEF, Ministry of Gender, Youth, LT and Microfinance, Ministry of Education Consumer Introduce Key Facts Statements and develop related BCEAO ST Protection specialized disclosure requirements for different types of financial products (e.g. for credit products and test consumer understanding of the disclosure materials) Assess whether regulatory action is needed to improve BCEAO ST disclosure of consumer rights and recourse Review and assess if minimum standards for complaints BCEAO ST handling could be established or further enhanced by setting more specific rules Enforce full compliance of FIs with consumer protection BCEAO MT requirements including information disclosure, fair advertising, complaints handling and redress, and promote sound business practices by using adequate market conduct supervisory tools including mystery shopping Consider to give adequate powers to the OQSF to effectively BCEAO MT function as an independent external out of court dispute resolution (EDR) mechanism for all disputes between consumers and financial providers 2 ST, short term, indicates action can be undertaken in 0-6 months. MT, medium term, indicates 6 months-1 year. LT, long term, indicates 1+ years 3 Executive Summary Financial Inclusion Approximately 17 percent of surveyed adults in Senegal report owning an account at a formal financial institution (a bank, a microfinance institution (MFI), or an e-money agent), a commonly used metric for international comparison. As compared to other lower-middle income economies, Senegal is in the middle of the pack in terms of financial inclusion, although it does lag behind the average level among Sub-Saharan African economies. This pattern is generally in line with the other financial sector indicators for Senegal as compared to its country peers. Global Findex and the Financial Capability survey show that Senegal’s financial inclusion level has increased between 2011 and 2014 - 2015, from close to 6 percent in 2011 to reach 15.4 percent in 2014 and its current level in 2015. There are meaningful variations across socioeconomic and demographic categories, especially gender, urban/rural residence - in the commonly used measure of financial inclusion. Men are 9 percentage points more likely than women to be financially included, a difference that remains statistically significant. One of the main reasons of women’s lower financial inclusion, is the fact that they generally participate less in financial and budgetary decisions of the household. On the other hand, 13 percent of those living in a rural setting are financially included against 22 percent of the urban population. Significant differences can also be observed across income categories in the use of financial services, a potentially key obstacle to achieving inclusive growth. While 24 percent of those in the top quartile of the income distribution use a formal account, only 7 percent of those in the bottom quartile percent report the same. Without the necessary tools to manage their day-to-day finances and make important educational and entrepreneurial investments, the poor in Senegal are thus limited in their ability to improve their economic well-being. The strength of Senegal’s banking sector is not matched by high usage of banking institutions among Senegalese adults. The banking sector dominates Senegal’s financial system. Despite the improvement and diversification in the supply of financial products in Senegal during the last several years, banking sector penetration remains fairly low which explains in part the low level of utilization of bank products in Senegal. Though 69 percent of adults in Senegal are familiar with the products offered by commercial and postal banks, only 29 percent of respondents have reported to have ever used them. In particular, only 10 percent of Senegalese adults declared having a formal bank account or a bank product (the remaining 7 percent of those 17 percent financially included use either MFI or e- money agents). The urban/rural and low income/high income gaps are wide. Only 6 percent of the rural population have a bank account, compared to 13 percent of urban dwellers. While 14 percent of those in the top quartile of the income distribution use a bank account, only 2 percent of those in the bottom quartile report the same. Men are more likely to access financial bank services. Money transfers are the most used financial services, which is not surprising, as they are linked to the development of Senegalese remittances. Senegal is now among the top remittance receiving countries in the world. Within the African continent, Senegal is the third highest recipient in terms of amount among other African nations. Money transfer services dominate the formal Senegalese market of remittances recipient channels. As confirmation of this trend, 39 percent of the respondents said they currently used money transfer services, 14 percent have used them yet 18 percent said they didn’t know what money transfer services were. These services are mostly used by men, by urban dwellers and by those belonging to the richest revenue quartile. The socio demographic gaps between those that mostly use money transfer services and those that do not are significant. Mobile financial services haven’t attained their full potential. Aside from banks and money transfer services, the Senegalese also use e-money. Only 5 percent of the Senegalese population use mobile financial services such as e-money, although 75 percent of the population have said to be familiar with 4 these products. Senegal is far behind compared to other West African economies. Senegal also has a mobile money account penetration (measured as the number of mobile money accounts per 1,000 adults) between 17 and 27 times less than Uganda, Kenya and Tanzania who together lead mobile money usage in Sub-Saharan Africa. There is room for potential growth, considering that Senegal has a high percentage of households with at least one mobile phone. New partnerships and products are furthermore now available in the Senegalese market. Borrowing and saving patterns are similar: very few adults use formal providers. An astounding 66 percent of the Senegalese population does not borrow at all and 28 percent borrow only informally. Only 3 percent of the population borrow using formal credit. In rural areas, this is mostly credit extended by MFIs, while in urban areas, this mostly takes the form of the use of credit cards. Concerning savings, 71 percent of the population does not save. Among those that save, informal saving is more popular (19 percent) than formal saving in Senegal (6 percent). The approximately 6 million financially excluded adults – those who use no formal financial products or services – are disproportionately female, poor, and living in rural areas. Among these adults, the most commonly reported obstacle to formal account ownership is lack of enough money to use one (54 percent), followed by preference for cash (19 percent), lack of need for such products (14 percent), and finally by the expensive cost of such products (8 percent). While lack of trust is not a widely reported reason for not having an account among the general unbanked population, those who have used commercial and postal bank services in the past but do not currently have a formal account are more likely to cite this reason. Recommendations3 There is evidence that under the proper supervision, expansion of access to finance generates 4 opportunities for economic growth, greater welfare and growth of firm competitiveness . Different studies have shown that financial inclusion could meet macroeconomic and microeconomic goals. For example, on the macro side, Han and Melecky (2013) found that a broader access to and use of bank deposits could significantly mitigate bank deposit withdrawals or growth slowdowns in times of financial stress. Similarly, Sahay and al. (2015a) confirmed that the marginal returns to growth from further financial development diminish at high levels of financial development. This basically means that there is a significant “bell-shaped” relationship between financial development and growth. On the micro side, the impact evaluation of biometrically-authenticated payments infrastructure (through the use of smart cards), suggests that the supply of secure payments contributed to the development of welfare programs, to the benefit of employment and pension programs recipients in India (Muralidharan et al 2014). Also, Jack and Suri 2014 show that households in Kenya with access to mobile technology were more likely to receive a larger amount of remittances in the form of mobile money compared to non-technology users when they experienced financial shocks. Materializing the financial inclusion initiatives and recommendations presented in this study would contribute to the attainment of Senegal's inclusive goals of economic growth. To ensure that public and private stakeholder commitment to advance financial inclusion in Senegal is explicit, strong and sustained over time, the MEF in Senegal should continue its efforts to put in place a National Financial Inclusion Strategy (NFIS). Financial inclusion is probably only achievable with the deliberate and effective actions by a range of stakeholders from the public and the private sector. A NFIS helps stakeholders to strengthen and publicize their commitments, clarify complementary roles, coordinate 5 actions, and resolve overlaps over a defined period of time (typically 3-5 years). A NFIS could also usefully set forth ambitious but achievable quantitative targets for increasing financial inclusion in Senegal. Well- 3 It should be noted that the recommendations provided in this report mainly arise from this demand-side survey and can therefore not be seen as being exhaustive. 4 The World Bank Group, 2014- “Financial inclusion: a critical goal for the World Bank Group”. 5 A range of countries have now launched a NFIS, including Malaysia, Indonesia, Tanzania, and Nigeria. 5 defined, publicized, and monitored targets can be a powerful tool to translate the ambition of goals into practice outcomes. Tracking progress against targets can provide valuable insights into obstacles and/or opportunities for financial inclusion. Embedding financial inclusion modules into regular household surveys is a critical element of a robust monitoring and evaluation framework for financial inclusion. Thus, to maximize effectiveness of the NFIS the MEF is planning to develop, it needs be aligned with the regional financial inclusion strategy of the West African Economic and Monetary Union (WAEMU); result from and reflect broad consultations with the private and public sectors as well as further in-depth diagnostics if the need for such is identified; in addition to demand-side constraints revealed through this survey, it should also identify key supply constraints to inclusion; identify priority segments based on the results of this survey; set headline and specific targets for financial inclusion (realistic albeit ambitious targets); and list actionable steps to overcome the constraints and achieve the targets within a defined timeframe. The following recommendations highlight opportunities for relatively fast and far reaching financial inclusion which could be further explored and covered in the upcoming strategy. Allowing, and advocating for branchless banking offers the potential to further expand the coverage of financial services and to reach un- and underserved parts to the population, in particular the poor, rural dwellers, and women. Due to low population density and poor infrastructure, banking channels are poorly developed in Senegal (4.7 bank branches per 100,000 habitants), especially in rural areas. New business models such as mobile or agent banking can dramatically reduce the costs of delivering financial services, in particular in low-density and remote areas. Moreover, it can not only reduce explicit costs for those 8 percent of the financially excluded adults who reported not having an account because they are too expensive but also implicit costs such as the opportunity cost of time lost to traveling and waiting for those 54 percent of the adult population who indicated lack of sufficient income as a main barrier to use a formal account. The success of mobile financial services (MFS) rests on the vast pool of agents (often small retailers) who connect remote based clients to urban centers, allowing them to make transactions. Sub-Saharan Africa is now the region with the most elevated rate of use of MFS. Recent estimates show that 12 percent of adults in Sub-Saharan Africa use MFS compared to 1 percent for the rest of the world. This rate exceeds 10 percent 6 in thirteen countries in Sub-Saharan Africa . In Senegal, however, this rate is less significant (5 percent of the population). Despite various measures introduced by the UEMOA (such as regulations that allow non- 7 bank establishments to issue electronic money), several obstacles highlighted by the IMF remain: the limited interest by the private sector or MFIs; the high cost associated with small transactions; the current state of the regulatory framework (that imposes the intermediation of a banking institution); the low level of diversification of services (mainly money transfers and bill payments); and the problems related to interoperability and national accreditation that hamper domestic as well as cross-border money transfers. Policies addressing these obstacles and facilitating the spread of these low-cost technologies including the development of a proportionate legal and regulatory framework or increased interoperability can not only help rural populations and people living on low incomes, it can also help to close the identified gender gap since, as shown by international evidence, women tend to be more adoptive to technology than their male counterparts. Consideration should be given to polies that encourage uptake and usage of basic transaction accounts at little or no cost. In October 2014, the BCEAO has introduced a new regulation that gives any person a right to a basic bank account at no cost. Any person wishing to open an account to simply presents two photo identifications. Financial institutions are not supposed to impose any charges, nor are they authorized to require minimum balances, or minimum deposits to open the account. A number of other basic services including issuing debit cards, monthly statements, cash deposits or withdrawals at any branch or ATM belonging to the same provider, and closing of accounts, are also provided at no charge. Any provider 6 The Global Findex Database 2014 - Measuring Financial Inclusion around the World, Policy Research Working Paper, Asli Demirguc- Kunt et al.,The World Bank Group, 2014. 7 West African Economic and Monetary Union Financial Depth and Macrostability, African Department, IMF, 2013. 6 that does not comply with this regulation can incur fines from the BCEAO. A recent survey which has been 8 carried out by the Payment aspects of financial inclusion (PAFI) task force among its members on basic accounts indicated that there may be little economic incentive for private sector parties to voluntarily offer these accounts to their customers. Fifty-four percent of unbanked respondents report that not having enough money as main barrier to formal accounts while 33 percent give a clearer indication that they have a preference for cash or are not interested in owning accounts, suggesting that the availability of these basic no-frills accounts and their benefits are not widely known. International experience in countries such as India or the Philippines shows that the introduction of basic accounts needs to be complemented with public awareness campaigns to mitigate the risk that uptake and usage of basic accounts may be very low. These campaigns must be aimed at fostering the understanding and the demand for such fundamental products, in particular among the poorest segments of the population including women and rural dwellers. Experience from countries such Mexico shows that another policy to be considered to increase uptake and usage of basic accounts is to channel government to person payments, including social cash transfers, government employee salaries, and pensions through this accounts. In addition to basic accounts, the development and provision of diversified financial services for the poor geared towards their specific needs should be promoted. Despite banks’ efforts to improve and diversify the supply of financial products and services to low income customers, the survey data indicates a lack of suitable products addressing the needs of this segment. Even though many Senegalese have little money, this survey revealed that they still save, although mainly relying on informal channels. Formal savings products thus have potential and their promotion could contribute to safeguard savings, which can help households manage cash-flow spikes, smooth consumption and build lump sums. Developing insurance products could be another approach given that insurance is a useful instrument mitigate shocks and manage expenses related to unexpected events such as medical emergencies, a death in the family, theft, or natural disasters. With two percent of the adult population using insurance products, there is a business potential to be targeted by insurers and other providers. In recognition of the importance of this market, Senegal is part of the Inter-African Conference on Insurance Markets (CIMA), which encourages the development of insurance products and harmonizes regulations in the sector. CIMA groups countries in the Franc Zone (excluding the Comoros Islands that signed the treaty of CIMA but has not ratified it) and encourages micro- insurance activities that could significantly raise the penetration rate in the region by adopting a regulatory framework for promoting innovation in the development of micro-insurance products. 8 Bank for International Settlements and World Bank Group. 2015. Consultative report. “Payment aspects of financial inclusion.” 7 Financial Capability Knowledge of basic financial concepts is a significant challenge in Senegal which is mirrored by the fact that on average, Senegalese adults were able to answer 3.5 out of 7 financial capability-related questions correctly. Senegalese adults are most comfortable with performing simple financial calculations (92 percent), whereas they may lack the numeracy skills needed to identify better bargains (31 percent) as well as the specific knowledge required to calculate compound interest (28 percent). Senegal performs well in terms of their understanding of simple division. Compared to respondents from 21 countries, respondents in Senegal perform well in terms of their understanding of this last concept. Senegalese adults are in the middle of the pack in terms of their understanding of compound interest, while their understanding of the effect inflation has on their savings is lower than in most other countries. Location matters in the sense that those who live in inner city areas achieve significantly higher financial literacy quiz scores as compared to those who live in urban, peri-urban, or rural areas. Similarly, those belonging to the highest revenue quartile and residents who live in wealthy areas respond better to financial knowledge questions than those who live in areas with lower standards of living. The challenge in Senegal persists concerning the awareness of financial products; respondents were familiar on average with products provided by 3.6 out of 9 different types of providers. Survey participants are mainly familiar with money transfer services (82 percent), followed by products offered by e-money agents (72 percent), commercial and postal banks (69 percent), and money changers (60 percent). MFIs and their products are known by slightly less than a fourth of the sample (24 percent), whereas insurance products are known by less than a sixth of the sample (12 percent). Much less, only 9 percent indicate to be familiar with the products offered by brokerage houses. Respondents who are the least familiar with financial products offered by financial providers tend to live in rural neighborhoods and to earn a low income. An international comparison of survey participants in twelve countries confirms that Senegalese adults tend to monitor expenses and plan for old age, but they are among the most challenged with respect to choosing financial products. Survey participants in Senegal outperform respondents from ten other countries in terms of monitoring their expenses and outperform six other nations when making provisions for their old age expenses. However, the cross-country comparison confirms that Senegalese respondents display weakest performance with respect to their ability to shop around, read terms and conditions and choose financial products that fit their needs. An important personal characteristic, which is found to be strongly associated with higher scores in different financial capability areas, is higher income. High income earners are more inclined to shop around and choose products that fit their needs. They also tend to save, plan for old age expenses, live within their means, and tend to be more farsighted and less impulsive as compared to those who live on low incomes. In particular, faced with low and irregular income streams, the poorest segments have a lower ability to save (a notable difference of 25 points) and struggle to think about the future (a difference of 11 points). Consequently, daily hardship can draw the attention of low income groups away from their long-term considerations and needs. Other patterns which emerge show that living in a rural environment as well as not having learned sound financial habits from a young age are related with lower financial capability scores. There is a gap between rural and urban populations in their propensity to live within their means, save, and think about the future (9 and 8 points respectively). Another significant social characteristic associated to financial capabilities is age. The capacity to accurately budget is much lower for respondents younger than 35. Those that mostly monitor their expenses are in fact between 35 and 54 years old and, not surprisingly, the tendency to plan for old age increases with age. Starting to save at an early age also has important value. Respondents who saved as a child scored, on average, higher than their counterparts who did not save during their childhood, with respect to saving dimensions in financial behaviors. 8 Recommendations Either a stand-alone National Financial Capability Strategy (NFCS) or a dedicated financial capability section in a broader NFIS can be an important organizing framework to scale up and maximize effectiveness of financial capability interventions in Senegal. In 2015, according to the OECD, 59 countries reported to be developing a NFCS, implementing one or revising it and developing a new one, with 9 an additional five planning one. Financial capability programs and policies can also be part of a broader 10 NFIS. Based on the analysis of 17 publicly available NFIS a recent WBG publication concluded that 15 countries included a dedicated financial capability section in their broader NFIS. Experience in countries which have been engaging in such an effort at the national level shows that it can promote co-operation between relevant stakeholders, avoid duplication of resources, and minimize gaps and overlaps in addressing the challenges identified through this survey. Regardless if it is a stand-alone strategy or a dedicated financial capability section as part of an overarching NFIS, this document should outline a set of priority programs to enhance financial capability levels of the overall population and specific subgroups. Priorities could be set based on a number of criteria, including the need, goals, costs and availability of resources. Other lessons learned from countries which have developed and implemented such strategies are that essential elements of such a document include the roles and responsibilities of all involved stakeholders, the main groups which shall be targeted, the timeframe of implementation, and most importantly the resources for the implementation of the strategy. An essential step to initiate the preparation of the NFCS is the mapping and review of existing financial capability initiatives in Senegal. This work helps to ensure that the strategy and future programs are informed by existing experiences, benefit from lessons learned, avoid duplication and potentially leverage successful programs. For more information about the process of developing a NFCS see OECD/INFE High 11 Level Principles on NFCS. A clear mechanism for results monitoring and impact assessment needs to be developed, along with the development of the NFCS. The goal of the M&E framework is to outline a robust M&E system for the NFCS that extends beyond a simple list of national-level impact indicators to include program-level intermediate indicators, a theory of change, coordination details, as well as an emphasis on evaluation and 12 improvements in data collection. This framework may also build on international best practices as well as 13 analytical work to determine a range of ambitious yet achievable targets for each impact indicator. The results of this survey should also be used to track progress against outcome indicators. To scale up financial capability efforts in Senegal and address areas for improvement identified through this survey, it will be necessary to harness the potential of mass media and edutainment programs in particular which are likely to be effective and help reach a large number of adults. Recent research has shown that innovation on delivery matters for inducing and sustaining behavioral change. Conveying financial messages through innovative ways such as using popular TV soap operas, films, videos or radio programs can be quite effective, not only in improving knowledge but also in altering behavior (Berg and Zia 2013, Di Maro et al 2014). So called edutainment programs are also presumed to be much more effective if messages are delivered in an engaging an entertaining manner through appealing stories that stick to memories, and if they are repeated and reinforced over time. An example how low product awareness 9 This represents a steady increase when compared with the situation in 2011, when only 26 reported having developed or implemented a NFCS. For more information, see: National Strategies for Financial Education, OECD/INFE Policy Handbook, OECD/INFE, 2015. 10 Template for the Design of a National Financial Inclusion Strategy, The WBG, 2016. Online available at: http://pubdocs.worldbank.org/pubdocs/publicdoc/2016/1/379031452203008464/WBG-FMGP-Template-for-Designing-a-NFIS-Jan- 2016-FINAL.pdf 11 Online available at: http://www.oecd.org/finance/financial-education/ OECD_INFE_High_Level_Principles_National_Strategies_Financial_Education_APEC.pdf 12 Including consideration of the AFI Core Set of Financial Capability Indicators, the G20’s GPFI Set of Financial Capability Indicators, or Financial Capability Indicators suggested by the WB. http://responsiblefinance.worldbank.org/~/media/GIAWB/FL/Documents/Publications/Why-financial-capability-is-important.pdf 13 This process may include projections for increases in levels of financial capability over the time span of the NFCS based on “best performer” countries in the region and among high-income economies (providing an upper-bound target value). 9 levels and low levels of financial capability could be addressed is a popular television soap opera in Kenya, Makutano Junction, which includes financial education messages in some of its stories. These messages have included encouraging people to open a bank account, rather than to keep money under a mattress; saving money; how to apply for a loans; drawing up and tracking a budget; and avoiding pyramid schemes. Viewers are able to send text messages to obtain a leaflet related to these topics. As with other soap operas, people watch Makutano Junction because they identify with the characters and enjoy the stories; but in the course of watching the programs, they benefit from the financial education messages. In addition to TV and radio programs, periodic text messages and mobile applications could be another promising and cost-effective outreach channel. The survey results indicate that in Senegal mobile phones are the most used type of media suggesting opportunities to use this channel to reach out to a large number of individuals and households. Studies in Bolivia, Peru, and the Philippines show that simple, timely text messages reminding people to save can boost savings rates in line with earlier established goals 14 (Karlan et al. 2010). More recently, Rodriguez and Saavedra found that financial education messages via SMS are not effective at increasing savings, while reminders are effective at doing so. In fact, account balances of youth who received monthly and semimonthly reminders during one year increased by 28 and 43 percent compared to those who didn’t receive any reminder. Given the high degree of mobile phone usage in Senegal, this reminder approach could induce the population to pay attention to the benefits and task of saving as well as making provisions for old age (lowest financial capabilities according to the survey). Mobile applications could be another promising outreach channel, especially to facilitate budget planning among young adults. A good example of a mobile app is the mobile budget app (Mobile Financial Assistant – maFin) which has been developed for young adults by the polish Financial Supervision Authority. This mobile app is designed to address another area of improvement identified through this survey. Specifically, it helps monitor and analyze personal spending and to facilitate budget planning and is available free of charge to users of mobile phones and other mobile devices. Over the long-term provision of financial education from an early age should be encouraged as the survey results suggest that starting early can have value. Respondents who already saved as a child scored on average higher than their counterparts who did not save during their childhood. If people form sound habits on how to manage their money from a young age, they are more likely to adhere to them throughout their lives. International evidence on the effectiveness of school-based financial education programs in changing student behavior is mixed. Nevertheless, there are lessons learned from other countries which have implemented such programs. For example, the rigorous evaluation of a large scale school-based financial education program in Brazil showed that such programs are particularly effective when financial education is provided in ways that students find relevant to their lives either currently or in the near future, and if it is interactive (Bruhn et al. 2014). High-quality material or textbooks are therefore required, and teachers need to be well-trained on the content and techniques. There are a number of websites containing 15 links to teaching resources . The MEF in partnership with The Ministry of Education could evaluate possibilities to leverage any curriculum reform efforts in the future to develop a curriculum that integrates lessons on financial education for young people. As existing curricula may already be saturated, it is advisable to integrate financial education into a variety of existing subjects including math, economics, or social studies rather than adding a new subject into the curriculum. In case resources to train teachers and to develop and provide teaching materials are limited, it may be best to focus, at least at the onset, on incorporating financial education into one or two subjects over three or four consecutive academic semesters. 14 Rodríguez, Catherine, and Juan E. Saavedra. 2015. “Nudging Youth to Develop Savings Habits: Experimental Evidence Using SMS Messages.” CESR-SCHAEFFER Working Paper Series Paper No: 2015-018. 15 These include the Australian Securities and Investments Commission (ASIC) MoneySmart Teaching website (which lists a range of educational materials, each of which has been vetted by a quality assurance process); the US Jump$tart Coalition Clearinghouse and the UK Personal Finance Education Group (PFEG) website. Some resources are available free of charge and others are available for purchase. The Citigroup Financial Education Curriculum contains interactive lessons, facilitator tips and printable lesson plans (which are available in several languages) for use from kindergarten level upwards. 10 Relationship between Financial Inclusion and Capability Senegalese who use formal savings or borrowing instruments appear to have high awareness of financial products. Senegalese who save and borrow from formal sources are more aware of various financial institutions and their products than those who tap into only informal sources, or those who do not save or borrow at all. If formal financial providers offer services of higher quality, this pattern may suggest that Senegalese with more information of the financial sector select better products and institutions than those with less information. In Senegal, differences in levels of understanding of financial concepts among users and non- users of formal financial products and services are not substantial. However, Senegalese without formal financial products are less likely to know about services offered by formal financial institutions. Those who currently use formal financial products perform slightly better in the financial literacy quiz than those who have no financial products at all. These results indicate that a substantial proportion of excluded Senegalese have a similar understanding of financial concepts as do Senegalese with established relationships with financial institutions. There is room for policies aimed at enhancing financial literacy levels and numeracy skills among Senegalese users and non-users of formal financial products. In contrast to the patterns observed for financial awareness, there are no substantial differences in the financial behaviors and attitudes of financially included and excluded respondents, as well as Senegalese who use formal savings or borrowing instruments. Slight differences arise between Senegalese with a formal account and those without in terms of their financial attitudes and behaviors. The most evident differences are in terms of saving for the unexpected and choosing products (6 points behind financially included adults in each case). A similar pattern is found among borrowers or respondents who declare saving. Recommendations In order to enable financially included Senegalese to benefit from the products they use, financial knowledge and capability-enhancing programs could be combined with available financial products that most people can access. Financial education programs could be tied to existing formal financial products most people can access and use, for example, when opening a bank account, taking out a loan, or taking an insurance policy. Research shows that financial education works best when delivered to adults during teachable moments (Yoko et al 2012) when they are more likely to be receptive to new information. These education programs should not only help to close existing gaps in their customers’ understanding of financial concepts but also inform about the need to build up savings cushions for unexpected financial shocks and old age expenses. However, educational materials must be truly informative, clear, impartial, and free from marketing, and this should be monitored. Share results from this survey with financial institutions to help them develop tailored products that promote better habits and behaviors. Since the large majority of the population seems to struggle with saving and being achievement oriented, it could make good business sense for financial service providers to develop products which meet the needs of their clients and underserved populations. For example, they could develop savings products with design features that help people to reach personal savings goals, such as commitment savings account or labeled accounts. The former consists of accounts where a certain amount of funds is deposited and access to cash is relinquished for a period of time or until a goal has been achieved. The latter describes accounts created with explicit savings goals, such as the establishment or expansion of a business, a car purchase, housing, or education (World Bank 2013a). 11 Financial Consumer Protection Although users of financial services have expressed in general satisfaction with the services offered by a range of providers, survey results suggest that banks fare less favorably than most other types of financial institutions. Banks seem to effectively meet the needs of 78 percent of their consumers. Although this satisfaction rate appears high in isolation, it is relatively low considering the overall high satisfaction rate of financial service products in Senegal. Most notably, the highest satisfaction rate is achieved by Money Transfer Operators (MTOs) with 93 percent, followed closely by MFIs appear to be earning the praise from around 90 percent of their consumers. Another important finding is that 11 percent of the surveyed respondents experienced financial service provider conflicts, the majority of whom did not try to solve the conflicts they encountered. Slightly more than twenty percent of those Senegalese adults who encountered a dispute took actions to try to solve it. Interestingly, 38 percent of those who did not experience a conflict stated that if they faced a conflict they would try to solve it. In terms of actions taken in the event of a dispute, legal courts were barely sought by those who experienced a conflict with their financial service provider. The most common actions taken to try to resolve disputes were to stop using the services before the contract expired (93 percent), to submit a grievance to company which sold the product (50 percent) and to submit a claim to the appropriate government authority (28 percent). While 12 percent approached legal courts to redress conflicts, only one out of ten reportedly approached the service provider through friends, family or community elders. The former can most likely be explained by perceived high costs and lengthy time of proceedings. The main causes for inertia are either related to perceived power imbalances between financial providers and their clients or they relate to lack of trust in or lack of awareness of respective government authorities which can be approached in the event of a dispute. Less than three- quarters of those who did not take any actions to solve a dispute reported as main reason for their inertia that they perceived financial institutions as being too powerful. Two thirds indicated that they think the government authorities do not work properly, followed by 52 percent who were not aware of any government agencies they can approach for help. Almost one quarter of those who did not try to solve a conflict mentioned that they did not take any actions because they think the law does not adequately protect consumers. Between five and six percent of those who did not take any actions to solve a dispute declared that they are too shy to redress the dispute or they don’t have time to go through the process. Recommendations These findings highlight that financial capability efforts need to be complemented by measures to strengthen the financial consumer protection framework, including regulations in the area of disclosure. As previously highlighted, it is important that customers have sufficient information to allow themselves to select financial products that are most affordable and suitable. In line with international best 16 practices, such as the WBG’s Good Practices for Financial Consumer Protection , financial institutions should thus be required to provide a standardized KFS that explains the key terms and conditions for each 16 The World Bank has developed the Good Practices for Financial Consumer Protection as an assessment tool for diagnostic reviews of a country’s consumer protection and financial literacy framework for the financial sector (Good Practices). The Good Practices were developed using international benchmarks, such as the principles released by the Basel Committee, the International Organization of Securities Commissions (IOSCO), the International Association of Insurance Supervisors (IAIS) and the Organization for Economic Co- operation and Development (OECD) recommendations for financial literacy and awareness on pensions, insurance and credit products. For more information see: http://responsiblefinance.worldbank.org/~/media/GIAWB/FL/Documents/Misc/Good-practices-for-financial- consumer-protection.pdf 12 product. Qualitative testing of KFS is critical to ensure that the KFS are properly understood by consumers and that they are used to shop around to identify products which fit their needs best. Specifically, focus group discussions with consumers help to identify the key information that consumers preferred to have disclosed, the information on which they typically focus, the amount of information they can comprehend, the most coherent design, and ultimately, how consumers’ decision-making is affected by the different presentations of loan information. BCEAO should also give consideration to assess whether regulatory action is needed to improve disclosure of consumer rights and recourse which may help to deal with the identified issue of perceived power imbalances which discourage clients to take actions in the event of a dispute. Specifically, it is recommended to assess whether legal and regulatory provisions follow international best practices and require bank and other financial institutions to disclose in all pre-contractual and
contractual disclosure documents detailed information on the right to lodge complaints, the manner in which complaints may be filed, and the mechanisms for how complaints are handled (including contact information and time limits). At the minimum, contact information and a reference where more information can be found should be disclosed. The disclosure documents could also include a summary of next steps the consumer may take if not satisfied with the resolution, including the option to contact the Observatoire de la Qualité des Services Financiers (OQSF), which has allowed out-of-court conflict resolution on financial matters between any individual customer and firm, since 2010. To ensure that adequate mechanisms are in place to handle complaints fairly in-house, BCEAO should give consideration to review and assess if minimum standards for complaints handling within financial institutions could be established or further enhanced by setting more specific rules For instance, minimum standards rules could require banks and other financial service providers to: (i) provide the complainant with regular written update on progress of the investigation of customers/complainants’ complaints; (ii) inform the customer in writing of the outcome of the investigation within a maximum number of days; (iii) explain in simple terms the nature of any offer of settlement made to the customers; (iv) maintain up-to-date records of all complaints received, including information of the nature of the complaint, copies of the financial institutions’ response and other relevant documents; (v) make these complaints records available for review by BCEAO or competent authorities. Consideration should also be given to enforce full compliance of financial institutions with consumer protection requirements including information disclosure, fair advertising, complaints handling and redress, and promote sound business practices by using adequate market conduct supervisory tools including mystery shopping. Mystery shopping can be a useful tool to inform consumer protection policy and measure market conduct issues such as how well sales staff comply with disclosure regulations, quality of customer attention and suitability of financial advice, access to and use of recourse systems when things go wrong, and disparate treatment of vulnerable consumers. However, to realize the benefits of this supervisory tool, mystery shopping needs to be well structured, the shoppers need to ask the same questions at each provider based on a simple and plausible scenario, and it needs to cover a reasonable sample of providers and products. It is further recommended that BCEAO, MEF, and the OQSF consider jointly re-visiting the existing mediation mechanisms in order to quickly and effectively resolve disputes that are not resolved by financial providers' internal complaints procedures. Given the fact that more than 60 percent of those who reportedly encountered a conflict did not try to solve it because they think the government agencies do not function properly, it appears to be critical to make the existing mediation mechanisms more user-friendly and relevant for those clients who experienced a conflict with a financial service provider. In view of 52 percent not taking any actions in the event of a dispute because they were not aware of any government agencies they can approach for help is also crucial to conduct public awareness campaigns to explain the role of the OQSF. 13 Over the medium-term, consideration should be given to give adequate powers to the OQSF to effectively function as an independent external out of court dispute resolution (EDR) mechanism for all disputes between consumers and financial providers. An EDR is a third party who deals independently with complaints from consumers about their individual dealings with financial services providers that have not been resolved by the providers, which has been implemented in many countries including Australia, UK, and Germany. It is usually favored for its accessibility, transparency, and low cost as compared to courts. It also reduces the burden on courts. In addition, a financial ombudsman is well-positioned in analyzing trends in financial consumer complaints and proposing ways of encouraging improved business practice by financial institutions. While the OQSF partially plays this role, given its current legal mandate and structure it lacks adequate powers and resources to effectively conduct its mission and oblige financial institutions to inform consumers of the possibility of addressing the OQSF and provide them with its contact details. In fact, it should be taken into consideration, to align this with international principles which have been summarized by 17 18 the WBG and developed by the international network of the financial ombudsman and include: independence; fairness; clarity of scope and powers; effectiveness and efficiency; accessibility; transparency; and accountability. To identify the most effective institutional setup-up further analysis may be needed, in particular given the dichotomy between a national OQSF and a regional regulator. Such an analysis should explore how adequate powers and funding should be given to make the OQSF jurisdiction mandatory for all regulated financial institutions and to oblige those institutions to contribute to its budget, in accordance with 19 international best practice. 17 For more information and guidance see WBG, 2012: Resolving Disputes between Consumers and Financial Business: Fundamentals for a Financial Ombudsman - A Practical Guide Based on Experience in Western Europe. Online available at: http://siteresources.worldbank.org/EXTFINANCIALSECTOR/Resources/ Financial_Ombudsmen_Vol1_Fundamentals.pdf 18 For more information see: http://www.networkfso.org/principles.html 19 Because of the many other pressures on public finances, it is more common for the cost of such a scheme to be borne by the industry from which the ombudsman work arises – though perhaps with some upfront contribution from public funds to help initially establish the ombudsman scheme. 14 Background on Senegal Survey The financial capability questionnaire used for this survey has been extensively tested in the context of middle- and low- income countries. The survey instrument used is based on a questionnaire developed with support by the Russia Financial Literacy and Education Trust Fund and is tailored to measure financial capability in low- and middle-income countries, although it can also be used in high-income countries. Extensive qualitative research techniques were used to develop this survey instrument, including about 70 focus groups and more than 200 cognitive interviews in eight countries to identify the concepts that are relevant in middle- and low- income settings, and to test and adapt the questions to ensure that they are well understood and meaningful across income and education levels. The instrument is currently used or planned to be used in 14 countries in Latin America, Africa, Middle East and East Asia and the Pacific. The survey instrument used allows financial capability, financial inclusion, and consumer protection issues to be assessed and measured. Financial capability is measured by knowledge of financial concepts and products, and by attitudes, skills and behavior related to day-to-day money management, planning for the future, choosing financial products and staying informed. In order to jointly analyze financial capability and inclusion, the survey instrument captures information on usage of different kinds of financial products and providers. The financial consumer protection section gathers information on incidence of conflicts with financial service providers and levels of satisfaction with financial products offered by different financial institutions. The survey instrument has been further customized to Senegalese context, through adding specific questions, for example relating to usage of Islamic products and services and to measure the elasticity of these products. The Senegal survey is representative of the financially active population and comprises a total sample 20 of 3,210 adults . To fulfill the requirement of a scientifically sound survey which allows inferences to the whole universe of financially active adults in Senegal, probability sampling techniques were used to select a sample of 3,210 adults. Thereby, the most recent 2013 General Census of the Population, Housing, Agriculture and Livestock of Senegal, kindly provided by the Agence Nationale de la Statistique et de la Démographie (ANSD), was used as a sampling frame. The population was divided into 9 strata based on area (urban Dakar, rest of urban and rural) and levels of quality of living (low, medium and high). The quality of living score, for the rest of urban and rural areas, was estimated using five variables extracted from the census dictionary of variables associated to the dwelling characteristics, type of material of the ceiling, type of material used for the roof, type of material of the floor, main type of waste management system and main source of energy. “Missing a meal in the past seven days because of lack of resources,” “missing a meal because of lack of resources during the past 12 months, excluding the last seven days,” “possession of an Internet connection at home,” and “ownership of a car” offered much better insight into the levels of quality of living of households in urban Dakar. The sample of individual respondents within households was selected through a three stage cluster sampling. Enumeration areas were randomly selected as primary sampling units (PSUs) with probability proportional to size (PPS) (number of households) at the first stage, and consisted in selecting 250 primary sampling units – the smallest Enumeration Areas (EAs), or as they are known in Senegal, DR (District de Recensement) – of which 36 were for eventual replacement purposes. In each selected PSU, after a complete and effective listing of all households, 20 households (out of which five were reserve households for replacement purposes only) were randomly drawn, of which 15 households were targeted for surveying at the second stage. Finally, within each selected household, eligible adults either responsible for personal or household finances were randomly drawn by means of the Kish grid. Individual weights were calculated and used in the ensuing analysis to adjust for varying probabilities of selection (design weights). 20 Population aged 18 and older 15 Between February and September 2015, a Canadian survey firm implemented the survey using computer-assisted personal interview methods (CAPI). Étude Économique Conseil (EEC Canada), a Montreal based consulting firm, was hired to conduct the Financial Capability Survey in Senegal. To ensure highest data quality and avoid common errors associated with paper-and-pencil surveys, an electronic version of the questionnaire including internal consistency tests were programmed and the survey was administered using power PCs. Due to extensive efforts and different strategies used (e.g. training of enumerators on refusal conversion strategies, communication with respondents to inform them of the coming survey as well as explaining the surveys’ objectives, up to five contact attempts at different moments during the period of the survey, etc.) the total non-response rate was around 8 percent of the total sampled households. The adult population for which the results of this survey are meant to be extrapolated has the following key characteristics: 47 percent of the population lives in urban areas, while the remaining 53 percent live in rural environments (see Figure 50). Slightly less than half of the population is female (49 percent, see Figure 52). Ranking all individuals by their reported household income and dividing them into four groups, 25 percent of the population fall in the lowest income segment (up to 41300 XOF per month), 25 percent in the second lowest quartile (between 41301 XOF and 71350 XOF), 25 percent in the second highest (between 71351 XOF and 140600 XOF), and 25 percent in the highest income quartile (more than 140600 XOF, see Figure 57). Thirty-four percent of the population is younger than 35, 40 percent is between 35 and 55, and 26 percent of the population is older than 55 (see Figure 57). In terms of the education attained, 2 percent of the population has some or completed tertiary education including university or other higher education, 13 percent has some or completed secondary schooling or technical and vocational school education, 75 percent has some or completed intermediate schooling, primary schooling, or special education, while around 10 percent of the population has no schooling at all (see Figure 55). Irregular and uncertain income flows characterize 68 percent of the population, while the remaining 32 percent is characterized as earning stable income, (see Figure 56). The average number of adults per household is four, whereas an average sized household comprises nine people. As shown see Figure 54 in Appendix, 13 percent of the respondents live in households with one to three members, 26 percent in households comprising four to six members, 24 percent in households comprising seven to nine members, 15 percent in households comprising 10 to 12, and 22 percent live in households with 13 or more members. The profile of Financial Capability Survey matches with key characteristics of Senegal’s general census. As Table 1 presents, there are minor differences between Senegalese population distribution and the surveyed population. 16 Table 1. Comparison between Census Key Characteristics and Financial Capability Survey Profile Financial Capability Country Census Survey Population distribution Less than 15 years old 42.1% 43.1% Between 15 and 64 years old 54.4% 50.4% More than 64 years old 3.5% 6.5% Gender distribution Male 49.9% 48.6% Female 50.1% 51.4% Area distribution Rural 54.8% 52.8% Urban 45.2% 47.2% Area – gender distribution Rural – female 49.7% 51.3% Urban – female 50.1% 51.6% Source: ANSD, Final report 2013 General Census of the Population, Housing, Agriculture and Livestock of Senegal. WBG Financial Capability Survey, Senegal 2015. 17 1 Financial Inclusion 1.1 Introduction Increasing the access to and the quality of financial products and services has become a policy priority in Senegal. Over the past years, Senegalese authorities have embarked on several reform initiatives to adopt measures to improve the operational and legal environment of the financial sector. A particular focus has been given to increase bank penetration rates, develop safeguards against vulnerabilities in the sector and enhance access to finance for SMEs, through the creation of a bank dedicated to the SME segment - the National Economic Development Bank (BNDE) - that has become fully operational at the beginning of 2014. The government has also put in place a guarantee fund for priority sector lending (FONGIP) and a sovereign fund for strategic investments (FONSIS); nevertheless, there is still a lot of room for improvement. There is a need for coordination of these various activities, and a need for a balance between direct investment and long-term viability of these investments, not to mention that the cost of credit still remains high. Senegal has made positive progress towards achieving its financial inclusion priorities. The Ministry of Economy and Finance (MEF) has demonstrated its strong commitment to financial inclusion by signing the Maya Declaration and implementing several initiatives to enhance financial inclusion and access to finance for SMEs. They include: (i) several awareness campaigns and a general survey on financial inclusion which have been conducted by the Ministry of Gender, Youth, and Microfinance; (ii) several mechanisms have also been established to increase access to credit for SMEs; (iii) in 2011 the MEF in collaboration with CGAP has conducted a consumer protection diagnostic; (iv) the Observatoire de la Qualité des Services Financiers has allowed out-of-court conflict resolution on financial matters between any individual customer and firm since 2010. Senegalese authorities are also members of global and regional networks and strategic partnerships with the aim of making financial services more accessible to the world’s two billion unbanked people. In particular, Senegal is among the 60 developing countries that are members of the Alliance for Financial Inclusion. Members of the AFI consist of central banks and other financial regulatory authorities in developing 21 countries . Together, they represent nearly 90 percent of the non-financially included. Senegal is also a member of the West African Economic and Monetary Union (UEMOA). Together with the other member 22 countries , Senegal builds the foundations for a common and coherent economic and monetary policy 23 seeking to fight poverty and for financial inclusion. Finally, Senegal is part of the Franc Zone . The BCEAO (the Central Bank of West African States) is part of the Global Partnership for International Inclusion (GPFI), launched in 2010 by the G20, connecting governments, central banks, public and private institutions in the financial sector of member and non-member counties of the G20. Moreover, Senegal is part of a financial inclusion working group of central banks of francophone nations with the following 3 main objectives: (1) to share the experience of member States in terms of strengthening capacities for financial inclusion; (2) to identify common issues; and (3) to make general recommendations on how to improve financial inclusion. The first meeting was held in Dakar in February 2015, which led to the publication of a report in early 2016. This initiative aimed at improving financial inclusion in the Franc Zone by promoting both demand (decrease cost of opening an account and account maintenance costs, improve consumer protection) and supply (support the development of mobile financial services). 21 African member states of the AFI include: Burkina Faso, Burundi, Cameroon, Central Africa Republic, Chad, Congo (Republic), Côte d'Ivoire, Equatorial Guinea, Gabon, Ghana, Guinea, Kenya, Liberia, Madagascar, Malawi, Namibia, Niger, Nigeria, Rwanda, Senegal, Sierra Leone, South Africa, Tanzania, Togo, Uganda, Zambia. 22 Benin, Burkina Faso, Côte d’Ivoire, Guinea Bissau, Togo, Mali, Niger. 23 The Franc Zone regroups 14 Sub-Saharan African countries (from Western Africa: Benin, Burkina Faso, Côte D’Ivoire, Guinea Bissau, Mali, Niger, Senegal and Togo; and from Central Africa: Cameroon, Central African Republic, Congo, Gabon, Equatorial Guinea and Chad), Comoros and France. 18 At the regional level, a regional financial inclusion strategy is almost final and has been presented to the various donors and development partners. The strategy strongly emphasizes the need for national strategies strictly in synergy with the regional one. Additionally, several tools to promote financial inclusion and stability have already been implemented: (i) a credit bureau is being set up with the assistance of the WBG under the aegis of the regional central bank (BCEAO); (ii) the microfinance regulatory and supervisory framework has been strengthened; (iii) a new framework for mobile money operators was established; (iv) a regional deposit guarantee fund is being set up; (v) several fees and charges for banking services have been forbidden in order to increase access; (vi) and there is a project currently underway designed to promote increased standardization of fees and charges to encourage competition. The following analysis of the financial inclusion module serves to strengthen the understanding of the state of financial inclusion in the Senegal and provide valuable context for interpreting the results on financial capabilities. Collecting survey data from individuals – that is, from the demand side - can provide valuable insight into the usage, value and limitations of existing financial services. Demand-side survey data also facilitates analysis of how patterns of financial inclusion vary across different population segments, and the degree to which different financial behaviors – such as saving, borrowing, and making payments – overlap. The data and analysis presented below can be used to identify priority populations, set national financial inclusion targets, and design reforms and interventions to advance financial inclusion in Senegal. Finally, the data can provide a baseline survey against which to measure progress of reforms and initiatives. Future rounds of surveys will shed light on the degree to which the financial inclusion landscape is shifting in Senegal, and to what extent progress is evenly distributed across different population segments and regions. 1.2 Headline Measures of Financial Inclusion According to this 2015 Financial Capability Survey, 17.4 percent of the surveyed adults in Senegal report owning an account at a formal financial institution, a commonly used metric for international comparison. As compared to other lower-middle income economies from Western Africa, Senegal is in the 24 middle of the pack in terms of financial inclusion , although it does lag behind the average level among Sub- Saharan African economies. This pattern is generally in line with the other financial sector indicators for Senegal as compared to its country peers (see Table 2). Global Findex and WBG Financial Capability surveys show that Senegal financial inclusion level has grown between 2011 and 2014 - 2015, from close to 6 percent in 2011 to reach 15.4 percent in 2014 and its current level in 2015. When investments, private pensions, and insurance products are included as formal financial products, the survey finds that 19.9 percent of Senegalese adults use some formal financial product. In addition, Table 3 synthesizes the progress achieved in terms of financial inclusion between 2011 and 2015. 2015 results will be analyzed in detail the following sections. 24 Formal account ownership (“financially included”) is defined in this Senegal financial capability study as the percentage of respondents who report having an account (by themselves or together with someone else) at a bank or another type of financial institution (formal credit, mortgage, credit from microfinance organizations or from the decentralized financial system, debit or credit card, formal savings, current or savings accounts), or personally using a mobile money service in the past 12 months. 19 Table 2. Measures of Financial Inclusion and Development across Economies Financial account Commercial Firms using Domestic GDP per capita ownership bank branches banks to credit provided (constant 2005 (% of adults) (per 100,000 finance by financial US$) adults) investment sector (% of (% of firms) GDP) Senegal 17.4 (FinCap 2015) 4.6 (2013) 19.2 (2014) 814 (2014) 15.4 (Findex 2014) Benin 16.6 (2014) 3.5 (2014) 3.8 (2009) 24.9 (2014) 671 (2014) Burkina Faso 14.3 (2014) 3.4 (2013) 25.6 (2009) 23.4 (2014) 511 (2014) Cote d’Ivoire 34.3 (2014) 4.6 (2013) 3.9 (2009) 18.4 (2014) 1080 (2014) Mali 20.7 (2014) 3.9 (2014) 29.3 (2010) 22.8 (2014) 469 (2014) Niger 6.7 (2014) 1.5 (2013) 9.3 (2009) 14.2 (2014) 293 (2014) Togo 18.2 (2014) 4.6 (2014) 16.9 (2009) 32.2 (2014) 430 (2014) All lower- 41.8 (2014) 8.2 (2014) 21.4 (2014) 61.3 (2014) 1252 (2014) middle income West African 15.2 (2014) 4.2 (2014) 19.2 (2014) 22.7 (2014) 610 (2014) Economic and Monetary Union Sub-Saharan 28.9 (2014) 3.9 (2014) 18.3 (2014) 65.7 (2014) 1034 (2014) Africa (developing only) Source: Data on formal account ownership is drawn from 2015 WBG Financial Capabilities Survey (Senegal) and 2014 Global Findex (other economies); data on commercial bank branch penetration, data on firm finance is drawn from Enterprise Survey data (latest available year by country); data on domestic credit to GDP and GDP per capita are drawn from the World Development Indicators. Table 3. Evolution of Financial Inclusion 2011-2015 Impact indicator Evolution in Financial Inclusion Indicators 2011 2014 2015 % of adults with a store-of-value transaction 5.8 15.4 17.4 account % of adults saving at a formal financial 3.7 6.5 6.4 institution % of adults with a formal loan 3.5 3.5 3.0 % of adults with a credit card 0.7 1.0 1.8 Source: 2011 data is drawn from 2011 Global Findex. 2014 data is drawn from 2014 Global Findex. 2015 data is drawn from 2015 WBG Financial Capabilities Survey (Senegal). Yet there are meaningful variations across socioeconomic and demographic categories – gender and urban/rural residence – in this broad measure of financial inclusion. As shown in Figure 1, men are 8.5 percentage points more likely than women to be financially included, a difference that remains statistically significant even after controlling for income, education, and a range of other individual characteristics (see 25 Table 10) . One of the main reasons of women’s lower financial inclusion, is the fact that they generally participate less in financial and budgetary decisions of the household. Only 23 percent of women declared being in charge of their household’s everyday expenditures, compared to 36 percent of men. Furthermore, 43 percent of women said they were not responsible of their household’s everyday expenditures. The remaining 34 percent of women declared sharing this responsibility with their husbands or another member of the household. Furthermore, close to 32 percent of the interviewed women declared not being the main persons responsible of planning and foreseeing important expenses, expected or not, compared to 25 percent of men. A possible reason explaining the lower inclusion of women rests in their prevalent use of tontines (a rotating savings group in which members contribute regular amounts and are lent each one on their turn the total amounts collected) as a means for them to access otherwise unavailable credit and as a means to save money outside of conventional vehicles. 25 The multivariate regression model includes the following control variables: age, gender, education, urban/rural, income, household head status, employment, whether saved as a child, and media consumption. 20 Figure 1. Financial Inclusion by Gender, Urban/ Rural, and Income Source: WBG Financial Capability Survey, Senegal 2015 Senegalese living in urban areas are significantly more likely to be financially included: 22 percent of adults living in urban areas report using a formal financial product compared to 13 percent of their rural counterparts. As Map 1 presents, inequality in access to financial services is also evident by region. While Senegalese adults from the extended region of Thies, Diourbel and Dakar show a financial inclusion level that is around four points higher than the average national rate, respondents from Ziguinchor, Louga, Tambacounda and Kedougou present the lowest financial inclusion rate, close to half of the average national level. Map 1. Financial inclusion by region (%) Source: WBG Financial Capability Survey, Senegal 2015. A strong correlation exists between income and financial inclusion. The gap between the poor and the rich is larger still, according to regression analysis (see Table 10). While 24 percent of those in the top quartile of the income distribution use a formal account, only 7 percent of those in the bottom quartile report the same. 21 As section 1.2 details, the rich seem to prioritize mortgages, given the percentage of the rich that use them is equal to twice the average. About 4 percent of them benefit exclusively from formal credit products that is 1 percent more than the overall average. More than 3 percent of the rich benefit from microfinance products, that is 1 percent more than the average. Around 3 percent of the rich use credit cards, compared to an average of 2 percent, and 6 percent use debit cards compared to an average of 3 percent. Close to 14 percent of the population belonging to the richest quartile use savings and checking accounts from commercial or postal banks, that is 4 percent more than the average. Close to 9 percent of the rich use formal savings products exclusively, compared to 6 percent on average. Income instability seems to encourage the recourse to savings / credit products, and hence increases financial inclusion. 16 percent of those with an unstable source of income are financially included, compared 26 to 18 percent of those with stable incomes , a difference that is statistically significant (see Table 10). In addition, those with unstable incomes use more other formal financial products (as insurance, pensions and investments), perhaps as precautionary savings to compensate for fluctuating revenues. Not surprisingly, the average level of monthly income (156,000 FCFA) for those that have unstable income is 1.6 times that of those with stable income (98,000 FCFA). There seems to be a correlation between the participation to the workforce and financial inclusion. The segment of the population that is excluded from the work force, the unemployed and those who have retired, are generally slightly less included than those who belong to the workforce. Those employed in the formal and informal sector make greater use of financial products and services. Self-employed or those informally employed are more financially included (21 percent), than those employed in the formal sector (15 percent). This is not surprising when one considers that the household monthly income in the former (151,150 FCFA) is 8.5 percent higher on average than the monthly household income of those employed in the formal sector (139,200 FCFA). The higher revenues of those self-employed or informally employed, relatively to those employed in the formal sector, also explain why they use in higher proportion formal financial institutions and products. In addition, there are more than eight times as many persons self-employed or employed in the informal sector than there are employees in the formal sector, this sheer size creates a natural market incentive for all financial service providers to cater to their needs. Figure 2. Financial Inclusion by Employment Source: WBG Financial Capability Survey, Senegal 2015 26 Stable income is defined as income that doesn’t vary from season to season (or in different times of the year). 22 A strong inverse relation exists between financial inclusion and household size. In fact, the larger households are not necessarily the poorest, but they are the least financially included. Financial inclusion seems to fall as household size increases, going from 19.4 percent of inclusion for households of one to three persons, to 17.1 percent for households of 10 to 12 persons. This holds true in spite of the fact that household income increases with the number of income earners, and hence with household size. Large households typically mean more adults, which translates into more informal help among its members as the overall household revenue increases. Family solidarity seems to play a critical role as a basic safety net in Senegal. This characteristic is reassuring in light of the fact that the majority of the surveyed population (more than 70 percent) is composed of households with more than seven persons, and almost 22 percent belong to a household of more than 12 persons. 1.3 Usage of Financial Products The next sections dig deeper into the types of institutions and specific products used by Senegalese adults, both within and outside the formal financial system. The analysis is organized by type of financial institution. Each section documents overall awareness of a given institution among respondents, explores patterns of historical usage, i.e. whether a respondent has ever used that institution, and the current usage. 1.3.1 Commercial and Postal Banks The strength of Senegal’s banking sector is not matched by high usage of banking institutions among Senegalese adults. The banking sector dominates Senegal’s financial system. The last decade has seen an improvement and diversification in the supply of financial products and services in Senegal. At the end of 2014 the banking sector consisted of 22 banks (19 banks and three branches of foreign banks) and two 27 specialized financial institutions with total assets reaching 4,622,751 million Francs CFA . Despite being the second largest financial sector in the WAEMU zone, Senegal’s “market share” has been slowly decreasing (from 21 percent in 2012 to 19.5 percent in 2014). In fact, even though the market grew 12.1 percent from 2013 to 2014, its growth was lower than that of other countries in the West African Economic and Monetary Union (WAEMU) zone. In 2014, domestic credits to the private sector and domestic bank deposits 28 represented respectively 33.5 percent and 36.5 percent of GDP . Although this compares well with countries in the sub-region, such as Côte d’Ivoire, domestic bank deposits are lower than the median level (which is 39.2 percent), and both indicators are behind those of countries such as Morocco, which thanks to the major financial sector reforms undertaken, are performing better. In the latter case, domestic credit to the private 29 sector and domestic bank deposits represented 68.6 percent and 90 percent of the GDP respectively . In terms of access to banking services, the sector accounted for 1,335,989 accounts through 381 points of services and 409 ATMs, in 2014. This access has slightly improved in the last few years. The number of ATMs (per 100,000 adults) was 3.92 in 2010 and it increased to 4.82 in 2013. Commercial bank branches (per 100,000 adults) rose 0.42 percent during this same period (4.16 vs 4.58 percent). This remains a fairly low level of penetration compared to lower-middle income economies (see Table 2 and Table 4) which explains in part the low level of utilization of bank products in Senegal. As Figure 3 indicates, while almost seven in ten adults report “being aware of banks,” the usage of banks presents a different trend: only 29 percent of Senegalese adults report ever having an account in a commercial or postal bank, a percentage which varies widely across different segments of the population. 27 BCEAO, “Rapport annuel de la Commission Bancaire”, 2014. 28 WBG, Financial Sector Reform and Strengthening Initiative (FIRST), The Program Management Unit, “Project Inquiry to work with the Senegalese authorities to elaborate a detailed national financial inclusion strategy (NFIS) and an action plan for implementing reforms to make the financial sector more inclusive and access to credit for SMEs easier”, 2016. 29 Ibid. 23 Table 4. ATM penetration Automated teller machines (ATMs) Difference (per 100,000 adults) (2010 vs 2013) 2010 2013 Senegal 3.9 4.8 0.9 Benin 2.4 4.3 1.9 Burkina Faso 1.3 2.7 1.3 Cote d’Ivoire 3.9 5.9 2.0 Mali 2.9 4.3 1.4 Niger 0.6 1.3 0.7 Togo 2.8 4.8 2.0 All lower-middle income 8.5 13.1 4.6 Sub-Saharan Africa (developing only) 3.1 4.7 1.6 Source: Data on ATMs is drawn from the World Development Indicators. Senegalese in urban areas are more likely to know and use banks products. The urban/rural gap is wide. Only 21 percent of rural dwellers either have or had an account, compared to 38 percent of urban dwellers. The multivariate regression model by social and demographic factors, presented in Table 11 and Table 12, shows that living in an urban area is strongly correlated with the usage of bank services. The analysis by village factors suggests people are more likely to use bank services in wealthy areas with shorter distances to banks and high standards of living. A possible reason explaining this gap is the lack of information, given that close to 37 percent of those living in rural areas have declared not knowing the products and services offered by banks, compared to only 26 percent of those living in urban settings. In fact, regression results in Table 24 show financial product awareness is strongly positively correlated with bank services usage. Regressions in Table 13 particularly highlights the increased probability of knowing bank services or products for urban populations compared to rural areas. The urban / rural divide is also prevalent when analyzing the data by gender. Men are more likely to know and access financial bank services (see Table 11 and Table 13). Figure 3. Knowledge and Usage of Commercial or Postal Banks by Individual Characteristics Source: WBG Financial Capability Survey, Senegal 2015. Income is a key characteristic that strongly predicts who uses bank services. Regression analysis (Table 11) suggests bank customers are more likely to have a high or medium income. As presented in Figure 3, the widest gap, however, is the one separating the lowest and highest income quartiles. The richest population (41 percent) “has or had an account at commercial or postal bank” compared to only 12 percent of the poorest, representing a 29 percent difference. Where about 24 percent of the richest population has 24 declared being unfamiliar with the services offered by banks, 44 percent of those belonging to the lowest quartile have said the same. This difference of awareness remains significant according to regression analysis presented in Table 13. An exploration into the type of bank services that Senegalese currently use reveals that the most common product are bank accounts, followed by credit cards, loans and then mortgages. Approximately 10 percent of Senegalese adults report currently using a deposit or checking account. Regression analysis again reveals meaningful disparities in the usage of bank accounts across individual and socio demographic characteristics (see Table 14). Men are 4 percent more likely than women to use a bank account (12 percent vs. 8 percent), a difference that holds even after controlling for other socioeconomic and demographic characteristics. Income is another important determinant of bank account usage: the rich are more than seven times as likely as the poor to have an account at a bank. Where adults live is also significantly associated with their likelihood to have an account. Those living in urban areas are more likely to use a bank account: 13 percent of urban residents have an account compared to just 6 percent of adults living in rural areas. A mere 4 percent of adults report having formal credit from a bank or a credit card, with men, the wealthy, and urban residents again being particularly likely to report doing so. These results are coherent with the 2014 Global Findex indicators where 3.5 percent of Senegalese adults report having borrowed from a formal financial institution in the past year. The Global Findex survey particularly indicates that credit card usage is around 1 percent. Financial capability survey results indicate that credit card usage is close to 2 percent showing a slight increase. In Senegal, the rich are almost three times as likely as the poor to report using a credit card: around 3 percent of the richest quartile of adults report using credit cards, as compared to less than 1 percent among the poorest quartile. The richest are also two times more likely to have formal credit against the poorest (close to 2 percent vs. less than 1 percent). Approximately 3 percent of men report currently having formal credit or a credit card, compared to 1 percent of women. One possible reason that could explain these low formal credit rates is that access to finance in general is limited. The informal nature of an important part of the economy, combined with the lack of an independent judicial branch, has caused banks to adopt a very cautious approach to credit granting. Housing finance remains a relatively underdeveloped sector in Senegal with only 1.5 percent of adults currently having a mortgage product. One possible factor that may influence the mortgage index is the low Senegalese urbanization rate (3.6 percent) compared to other Sub-Saharan African economies such as 30 Burkina Faso, Mali and Niger which have an index of 5.2 percent on average. On the other hand, 31 Senegalese housing affordability level (31 percent) is also far behind other low-middle income economies 32 as Burkina Faso (42 percent), Cote d’Ivore (59 percent) and Mali (39 percent) . Similarly, private pension products are reported by almost 2 percent of the population, and investments (such as stocks, bonds, shares, etc.) are only used by less than 1 percent of Senegalese adults. In particular, 9 percent of Senegalese are aware of the existence of investment opportunities in the regional stock market. In spite of the fact that Senegal is among the eight countries that are members of the Bourse Régionale des Valeurs Mobilières 33 (BRVM), the regional Stock Exchange, banks, investments products, and brokerage houses in Senegal are not commonly sought out for several reasons, though mainly due to the poverty level among the average person residing in this nation. The relatively high costs of the financial services associated with stock 30 HOUSING FINANCE IN AFRICA: A review of some of Africa’s housing finance markets. Africa Housing Finance Yearbook 2015. Centre for Affordable Housing Finance in Africa. 2015. 31 % of urban households that can afford the cheapest newly built house by a formal developer in 2015. 32 HOUSING FINANCE IN AFRICA: A review of some of Africa’s housing finance markets. Africa Housing Finance Yearbook 2015. Centre for Affordable Housing Finance in Africa. 2015. 33 Senegal Financial Sector Profile, Making Finance Work in Africa, 2014. 25 exchange operations as well as taxes on gains are two potential reasons that impede the Senegalese from 34 this type of investment. 1.3.2 Payment Providers Money Transfer Approximately 39 percent of Senegalese adults report using a money transfer service, a category that includes bank and non-bank services. As Figure 4 shows, the current and historical usage rate (54 percent) of these services place them as the most used financial services by the Senegalese population. The highest usage level is matched by an also high awareness level: almost 83 percent of Senegalese adults report being aware of them. These services are mostly used by men, by urban dwellers, and by those belonging to the richest revenue quartile. These socio demographic gaps are significant according to regressions analysis in Table 12. While commercial and postal banks provide these kinds of services, non-banks institutions such as Western Union, Money Gram, Joni Joni, and Wari are the main suppliers. This market composition and high usage rates are associated to the usage of remittances in Senegal. Capturing in part this phenomenon, the survey found that 23 percent of Senegalese adults receive help from family or friends living abroad as part of their household income source. In fact, as Box 1 details, Senegal is now among the top remittance receiving countries in the world. Within the African continent, Senegal is the third highest recipient in terms of amount among other African nations. As a consequence, money transfer services dominate the formal Senegalese 35 market of remittances recipient channels. Figure 4. Knowledge and Usage of Money Transfer Services by Individual Characteristics Source: WBG Financial Capability Survey, Senegal 2015. 34 Patrick Imam and Christina Kolerus, Senegal: Financial Depth and Macrostability, International Monetary Fund (Washington), 2013. 35 According to “Etude sur les Transfers de Fonds des Migrants Sénégalais, Direction de la Monnaie et du Crédit, 2013”, only 6 percent of remittances in Senegal pass through informal channels. 26 Box 1. Remittances and Money Transfer Services in Senegal Remittances in Senegal have become the most important source of external financing over the past two decades, far surpassing the importance of Foreign Direct Investment and Official Development Assistancer1. This change is extremely significant because while Senegal is a middle-income country, it is also among the least developed. Senegal is now among the top remittance receiving countries in the World. Within the African continent, Senegal is the third highest recipient in terms of amount among other African nations r2. By 2015, remittances represented 10.3 per cent of GDP r2. According to The Migrant Remittance Inflows reported by the World Bank, there was a boom in remittances from $US 147 million in 1998 to $US1.4 billion in 2008. Since 2008, however, there has been no significant increase or decrease reported and in fact, remittances between 2011 and 2015 remained consistently around $US1.6 billionr3. This relative stability in the amount of remittances received in Senegal has potentially reached a plateau. Observing the trend of Senegalese migrants can suggest an explanation to the plateau of remittance flows in Senegal. In 2010, the ILO reported that conservative figures indicate that there are nearly half a million Senegalese migrants (or nearly 4 per cent of the population) r4. While it remains difficult to determine an exact figure, it is estimated that the net migration rate in Senegal has remained consistent since 2000, at - 1.9 per 1000 between 2005 and 2010. Furthermore, approximately two-thirds of Senegalese migrants who return home spend 15 years or more abroadr5. Europe and the United States stand out as the highest sources of remittances, in part due to more rigorous reporting standards r4. It is estimated that nearly 52 per cent of all remittance transfers to Senegal come from Italy, Spain and France, while 7.7 per cent arrive from the United States. The high volume of informal money transfer methods of remittances creates an undeniable difficulty in calculating the exact amount of remittance flows in Senegal r1. According to a report published by the African Development Bank in 2009, despite the heavy decline, 45 per cent of remittances were still received by informal channels r1. The ILO estimates that there are nearly 400,000 money transfers received by Senegalese households each month. There are 4 different methods of receiving remittances in Senegal: (1) “nonbank financial intermediaries (NBFI) [including money transfer services]; (2) banks and credit unions that provide remittance sending services; (3) post offices; (4) and informal intermediaries such as non-formal couriers or even friends who take or facilitate the sending of money from sender to recipient”r4. The lack of competitiveness from banks mixed with the high costs attached to money transfer services can largely explain why many Senegalese continue to opt for informal methods of remittance transfers. Currently among formal channels, money transfer services such as Western Union or MoneyGram are still among the dominating nonbank financial intermediaries through which over half of all formal remittances are receivedr4. Money transfer services dominate the market in Senegal, receiving nearly half of all transfers, because they are fast, reliable and physically accessible comparatively to banks that receive only about 10 per cent of remittance transfers because their services are slower and branches are physically far less accessibler1. Formal channels of money transfers are beginning to experience a new wave of transformation with the introduction of mobile money. Mobile money still faces several obstacles (including cross-border provisions among many), however, given the high market potential, the Western African region (which includes Senegal) has been proactive in making efforts to expand this innovative product. As mobile money expands, it is likely to decrease the costs of remittance transfers due to the increase in competition with other services and potentially encourage a greater percentage of senders to use formal money transfer methods. r1 Fatou Cisse, Remittance Market in Africa: Chapter 8 Senegal, World Bank, 2011. r2 Migration and Remittances Factbook 2016, World Bank Group, 2016. r3 Migration and Remittances Date, World Bank Group, October 2015. r4 Remittance transfers in Senegal: Preliminary findings, lessons, and recommendations on its marketplace and financial access opportunities, International Labor Organization (ILO) (Geneva), 2010. r5 Leveraging Migration for Africa, International Bank for Reconstructive Development and World Bank (Washington), 2011. r6 State of the Industry: Mobile Financial Services for the Unbanked, Group Speciale Mobile GSMA (London), 2014. 27 E-money Agents Electronic money (e-money)-based instruments: In general terms, these instruments involve the payer maintaining a pre-funded transaction account with a PSP [Payment Service Provider], often a non-bank. Specific products include online money when the payment instruction is initiated via the internet, and mobile money when initiated via mobile phones and prepaid cards. Senegal’s institutional framework as well as its developed wireless telecommunication infrastructure 36 fueled the recent development of electronic money. The MEF is a member of the Better than Cash Alliance, a partnership of governments, companies, and international organizations working to facilitate the transition from cash to digital payments, under the premise that digital payments will advance financial inclusion, reduce poverty, and generate growth. While more than seven in ten Senegalese adults report being aware of e-money agent services, data on the usage of e-money products indicates that only 9 percent of the Senegalese population report ever having used the services of these providers. The high levels of awareness likely reflect government efforts to develop innovative financial products for individuals previously excluded from financial markets. As Figure 5 shows, women are as likely to know about mobile financial services than men. However, men and urban population are more likely to use these services than women and rural dwellers. Regression analysis presented in Table 11 reveals that these socio-demographic factors are strong predictors of mobile financial product usage. Figure 5. Knowledge and Usage of E-money Agents by Individual Characteristics Source: WBG Financial Capability Survey, Senegal 2015. 36 Digital Financial Services in Sénégal, Facts and Figure, March 2014, MM4P UNCDF. 28 There is room for potential growth for mobile financial services. Only 5 percent of the Senegalese population currently use mobile financial services. As compared to other West African economies (see Table 5), Senegal is far behind Cote D’Ivoire and Ghana but slightly ahead of Cameroon and Guinea. This low mobile money-penetration rate is also evident when Senegal is compared to the Sub-Saharan countries in general. As Figure 6 depicts, Senegal has a mobile money account penetration (measured as the number of mobile money accounts per 1,000 adults) between 17 and 27 times less than Uganda, Kenya and Tanzania who together lead mobile money usage in Sub-Saharan Africa. However, Senegal has important elements that may help to increase mobile financial services in the immediate future. In addition to restructured regulatory framework and government commitment to develop mobile financial services, Senegal has a high percentage of households with at least one mobile phone (see also Table 5). Furthermore, digital delivery of financial services in Senegal encompass several players which come often together as banks, mobile money operators, specialists in money transfer, MFIs, and electronic money issuers that allow the market to offer diversified and competitive services. In particular, numerous partnerships between banks and mobile network 37 operators have emerged in the recent past. On the other hand, Senegal fares relatively well as far as the level of taxes associated to mobile 38 services is concerned, which can be an important barrier to increasing digital inclusion. Senegal fares relatively well on this front. As Figure 7 illustrates, while mobile-users in Tanzania and Uganda have to pay consumer taxes of about 36 percent and 27 percent of total cost of mobile ownership, Senegalese mobile- users pay 22 percent which is only slightly above the Sub-Saharan average level (20 percent). Table 5. Measures of Mobile Financial Service Penetration across Economies Percentage of Formal account Use of mobile households with MFS products ownership (% of financial services at least one available (GSMA) adults) mobile phone 3 or more mobile Senegal 4.5 82 14.4 money services 3 or more mobile Cameroon 1.8 65 12.2 money services 3 or more mobile Cote d’Ivoire 24.2 76 34.3 money services 3 or more mobile Ghana 13.0 81 40.5 money services 2 mobile money Guinea 1.4 54 6.9 services Source: Data on the use of mobile financial services and formal account ownership is drawn from 2015 Financial Capabilities Survey (Senegal) and 2014 Global Findex (other economies). Data on mobile phone penetration is drawn from the 2013 Gallup World Poll. Data on MFS products available is drawn from the GSMA Mobile Money for the Unbanked Deployment Tracker (2014 State of the Industry Mobile Financial Services for the Unbanked). 37 The Senegalese division of Orange, which is the main mobile money player in the West African Economic and Monetary Union Zone, was licensed as e-money institution by BCEAO in December 2015. Millicom-Tigo was licensed as an e-money issuer through a subsidiary Mobile Cash SA and partnered with Banque Atlantique for its trust account. Two MTOs operate via SMS, namely CSI-Wari and Joni Joni. (Sources: Direction de la Monnaie et du Crédit du Sénégal. Etude sur l’offre des services financiers à distance dans l’UEMOA, CGAP, juin 2012. Note par pays sur le programme de technologie, CGAP UEMOA, Juin 2011) 38 GSMA, “The mobile Economy. Sub-Saharan Africa 2015”. 29 Figure 6. Number of mobile money accounts per 1,000 adults Source: Senegal data on mobile money accounts is drawn from 2015 Financial Capabilities Survey. Data on registered mobile money accounts per 1,000 adults 2014 for other countries in Sub-Saharan Africa is drawn from GSMA, “The mobile Economy. Sub-Saharan Africa 2015” / World Bank Global Findex. Figure 7. Consumer taxes as a proportion of total cost of mobile ownership 2014 Source: GSMA, “The mobile Economy. Sub-Saharan Africa 2015”. 30 1.3.3 Microfinance Institutions Commercial banks continue to represent the largest portion of the financial sector in terms of absolute value, MFIs have been on the rise for over a decade and have increased access to finance 39 by 20 percent within the population of Senegal . In fact, MFIs and financial cooperatives (SFD), in particular in terms of access, represent a large part of the sector: as of September 2015, they accounted for 2,376,998 clients with a credit portfolio of 281.01 billion Francs CFA and deposits for 248.04 billion Francs 40 CFA . According to the Government of Senegal however, while there was an increase in outstanding loans 41 in 2015, the number of active borrowers slightly decreased . The majority of MFIs offer basic financial 42 services (including saving accounts and microcredit) that primarily target low-income households . MFIs are mostly concentrated in highly dense, urban areas. Nevertheless, they are present in nearly every region of Senegal, providing access to finance to Senegalese in even the most remote areas. There is room for a great amount of progress as low population density, absence (or low levels) of income, job insecurity and lack of basic infrastructure (such as electricity) hamper the growth of MFIs in remote 43 44 areas . While 90 per cent of the MFI sector is represented by 18 MFIs , the Government of Senegal 45 recognized back in 2005 the existence of over 800 MFIs . An important regulatory law passed in 2008, increased transparency of MFIs. While this lead to the shutdown of 118 entities, credits and deposits of MFIs continued to increase. Between 2002 and 2011, both the rate of credits and deposits in MFIs increased nearly 46 4 times . Most often, credit from MFIs is “allocated to microbusinesses in trade, services such as catering, 47 agriculture, and transportation” . Most MFI loans have a term of less than two years. Despite the reforms and government priorities in order to professionalize and consolidate the MFI sector, knowledge of microfinance products remains low: slightly more than two in ten adults report being familiar with these services. Knowledge of the microfinance sector is relatively well-dispersed among demographic groups. Rural adults are slightly more likely than their urban counterparts to be aware of or use microfinance services, likely related to the government’s emphasis on agricultural development in recent years. Women and poor adults are only slightly less likely than male and wealthy adults to know about or use microfinance services (see Figure 8). 39 Senegal: Financial Depth and Macrostability, International Monetary Fund (Washington) 2013. 40 WBG, Financial Sector Reform and Strengthening Initiative (FIRST), The Program Management Unit, “Project Inquiry to work with the Senegalese authorities to elaborate a detailed national financial inclusion strategy (NFIS) and an action plan for implementing reforms to make the financial sector more inclusive and access to credit for SMEs easier”, 2016. 41 Le Portail de la Microfinance au Sénégal: Evolution du secteur. 42 Senegal: Financial Depth and Macrostability, International Monetary Fund (Washington) 2013. 43 Le Portail de la Microfinance au Sénégal: Microfinance et reduction de la pauvreté 44 Senegal: Financial Depth and Macrostability, International Monetary Fund (Washington) 2013. 45 Le Portail de la Microfinance au Sénégal: La Microfinance au Sénégal. 46 Senegal: Financial Depth and Macrostability, International Monetary Fund (Washington) 2013. 47 Ibidem. 31 Figure 8. Knowledge and usage of microfinance organizations by individual characteristics Source: WBG Financial Capability Survey, Senegal 2015. Differences in microfinance service use are less related to income disparities than differences in bank usage. As Figure 9 presents, the difference in MFI use between Senegal’s poorest and wealthiest adults is negligible, especially when compared to bank use. The richest Senegalese population are slightly more likely to use MFIs. Bank use, on the other hand, demonstrates a monotonic upward relationship with income. In general, overall use of MFIs remains quite small, limiting the abilities to make inferences about the population targeted by MFIs. Figure 9. Knowledge and Usage of Microfinance Organizations and Commercial and Postal Banks by Individual Characteristics Source: WBG Financial Capability Survey, Senegal 2015. 32 1.3.4 Insurance Companies The insurance sector accounts for a small part of the Senegalese’s financial system even if it represents the second largest segment of the formal financial sector after banks. The insurance market in Senegal is the fourth largest market for CIMA after Côte D’Ivoire, Cameroon and Gabon. In 2015, the turnover generated by 27 insurance companies (17 damage and 9 life insurance companies) stood at 119 billion CFA francs against 101 billion CFA francs in 2014, an increase of 17.82%. The penetration rate laid at 1.46% in 2015 against 1.30% 48 in 2014. Figure 10. Knowledge and Usage of Insurance Companies by Individual Characteristics Source: WBG Financial Capability Survey, Senegal 2015. Knowledge of insurance products is quite low in Senegal, as less than two adults in ten report to be familiar with these services and overall usage is close to 2 percent. Men are more likely to know about or have used insurance products than women. However, regression analysis reveals that income is the only strong predictor of insurance product usage (see Table 16). A mere 0.4 percent of poorest Senegalese use insurance and 3 percent of richest Senegalese currently has insurance. The following insurance plans are compulsory: third-party automobile insurance, insurance on imported goods, vessels flying the Senegalese flag, and 49 construction insurance for which certain application provisions still remain to be defined. Nonetheless, automobile insurance remains the most widely known, which explains the general awareness of most Senegalese when they are asked if they recognize this particular type of financial product / service. 48 Direction des assurances, Senegalese insurance sector, 2015. 49 Ibid. 33 1.3.5 Islamic Finance Senegal is at the forefront of Islamic finance in West Africa. With a population that is 95 percent Muslim, the country is well-suited to lead the development of Islamic finance in the region. Senegal was the first West African country to issue an Islamic bond when it issued a $208 million bond in June 2014, used to invest in the MEF’s administrative building. Senegal has since served as a model for Nigeria and Cote d’Ivoire, both countries which are trying to move into the market for Islamic finance. There is very low use of Islamic products and services. While around 12 percent of adults report being aware of Sharia-compliant financial products, less than 1 percent of Senegalese adults report actually using 50 a murabaha product. The reason given by 93 percent of respondents for not using Islamic financial products, is that they simply neither knew what the product offering was, nor did they know which institutions offered them. Close to 80 percent of respondents declared not needing Islamic financial products (see Figure 11). In addition, almost 65 percent of adults indicated that these products were not available where they lived. Use of Islamic banking is expected to grow in the near- to medium-term future. The government is working to create a regulatory framework that will allow for increased supply of more Sharia-compliant products. The country’s recent political stability has generated confidence in Arab investors, which are now one of the country’s main lending groups. In fact, La Banque Islamique du Sénégal in partnership with the 51 Islamic Development bank are leading the development of Islamic finance in Senegal. Figure 11. Reasons for not using Islamic Products Source: WBG Financial Capability Survey, Senegal 2015. Senegalese adults seem to prefer conventional banks instead of Islamic banks. Financial capability survey proposed to the respondent three hypothetical and neutral questions, where they had to choose between Islamic banks and conventional banks. As Figure 12 shows, half of Senegalese adults expressed a systematic preference for conventional banks. The proportion of adults who selected Islamic banks decreased dramatically when the premium for Islamic products increased. 50 A murabaha product is a partnership asset financing arrangement wherein the financial institution purchases the desired good for the client and then sells it to the client in monthly installments at the original price plus an agreed mark-up. In contrast to a conventional interest payment, the monthly installments remain fixed at the initial amount even in the case of delayed payment. 51 Islamic finance: Sukuk for Senegal. The Africa Report. 2015. 34 Figure 12. Choice of Financial Institution (% Preferring Islamic Banks over Conventional Banks) Situation 1 Let’s say you applied for a loan at two different institutions – an Islamic bank and a conventional bank. Both banks approve a one-year, 50,000 FCFA loan. The monthly installment/payment of the loan from the Islamic bank is 5,000 FCFA, and the monthly installment/payment on the loan from the conventional bank is 4,750 FCFA. Which bank would you choose to take a loan from? Situation 2 Now suppose the monthly installment/payment of the loan from the Islamic bank is 5,500 FCFA, and the monthly installment/payment on the loan from the conventional bank is 4,750 FCFA. Which bank would you choose to take a loan from? Situation 3 The monthly installment/payment of the loan from the Islamic bank is 6,750FCFA, and the monthly installment/payment on the loan from the conventional bank is 4,750 FCFA. Which bank would you choose to take a loan from? Source: WBG Financial Capability Survey, Senegal 2015. 35 1.3.6 Patterns of Formality and Informality in Saving and Credit When they save, Senegalese adults frequently use informal systems instead of the formal financial system. 19 percent of adults report using informal and semi-informal saving mechanisms as Tontine system, and self-help groups. In addition to this group of adults, 3 percent of Senegalese population also choose an informal method but also mixed with formal mechanisms. However, a vast majority of adults report not saving at all, suggesting that low use of formal products may depend not only on supply, but also demand factors (see Figure 13). Figure 13. Formal and Informal Savings Source: WBG Financial Capability Survey, Senegal 2015. Borrowing patterns are similar to those seen in savings, with very few adults using taking loans exclusively from formal providers. As Figure 14 shows, almost two thirds of Senegalese adults do not borrow at all and 28 percent borrow only informally through money lenders, family or friends. In addition, only about 3 percent of adults borrow exclusively from formal providers, suggesting that informal sources of credit are more accessible and/or more desirable to the majority of borrowers. Figure 14. Formal and Informal Credit Note: “Formal only” includes adults that report currently using a mortgage product, formal loan from a bank/SGBS/CBAO/Cooperative/MFI or credit card, but do not borrow from money lenders or family/friends. “Informal only” includes adults that report borrowing from money lenders or family/friends but do not use a mortgage product, formal loan from a bank/SGBS/CBAO/Cooperative/MFI or credit card. Source: WBG Financial Capability Survey, Senegal 2015. 36 There is also a credit pattern differentiation across regions in Senegal. As Map 2 and Map 3 presents, the use of formal and informal credits have an opposite trend with each other in more than a half of the country. It appears that in the regions of Tambacounda, Kedougou, Sedhiou, Kolda and Fatick where Senegalese adults report the lowest rates of formal credit, the usage proportions of informal credit are the highest. Thies and Diourbel presents and opposite trend, where the use of formal credit is relatively high and the use of informal credit is low. Map 2. Spatial Distribution of Formal Borrowing (% of Adults with Formal Credit) Source: WBG Financial Capability Survey, Senegal 2015. Map 3. Spatial Distribution of Informal Borrowing (% of Adults with Formal Credit) Source: WBG Financial Capability Survey, Senegal 2015. 37 1.4 The Unbanked and Barriers to Owning a Formal Account The approximately 6 million financially excluded adults – those who use no formal financial products or services - in Senegal are disproportionately female, poor, and living in rural areas. 87 percent of Senegalese women do not currently use a formal financial product or service. Nor do 93 percent of the poorest quartile of Senegalese adults or 87 percent of adults living in rural areas. Yet, as stated in the Global Financial Development Report 2014 (World Bank, 2013a), lack of usage of financial products does not necessarily mean lack of access. While some people may have access to financial services at affordable prices and may decide not to use them, others may lack access because of constraints such as excessively high costs or unavailability of the services due to regulatory barriers or other factors. The Financial Capability Survey asked respondents who do not have a formal account to report why. Figure 15. Reasons for Not having a Formal Account (% of Unbanked Senegalese Without an Account) Source: WBG Financial Capability Survey, Senegal 2015. The most commonly reported obstacle to formal account ownership is lack of enough money to use one. While this answer could suggest voluntary exclusion from the formal financial sector, it does not necessarily imply that these adults are unbankable. Instead, it may reflect a cost-benefit analysis on the part of these adults and demonstrates that many adults perceive banking services to be of little value, not in absolute terms, but for current levels of income and the quality of banking products. This could be because of the nontrivial costs associated with owning a formal account, from explicit costs like minimum balance requirements and withdrawal charges to implicit costs such as transportation costs, but it suggests that, for many adults, formal institutions do not offer sufficiently valuable services for day-to-day transactions or savings, particularly those involving small amounts. Another subset of unbanked adults explicitly cites the costs associated with a formal account: 8 percent of the unbanked report not having an account because it is too expensive (see Figure 15). Many adults, however, do give a clearer indication that they are not interested in the basic savings and payment services offered by the formal financial sector. Demonstrating that lack of usage does not necessarily imply lack of access, 19 percent of those who lack accounts state that they prefer to use cash and also 14 of them indicate that they do not need these products. While lack of trust is not a widely reported reason for not having an account among the general unbanked population, those who have used commercial and postal bank services in the past but currently do not have a formal account are more likely to cite this reason: 5 percent of these adults report trust as a reason for not having a formal account, as compared to 3 percent among those with no previous banking relationship. 38 2 Financial Capability Financial Capability is the internal capacity to act in one’s best financial interest, given socioeconomic environmental conditions. It therefore encompasses the knowledge, attitudes, skills, and behaviors of consumers with regard to managing their resources and understanding, selecting, and make use of financial services that fit their needs. 2.1 Knowledge of Financial Concepts There is substantial evidence that lack of financial knowledge and skills contributed to the recent global financial crisis. It is a well-accepted hypothesis that limitations in consumers’ ability to fully understand the financial products and risks they had taken contributed significantly to the worst financial crises since the great depression (Geradi et al. 2010; Klapper et al. 2012). Financial knowledge and skills are a key element for Senegal financial inclusion goals. MEF would like to promote a more effective and efficient process to achieve significant improvements in financial inclusion and access to credit for SMEs, as mentioned in Chapter 1. In order to fully achieve this objective, the authorities recognize the importance of financial literacy to take informed financial decisions and to enjoy the full benefits of financial products and services. To assess respondent’s financial knowledge and their basic numeracy skills, seven questions were added to the 2015 Senegal Financial Capability Survey, covering basic computation and financial concepts such as interest rates, inflation, compound interest, risk diversification, and the main purpose of insurance products. These questions have been asked because they capture financial concepts and skills which are widely considered as being crucial for informed savings and borrowing decisions as well as for being able to manage risks more effectively and or to take advantage of investment opportunities. A financial literacy index is obtained based on the number of correct responses provided by each survey participant to the seven financial literacy questions. This index ranges from 0 to 7, whereby 0 indicates respondents who incorrectly answer all of these questions, while a score of 7 indicates survey participants with a good understanding of fundamental financial concepts and the ability to perform simple mathematical calculations. Box 2 details questions from the financial literacy quiz. 39 Box 2. Financial Literacy Quiz Question 1 Imagine that five brothers are given a gift of 100,000 XOF. If the brothers have to divide the money equally, how much does each one get? Question 2 Now, imagine that the five brothers have to wait for one year to get their part of the 100,000XOF and inflation stays at 10%. In one year’s time will they be able to buy: • More with their share of money than they could today • The same amount • Less than they could buy today • It depends on the types of things that they want to buy (do not read out this option) Question 3 Suppose you put 100,000 XOF into a savings account with a guaranteed interest rate of 2% per year. You don’t make any further payments into this account and you don’t withdraw any money. How much would be in the account at the end of the first year, once the interest payment is made? Question 4 How much would be in the account at the end of five years? Would it be: • More than 110,000 XOF • Exactly 110,000 XOF • Less than 110,000 XOF • It is impossible to tell from the information given Question 5 Let’s assume that you saw a TV-set of the same model on sales in two different shops. The initial retail price of it was 100,000 XOF. One shop offered a discount of 15,000 XOF, while the other one offered a 10% discount. Which one is a better bargain, a discount of 15,000 XOF or 10%? • A discount of 15,000 XOF • They are the same • A 10% discount Question 6 Which of the following statements best describes the primary purpose of insurance products? • To accumulate savings • To protect against risks • To make payments or send money • Other Question 7 Suppose you have money to invest. Is it safer to buy stocks of just one company or to buy stocks of many companies? • Buy stocks of one company • Buy stocks of many companies Source: WBG Financial Capability Survey, Senegal 2015 40 The survey results suggest that on average respondents were able to correctly answer 3.5 out of 7 questions on financial literacy. Figure 16 reveals that the majority of Senegalese adults (60 percent) were able to provide between three and four correct answers. 16 percent of the sample was able to answer five questions correctly. Giving correct responses to six or more questions seemed to be a difficult task which was only achieved by 4 percent, while only 0.60 percent was able to provide correct responses to all 7 financial literacy questions. Around 19 percent of adults were able to only give one or two correct answers. Figure 16. Financial Literacy distribution Source: WBG Financial Capability Survey, Senegal 2015. A deeper exploration into the type of basic financial concepts knowledge reveals that Senegalese adults are most comfortable with performing simple financial calculations, yet may lack the numeracy skills needed to identify better bargains as well as the specific knowledge required to calculate compound interest. As Figure 17 shows, almost all respondents were able to perform simple divisions (92 percent). More than 50 percent of Senegalese adults are familiar with the purpose of insurance and the concept of risk diversification. They understand that holding stocks from different companies can usually be associated with less risky returns than holding stocks from a single company. By contrast, half or larger parts of the sample struggle to understand fundamental financial concepts and to solve slightly more difficult numeracy tasks. In particular, only around 45 percent of the sample demonstrates understanding of simple interests and inflation concept. One of the most notable knowledge gaps which deserve most policy attention is that only less than a third of the survey participants seem to be comfortable in solving simple numeracy tasks in order to identify better bargains and to estimate compound interest. Senegalese adults are already challenged in terms of basic financial concepts as survey results suggest. More complex concepts as annual percentage rate of interest (APR) increase this challenge. 41 Figure 17. Financial Literacy Quiz Overview Source: WBG Financial Capability Survey, Senegal 2015. Higher levels of financial knowledge relate to enabling environmental factors. Regression analysis reveals (see Table 19) that location matters and that those who live in inner city areas achieve significantly higher financial literacy quiz scores as compared to those who live in urban, peri-urban or rural areas. Similarly, indicators which are used to characterize the level of socio-economic development of the location, such as ‘low unemployment rates’, ‘life in location is better’ and ‘wealthy area’, seem to matter for better understanding of financial concepts. Residents who live in wealthy areas respond better to financial literacy questions than those who live in areas with lower standards of living. Those belonging to the highest revenue quartile are more likely to answer more than 5 quiz questions correctly while those that only have high school or vocational education are more likely to belong to vulnerable groups of the population, meaning they answered less than 2 quiz questions correctly. Figure 18. Low (0 – 2), medium (3 – 4) or high (5 – 7) financial literacy scores by income and education level Income level Education level Source: WBG Financial Capability Survey, Senegal 2015. 42 Box 3. Debt level and financial knowledge The survey results further suggest that adults with high levels of debt lack specific financial knowledge. The average financial literacy score for Senegalese adults with a debt higher than their yearly income is lower than adults with low level of indebtedness (less than one month of income) or not having debt at all, a difference that remains statistically significant even after controlling for other demographic and socioeconomic factors. As Figure 19 shows, Senegalese adults with relatively high indebtedness are much less likely to have basic understanding of simple and compound interest rates. In particular, the proportion of simple interest right answers is between 15 and 19 percent lower for high indebted adults. This difference is between 6 and 2 percent with regard to compound interest. This knowledge gap makes high indebted populations more vulnerable to economic shocks, such as interest rate increases or inflation periods, and ultimately adversely affects their ability to repay their outstanding debts. A finding about debt behavior is that 43 percent of the Senegalese population borrow money to buy food or other necessary items. In fact, twenty percent of the Senegalese population borrows money to buy food on a regular base and twenty percent do the same sometimes. More than three-quarters of those who declare borrowing in order to buy necessary items present high levels of debt (22 percent of them have a debt higher than their yearly income and 55 percent of this group has a debt between two and twelve months of income). On the other hand, a closer look at the significant characteristics of those who borrow money to buy necessary items reveals that rural dwellers, women, high income earners, self-employed and Senegalese adults who are out of labor force are more likely to have this behavior. Specifically, fifty-six percent of those who borrow money to buy necessary items live in rural areas. In terms of income, while 29 percent of those who borrow money to buy food are high income earners, about 19 percent of them are low income earners. In terms of work status, those who declare borrowing money for necessary items were mostly either self-employed Senegalese (37 percent) or out of labor force (23 percent). Another result about debt behavior is that 19 percent of Senegalese adults have borrowed to their limit or even more. While ten percent of Senegalese adults have to repay money and they couldn’t afford to borrow more, nine percent of the population has already exceeded its own limit. Among this group of Senegalese adults, fifty-two percent has a debt between two and twelve months of income and the rest of them (48 percent) has a debt higher than then yearly income. In particular, adults living in rural areas, men, high income earners and Senegalese adults with primary or intermediate level of education are significant more likely to borrow to their limit or more (see Figure 19). Figure 19. Attitudes toward debt Financial Literacy Results by Approximate Household Characterization of Senegalese Adults Who Borrow to Debt Measured in Number of Monthly Incomes Their Limit or More Source: WB Financial Capability Survey, Senegal 2015. 43 An international comparison of respondents in 21 countries on key financial knowledge measures confirms that financial knowledge and awareness levels are a significant challenge in Senegal, as it is in similar other countries. Table 6 shows the proportion of adults in 21 countries with a good grasp of basic concepts such as inflation, simple and compound interest as well as those who are comfortable with performing simple divisions. As can be seen, respondents in Senegal perform well in terms of their understanding of simple division. Senegalese adults are in the middle of the pack in terms of their understanding of compound interest, while their understanding of the effect inflation has on their savings is lower than in most other countries in the developed and developing world for which comparable indicators are available. Table 6.Cross-country Comparison of Different Financial Literacy Scores Simple Compound Simple Country Year Inflation Interest Interest Division Albania 2011 61 40 10 89 Armenia 2010 83 53 18 86 Colombia 2012 69 19 26 86 Czech Rep. 2010 80 60 32 93 Estonia 2010 86 64 31 93 Germany 2010 61 64 47 84 Hungary 2010 78 61 46 96 Ireland 2010 58 76 29 93 Lebanon 2012 69 66 23 88 Malaysia 2010 62 54 30 93 Mexico 2012 55 30 31 80 Mongolia 2012 39 69 58 97 Morocco 2012 43 50 31 90 Mozambique 2013 28 78 28 93 Philippines 2014 49 51 29 77 Peru 2010 63 40 14 90 Poland 2010 77 60 27 91 Senegal 2015 47 45 28 92 South Africa 2010 49 44 21 79 Turkey 2012 46 28 18 84 Uruguay 2012 82 50 N/A 86 Source: WBG Financial Capability Survey, Senegal 2015. Self-assessment of financial knowledge doesn’t necessary reflect quiz proficiency. In order to compare the objective findings of the financial literacy quiz into the context of subjective education needs, respondents were also asked to self-assess their awareness and understanding of financial terms and concepts such as interest rates, insurance products, exchange rates, and inflation. As seen in Figure 20 and Figure 21, when comparing interest, inflation, and insurance, there is an important discrepancy (for 48 percent of respondents on average) between self-reported financial literacy and actual proficiency as measured by the quiz. An awareness campaign would likely be useful. 44 Though close to 90 percent of respondents declared having never heard of or not knowing what inflation meant, 46 percent correctly answered the financial quiz question pertaining to inflation. Close to 60 percent of respondents have correctly answered the quiz question about the role of insurance, even though 72 percent have said they didn’t understand its purpose or even having never heard of them. Data also suggests that 84 percent of respondents know of interest rates and more than 56 percent claim to understand its meaning. Results of the quiz, however, seem to paint a different picture: 45 percent of respondents were able to correctly calculate simple interest rates and less than 31 percent were able to correctly calculate compound interest rates. Figure 20. Awareness on Financial Concepts and Products Source: WBG Financial Capability Survey, Senegal 2015. Figure 21. Comparison of Reported Understanding and Financial Literacy Quiz Results Source: WBG Financial Capability Survey, Senegal 2015. 45 Box 4. Media Consumption Overview Almost every adult in Senegal uses a mobile phone on a regular basis and the second most used media source is the radio. Only about a third of the adult population watches TV regularly. The Internet is used more (68 percent) in urban areas. As shown in Figure 22, the usage of mobile phones is nearly universal, even among those at the bottom of the pyramid. Internet usage is not significantly affected by income levels (a gap of about 14 percent between the richest and the poorest), however rural dwellers reported a much lower usage rate (24 percent) than urban dwellers (68 percent); suggesting that a lack of proper internet coverage is the main impediment for people who want to go online. Among other media sources, it appears that local newspapers are preferred among the least educated while national newspapers are preferred among those with higher education Figure 22. Media consumption by social and demographic groups Source: WB Financial Capability Survey, Senegal 2015. Media consumption index refers to the number of media sources regularly used by respondents. 46 2.2 Knowledge of Financial Products In order to assess survey participants’ awareness levels of financial products the financial capability survey captured peoples’ familiarity with financial products offered by different types of formal and informal providers. In particular, survey participants were asked if they were familiar with products offered by commercial banks, postal banks, Islamic banks, MFIs, insurance companies, money changers, MTOs, brokerage houses, and e-money agents. A financial products awareness index was constructed based on the number of financial products known to survey participants. This index ranges from 0 to 9, whereby 0 indicates respondents who are not familiar with any of the products offered in the marketplace. Respondents with a score of 9 on the other hand stated familiarity with products offered by the nine types of providers that the survey asked about. As far as the average number of financial products known is concerned, respondents were familiar with products provided by 3.6 different types of providers. As can be seen in Figure 23, more than two thirds of the sample indicated to be familiar with between three to five products, while 8 percent were familiar with financial products provided by six, seven, and nine different providers. None were familiar with all nine products. Only 1 percent of the sample did not know any of the nine financial product types. Figure 23. Distribution of Financial Product Awareness Scores Source: WBG Financial Capability Survey, Senegal 2015. A deeper exploration into the type of financial products known reveals that survey participants are mainly familiar with money transfer services (82 percent), followed by products offered by E-money agents (72 percent), commercial and postal banks (69 percent) and money changers (60 percent). MFIs and their products are known by slightly less than a fourth of the sample (24 percent), whereas insurance products are known by less than a sixth of the sample (12 percent). Much less, only 9 percent indicate to be familiar with the products offered by brokerage houses, which is most likely due to the fact that the capital market in Senegal is currently in a nascent stage. 47 Figure 24. Overview of Financial Product Awareness by Financial Institutions Source: WBG Financial Capability Survey, Senegal 2015. Respondents who are the least familiar with financial products offered by financial providers tend to live in rural neighborhoods and to have a low income. As Figure 25 and Figure 26 show and regression analysis suggests that even after controlling for other socioeconomic and demographic factors, level of income and “type of area” are strong predictors for familiarity of products from a variety of financial services providers (see Table 18 and Table 19). Figure 25. Average Financial Product Awareness Score by Area, Income Level, Age and Education Source: WBG Financial Capability Survey, Senegal 2015. 48 Figure 26. Fraction of Senegalese who know about Financial Products of Different Providers by Urban/Rural Source: WBG Financial Capability Survey, Senegal 2015. 2.3 Financial Behavior and Attitudes Even if people possess knowledge of basic financial concepts and products they may struggle to translate it into action. To identify the role that attitudes play in shaping individuals' financial decisions and to see if and how attitudes translate into financial behavior, the survey contains questions on different aspects (components) of financial capability that include attitudes/motivations and behaviors. This chapter gives an overview of strengths and areas for improvements surveyed Senegalese show regarding relevant financial behaviors and attitudes. In the Senegal data set, 11 main components of financial capability can be identified, some of which refer to behaviors and others to attitudes or motivations. The Financial Capability and Inclusion Survey in Senegal recorded different financial attitudes, motivations, and behaviors through diverse qualitative questions with various measurement levels (nominal and ordinal). To identify the main components of financial capability in Senegal, a statistical procedure was applied to simultaneously quantify categorical variables while reducing the dimensionality of the data. This procedure known as Principal Components Analysis (PCA) reduces the original set of variables to a smaller uncorrelated set of variables (principal components) which aim to account for as much of the variance in the data as possible. The PCA method gets a single indicator (or score) for each component. The scores range between 0 (lowest score) and 100 (highest score). The PCA analysis performed in Senegal has focused on 11 main components (or dimensions) that account for 69 percent of the total variance. Other dimensions were ignored because of their lower contribution to total variance. Principal components having eigenvalues greater than one were also prioritized. Table 7 presents the relevant attitudes that define each dimension. 49 Table 7. Main Identified Financial Components from PCA Analysis Component or dimension Topic 1 Controlled budgeting Whether makes a money plan and frequency Whether makes a money plan and precision of plan Whether makes a plan and how frequently sticks to the plan 2 Living within one’s means Whether runs short of money and why Whether borrows money to buy food and frequency Whether borrows money to repay debts and frequency 3 Saving for the unexpected Whether has money left over and frequency Whether has money left over and how the money is used Whether could cover unexpected expense tomorrow (or has done something or thought about it) Try to save Try to save money regularly Try to have provisions for emergencies 4 Monitoring expenses Whether knows amount spent and precision Whether knows amount available and precision 5 Achievement orientation Whether agrees that statement describes him/her - discipline Whether agrees with motivation statement, Work hard to be among the best Whether agrees with motivation statement, Have many aspirations 6 Planning for old age expenses Whether has a strategy for covering old age expenses that provides/will provide full coverage Whether has any strategies in place for covering old age expenses or is worried about it Whether agrees with motivation statement about Time preference. Not focus on short term 7 Willingness to learn from the environment and improve financial situation Whether agrees that statement describes him/her learning from others mistakes Whether agrees with motivation statement, Always look for opportunities to improve situation 8 Impulsiveness Whether/how often buys unaffordable items Whether agrees with motivation statement, Impulsiveness. I am impulsive 9 Farsightedness Whether agrees with motivation statement, Live for the present 50 Component or dimension Topic Whether agrees with motivation statement, Future will take care of itself Whether agrees with motivation statement, Say things before thinking through 10 Measure and respect of financial goals Whether/how often buys unnecessary items Whether agrees with motivation statement, Do things without thinking through Whether agrees with statement on getting information and advice 11 Choosing financial products Consider many alternatives before you decided which product to get Search until you found the best product for your needs Check the detailed terms and conditions of the product Source: WBG Financial Capability Survey, Senegal 2015. Compared to other aspects of financial capability, survey participants show strengths in areas related to ‘living within one’s means’, ‘monitoring expenses’, ‘learning and improving one’s financial situation’ and ‘thinking about the future’. According to PCA analysis, Senegalese adults are most capable in the area of living within one’s means where they achieve the highest score (73) of all aspects of financial capability being measured. This high score reflects the fact that around three quarters of the surveyed Senegalese adults do not borrow money to repay debts. More than a half of respondents do not use credit or borrow money to buy food or pay for other necessary items. Although only one third of Senegalese adults do not run short of money, the majority of respondents (59 percent) run short of money but overspending or buying unnecessary items isn’t a reason for this situation. Listing all scores for different aspects of financial capability in decreasing order, Figure 27 indicates that the second, third, and fourth highest scores are obtained for monitoring expenses (72), willingness to learn from the environment and improve financial situation (71), and planning for old age expenses (70). Figure 27. Average Financial Capability Scores Source: WBG Financial Capability Survey, Senegal 2015. 51 Financial attitudes and behaviors on the other hand, which relate to discipline, caution, and planning seem to be a challenge in Senegal. Figure 27 further reveals that compared to their four main areas of strengths, respondents score on average much lower in areas related to financial prudence, such as farsightedness (53), non-impulsiveness (50), and achievement orientation (38). The variables used to create the dimension score reveal that more than half of the sample (53 percent) reported that they buy unaffordable items. Almost 60 percent of surveyed Senegalese adults considered that the future will take care of itself and around half percent of the sample perceived themselves as impulsive people. The lowest scores are found for behaviors that relate to selection of financial products and saving. The score in the area of saving for the unexpected, is based on the facts that two third of the sample aren’t able to set money aside once necessary items are acquired. In fact, over half of Senegalese adults can’t cover unexpected expenses and they don’t have a contingency plan. Almost 77 percent of respondents do not try to save regularly. The saving inclination score matches the low saving rates detailed in section 1.3.6. The lowest score is obtained when choosing financial products. This is not surprising, since as presented in section 1.3, 41 percent of the sample doesn’t use any financial products (formal or informal) and 14 percent of adults only use informal products. In addition, given that respondents had trouble discerning between the better of two bargains in the quiz section of the interview, it is not so surprising to see a lower score when choosing financial products. It would be important to focus on educating the population to ensure the better economic decision-making. A comparison to survey participants in twelve countries confirms that Senegalese adults tend to monitor expenses and plan for old age expenses, but they are among the most challenged with respect to choosing financial products. Table 8 compares the average financial capability scores Senegalese adults achieved in five different areas to the ones of respondents in various countries in which a similar survey has been conducted. As can be seen, survey participants in Senegal outperform respondents from ten other countries in terms of monitoring expenses and six other nations when making provisions for their old age expenses. However, the cross-country comparison confirms that Senegalese respondents display the weakest performance in choosing financial products. Table 8. Cross-country Comparison of Different Financial Capability Scores Planning for Choosing Controlled Monitoring Living within Country old age financial budgeting expenses one’s means expenses products Armenia 74 63 68 100 59 Colombia 80 36 75 67 57 Lebanon 40 44 82 71 63 Mexico 52 41 78 65 59 Mongolia 65 N/A 84 N/A 49 Mozambique 74 61 N/A 40 34 Morocco 38 54 57 6 89 Nigeria 78 48 82 N/A N/A Philippines 44 38 43 29 51 Senegal 66 72 73 70 20 Tajikistan 81 N/A 83 N/A N/A Turkey 60 50 68 72 52 Uruguay 71 48 81 60 N/A Source: WBG Financial Capability Survey, Senegal 2015. 52 An important personal characteristic which is found to be strongly associated with higher scores in different financial capability areas is higher income. Faced with small income streams, low income populations would normally have a lower ability to save and more difficulties in farsightedness. This is confirmed with a notable difference of 25 points in their inclination to save for the unexpected scores and a deviation of 11 points in their farsightedness (see Figure 28). As compared to affluent segments of the population, those living on the lowest incomes are also less inclined to monitor their expenses, resulting in a difference of 5 points in this capability. Regression analysis by social and demographic factor suggests, high income populations are more inclined to choose products, plan for old age expenses, save, live within one’s means, possess farsightedness and impulsiveness as compared to low income populations (see Table 20, Table 21 and Table 22). Figure 28. Average Financial Capability Scores by Area and Income Level Source: WBG Financial Capability Survey, Senegal 2015. Other patterns which emerge show that living in a rural environment and age are related with lower financial capability scores. Figure 28 reveals a gap between rural and urban populations in their propensity to live within one’s means, save and farsightedness. The highest gaps between urban and rural dwellers are related to these last capabilities (9 and 8 points respectively). Another significant social characteristic associated to financial capabilities is the age (see Figure 29, Table 20, Table 21 and Table 22). The capacity to accurately budget is much lower for respondents younger than 35. Those that mostly monitor their expenses are in fact between 35 and 54 years old and, not surprisingly, planning for old age expenses increases with age. Figure 29. Average Financial Capability Scores by Age Source: WBG Financial Capability Survey, Senegal 2015. 53 Starting to save at an early age has value. As shown in Figure 30, respondents who already saved as a child score on average higher than their counterpart group who did not save during their childhood with respect to saving dimensions in financial behaviors. The gap between these subcategories of respondents is 18 points. Regression analysis confirms this observed difference (see Table 21). Figure 30. Average Financial Capability Scores by Child Saving Behavior Source: WBG Financial Capability Survey, Senegal 2015. 54 Box 5. Planning for Old Age Expenses Close to 80 percent have declared having strategies to cover expenses in their old age. Almost a quarter said they could cover their expenses in old age in full, especially those that are financially excluded, those that use informal products, those that cannot count on financial aid from their family and those aged 54 and over (see Figure 31). The most implemented strategies for old age are pension from the government (35 percent), inheritance (15 percent) and 14 percent of people having strategies will consider working all the time (see Figure 32). Figure 31. Purpose of saving (Have strategies for meeting expenses in old age or cover expenses in old age) Source: WBG Financial Capability Survey, Senegal 2015. Figure 32. Implemented strategies for meeting expenses in old age or cover expenses in old age Source: WBG Financial Capability Survey, Senegal 2015. 55 Box 6. Household Size and Planning for Old Age The survey shows that household size functions as an efficient social net in Senegal. This is captured by both behavior and attitude towards the future, which impacts both spending and savings. In effect, as Figure 33 illustrates, the larger the household the higher the probability of adding income from numerous household members (even if relatively low incomes are added, they still provide the means to meet daily expenses), as well as the likelier it is to eventually benefit from retirement income flowing from one of the older members once they retire. This is captured by the fact that almost half of the population of Senegal is composed of households with at least one member who is 50 years old or more, while 30 percent of Senegalese live in households with at least one member who is 65 years or more. Considering that roughly 18 percent of all 65 years and over benefit from pension payments, and that almost as many benefit from pensions as pensioners’ survivors (spouses or orphans), maintaining older members in the household adds to the security of all younger members. Figure 33. Average household income by household size Source: WBG Financial Capability Survey, Senegal 2015. Figure 34. Household distribution and total population by household size Household distribution Total population by household size Source: WBG Financial Capability Survey, Senegal 2015 56 3 Relationship between Financial Inclusion and Financial Capability There is little doubt that financial capability and financial inclusion influence each other. While lack of knowledge about financial products may hinder their use, it may also be the case that as people begin using financial services, they become more familiarized with and knowledgeable about them, in a “learning by doing” fashion. While disentangling a causal link between financial inclusion and financial capability is beyond the scope of this report, this chapter presents an overview of who are the financially excluded in Senegal and how their financial knowledge, attitudes, and behaviors compare to financially included segments of the population. 3.1 Financial Literacy and Financial Inclusion Financial illiteracy is usually cited as an explanation of the limited demand for financial services in developing countries. If people do not understand financial concepts and lack basic numeracy skills, they may not feel comfortable in choosing financial products and hence will not demand them, or perhaps even more alarming, they will choose products that do not fit their needs best or use them in the wrong way. For instance, in a study in India and Indonesia, Cole and others (2009) found financial literacy to be an important factor in determining the demand for financial products, especially among uneducated and financially illiterate segments of the population. Data from the Financial Capability Survey indicates that in Senegal, differences in financial literacy levels among users and non-users of formal financial products and services are not substantial. Using the financial literacy index discussed in section 2.1 and categorizing respondents into five groups according to the number of financial literacy questions they answered correctly, it can be seen in Figure 35 that those who currently use formal financial products perform slightly better than those who have no financial products at all. Regression analysis does not find any conclusive link the financial literacy score and the financial inclusion (see Table 23). 57 Figure 35. Distribution of Financial Literacy Score by Formal/informal Financial Products and Services Ownership Financial Inclusion Type of Products Source: WBG Financial Capability Survey, Senegal 2015. Senegalese whether they use or not formal savings or borrowing instruments appear to have low understanding of fundamental financial concepts. Figure 36 presents the financial literacy index of Senegalese who save and borrow by tapping into formal, informal sources, or both sources, and those who do not save or borrow at all. As seen from the figure, 46 percent of the Senegalese who save formally are not able to answer more than three out of the seven quiz-like questions correctly. Senegalese who do not save, or who save in informal sources, perform slightly worse (around 50 percent). A similar pattern is found among borrowers. Respondents who hold formal credit score marginally higher in their financial literacy assessment than respondents without or with informal credit. Almost half of these last respondents answered more than half of the financial literacy questions incorrectly. 58 Figure 36. Distribution of Financial Literacy Score by Usage of Formal/Informal Saving and Credit Products Type of Saving Type of Credit Source: WBG Financial Capability Survey, Senegal 2015. These low levels of understanding of basic financial concepts may be of concern, particularly among the active users of financial products. In order for financial products to provide maximum benefits, their 52 users need to know and understand how to use them. Experience has shown that using financial products 53 without fully understanding them could do more harm than good . As with the case of financial awareness, there seems to be room for policies aimed at enhancing financial literacy levels and numeracy skills among Senegalese, both for users of formal financial products as well as for Senegalese who are currently excluded from the formal financial system but might eventually become more integrated. 52 Most evidence on the effects of financial literacy on debt comes from studies in developed countries. In the U.S., Lusardi and others (2009) found that debt literacy (measured by questions evaluating debt related concepts) is on average low, and is positively associated with higher debt loads, fees and borrowing costs. Perry (2008) found that in the U.S. a substantial fraction of people (32 percent) tend to overestimate their credit ratings, being also less financially literate, less likely to plan their expenses and to save or invest. 53 “Morocco microcredit crisis in 2009, during which sector-wide credit risk soared to 14% and reached as high as 38% for one leading MFI highlighted the importance of market infrastructure and collective efforts to promote services related to information, research, coordination, advocacy, and capacity building”. CGPA. “What did we Learn from the Moroccan Microcredit Crisis?”. http://www.cgap.org/blog/what-did- we-learn-moroccan-microcredit-crisis. 59 3.2 Knowledge about Financial Products and Financial Inclusion Studies in various settings have also found that enhanced financial awareness may in turn lead to higher product up-take. In the U.S., for instance, information about a retirement plan was randomly provided to a group of university employees. Workers who received the information were substantially more likely to enroll in the retirement plan than those who did not obtain the information, suggesting that individuals are more likely to use a financial product once they learn about it and its benefits (Duflo and Saez, 2003). In a similar vein, Giné and others (2011) found that in rural India lack of understanding of insurance products is the second most stated reason for households not to use purchase rainfall insurance. Overall, evidence of these studies suggests that lack of usage of products may be reflecting a lack of awareness about them. Lack of awareness can prevent people from using financial products that could potentially benefit them. As discussed in section 1.4, most financially excluded Senegalese state they do not have formal accounts because they lack the money to maintain the accounts, because they prefer to use cash or because they do not need them. Only a small fraction of Senegalese report that they do not trust them (4 percent), suggesting at first view that in Senegal, barriers related to lack of knowledge about financial products are not substantial. However, when analyzing how informed Senegalese without formal accounts are about services of various financial providers, their awareness level appears to be low. Using financial product awareness index discussed in section 2.2, and categorizing respondents into five groups according to the number of financial services they know, Figure 37 and Figure 39 suggest low awareness levels even among non-formal account users who state reasons not related to financial awareness barriers. More than a half of non-formal account users only know between 1 and 3 financial services, while this proportion is 16 percent for their counterpart group. Regression analysis suggests that even after controlling for socioeconomic and demographic characteristics of Senegalese, awareness of financial products and the likelihood of owning a formal account are strongly linked (see Table 24 and Table 25) Figure 37. Distribution of Financial Product Awareness Score by Reasons for not having a Formal Account Source: WBG Financial Capability Survey, Senegal 2015. 60 Figure 38. Distribution of Financial Product Awareness Score by Formal/Informal Financial Products and Services Ownership Financial Inclusion Type of Products Source: WBG Financial Capability Survey, Senegal 2015. Senegalese who use formal savings or borrowing instruments appear to have high awareness of financial products. As Figure 39 indicates, Senegalese who save and borrow from formal sources are more aware of various financial institutions and their products than those who tap into only informal sources or those who do not save or borrow at all. If formal financial providers offer services of higher quality, this pattern may suggest that Senegalese with more information of the financial sector select better products and institutions than those with less information. 61 Figure 39. Distribution of Financial Product Awareness Score by Usage of Formal/Informal Saving and Credit Products Type of Saving Type of Credit Source: WBG Financial Capability Survey, Senegal 2015. Financially excluded Senegalese are more familiar with services from less regulated providers and they are less aware of products offered by formal financial institutions. Financially excluded respondents are familiar with products offered by a few financial institutions compared to survey participants who have a formal account. As Figure 40 shows, the financial providers that Senegalese without a formal account were less familiar with are formal ones, such as commercial and postal banks, microfinance institutions, insurance companies, brokerage houses and Islamic banks, in decreasing order of knowledge. On the other hand, their knowledge about financial products offered by MTOs (80 percent), money changers (76 percent), and e-money agents (70 percent) is comparatively higher. 62 Figure 40. Financial Product Awareness by Financial Inclusion and Services Ownership Source: WBG Financial Capability Survey, Senegal 2015. 3.3 Financial Attitudes/Behavior and Financial Inclusion Attitudes and behaviors are another relevant dimension when analyzing financial inclusion. In developed and developing countries, households and firms are frequently excluded from accessing financial products because of inadequate credit history, irresponsible financial behavior, poor business, and accounting records, to name a few. There are no substantial differences in the financial behaviors and attitudes of respondents financially included and excluded, as well as Senegalese who use formal savings or borrowing instruments. Using the same financial capability scores which have been described in section 2.3, Figure 41 and Figure 42 show that slightly differences arise between Senegalese with a formal account and those without in terms of their financial attitudes and behaviors. The most evident differences are in terms of saving for the unexpected and choosing products (6 points behind financially included adults in each case). A similar pattern is found among borrowers or respondents who declare saving. 63 Figure 41. Distribution of Financial Attitudes and Behaviors by Financial Inclusion Source: WBG Financial Capability Survey, Senegal 2015. Figure 42. Distribution of Financial Attitudes and Behaviors with and Without Different Financial Products Type of Saving Type of Credit Source: WBG Financial Capability Survey, Senegal 2015. 64 4 Financial Consumer Protection In addition to peoples’ ability to take sound financial decisions, the latest global financial crisis has highlighted the importance of financial consumer protection to protect consumers from abusive sale practices and to level the playing field between providers and consumers of financial services. Financial consumer protection is about ensuring a fair interaction between providers and consumers of financial services. An effective financial consumer protection regime is essential in counterbalancing the inherent disadvantage of financial service consumers vis-à-vis the power, information, and resources of their providers. Without basic protective measures, consumers may find it difficult or costly to obtain sufficient information or adequately understand the financial products that they use. Financial consumer protection is necessary to ensure stable financial markets in Senegal while ensuring that expanded access benefits consumers and the overall economy. As outlined in section 1.1, given the low level of financial inclusion in Senegal, a number of initiatives are planned or already underway to increase financial sector outreach to formally excluded populations. Increased access to finance can result in substantial positive effects, both on the macro level as well as on the level of individuals. However, it can be harmful if inexperienced consumers are not protected against fraud or unfair business practices. Effective financial consumer protection frameworks are also critical for instilling trust in the formal financial system and for ensuring that expanded financial sector outreach. A high incidence of conflicts with financial service providers or low levels of satisfaction with financial products used could undermine the trust in the formal financial system. Despite making existing consumers worse off, it can also discourage potential new consumers to enter the market. This chapter assesses the effectiveness of the current financial consumer protection regime from a demand-side perspective, with a focus on consumers’ satisfaction with financial products and service and consumer redress and dispute resolution. In order to measure whether products that financially included Senegalese adults use are effectively meeting their needs, the financial capability survey sought to capture the overall satisfaction of consumers with the nine most common types of providers and their products and services. To examine the effectiveness of existing consumer redress mechanisms, this survey also asked users of financial services to share their experiences with current internal and external redress mechanisms, and identified segments of the population that are more likely to have encountered a conflict with a financial service provider in the past three years. 65 4.1 Consumers’ Satisfaction with Financial Products In general, users of financial services have expressed satisfaction with the services offered by financial service providers. Banks fare less favorably that most other types of financial institutions, with MFIs and MTOs earning the highest praise from consumers (see Figure 43). The survey didn’t ask about dissatisfaction reasons. Future surveys could probe respondents on the specific reasons for their dissatisfaction. Figure 43. Clients’ Satisfaction with Services Provided by Common Types of Financial Institutions Source: WBG Financial Capability Survey, Senegal 2015. Among those who ever used commercial or postal banks, high income segments and rural dwellers are less satisfied with their products than their counterpart groups. As Figure 44 presents, while 84 percent of the lowest income earners who ever used bank products reported to be satisfied with them, only 79 percent of the highest income group indicated to be satisfied with the bank products they used. Whereas, 81 percent of urban dwellers indicated that they are satisfied with the products offered by banks, the corresponding number for rural dwellers is 78 percent. Figure 44. Clients’ Satisfaction with Services Provided by Commercial or Postal Banks Source: WBG Financial Capability Survey, Senegal 2015. Notable differences can also be observed in satisfaction levels between regions with services provided by commercial or postal banks. As Map 4 and Map 5 show, while Dakar, Kaolack and Kaffine present high level of historical bank usage, satisfaction levels with bank products are among the lowest of the country. However, Tambacounda, Kedougou and Thies show low – middle levels of historical bank usage but their bank satisfaction levels are high. On the other hand, Ziguinchor is characterized for having the lowest rates of historical usage and satisfaction. 66 Map 4. Historical Usage of Commercial and Postal Banks by Region (%) Source: WBG Financial Capability Survey, Senegal 2015. Map 5. Clients’ Satisfaction with Commercial and Postal Bank Services by Region (%) Source: WBG Financial Capability Survey, Senegal 2015. 67 4.2 Consumers’ Approaches to Deal with Provider Conflicts Another important finding is that 11 percent of the surveyed respondents experienced financial service provider conflicts, the majority of whom did not try to solve the conflicts they encountered. As shown in Figure 45, slightly over than one of ten Senegalese adults stated, that they experienced a conflict with a financial service provider in the past three years. This incidence rate of reported financial service provider conflicts is a medium index compared to other countries for which a comparable indicator is available. For instance, this same proportion is 25 percent in Morocco, 17 percent in Philippines, 15 percent in Mozambique, 12 percent in Azerbaijan, 5 percent in Mongolia, and only 1 percent in Tajikistan. On the other hand, as shown in Figure 45, twenty one percent of those Senegalese adults who encountered a dispute took actions to try to solve it. Only 38 percent of those who did not experience a conflict stated that if they faced a conflict they would try to solve it. Figure 45. Approaches to Deal with Financial Services Provider Conflicts Source: WBG Financial Capability Survey, Senegal 2015. A closer look at the characteristics of those who encountered a dispute reveals that urban dwellers, high income earners and Senegalese adults who are out of labor force were more likely to have faced a financial service provider conflict. As Figure 46 presents, while 14 percent of urban dwellers who used a financial product in the past three years reported to have faced a financial service provider conflict, the corresponding number for rural dwellers is 8 percent. This difference is more substantial when high income earners are compared to lowest income group (9 percent) and also when Senegalese adults who are out of labor force are set side by side to employed adults (8 percent). Regression analysis in Table 26 shows that these differences are significant. Other relevant characteristic is regional location (see also Table 26). In particular, Senegalese adults living in Dakar or Fatick experienced on average 4 percent more of conflicts with financial providers compared to national level. 68 Figure 46. Overview of Disputes by Social and Demographics Factors Source: WBG Financial Capability Survey, Senegal 2015. Map 6. Regional Overview of Disputes with Financial Providers (%) Source: WBG Financial Capability Survey, Senegal 2015. In terms of actions taken in the event of a dispute, social circles and legal courts were barely sought by those who experienced a conflict with their financial service provider. As Figure 47 shows, the most common actions taken to try to resolve disputes were to stop using the services before the contract expired (93 percent), to submit a grievance to company which sold the product (50 percent) and to submit a claim to the appropriate government authority (28 percent). While 12 percent approached legal courts to redress conflicts, only one out of ten reportedly approached the service provider through friends, family or community elders. The former finding can most likely be explained by perceived high costs and lengthy time of proceedings. 69 Figure 47. Action Taken to Redress Conflicts with Financial Service Providers Source: WBG Financial Capability Survey, Senegal 2015. The main causes for inertia are either related to perceived power imbalances between financial providers and their clients or they relate to lack of trust in or lack of awareness of respective government authorities which can be approached in the event of a dispute. As Figure 48 presents, less than three-quarters of those who did not take any actions to solve a dispute reported as main reason for their inertia that they perceived financial institutions as being too powerful. Two thirds indicated that they think the government authorities do not work properly, followed by 52 percent who were not aware of any government agencies they can approach for help. Almost one quarter of those who did not try to solve a conflict mentioned that they did not take any actions because they think the law does not adequately protect consumers. Between five and six percent of those who did not take any actions to solve a dispute declared that they are too shy to redress the dispute or they don’t have time to go through the process. Figure 48. Reasons for Not Solving the Conflicts with Financial Service Providers Source: WBG Financial Capability Survey, Senegal 2015. 70 Further investigation of those who encountered a conflict but didn’t take any actions to solve it reveals that urban dwellers, women, high income earners and Senegalese adults who are out of the labor force were more likely to remain passive when facing a conflict with a financial service provider. As Figure 49 presents, two-thirds of those who didn’t try to solve the conflict with the financial service provider live in urban areas. In terms of gender, the group of Senegalese adults who didn’t react when facing conflicts is mainly composed of women (60 percent) and less predominately of men (40 percent). On the other hand, while 39 percent of those who didn’t take any actions to solve a dispute are high income earners, only 3 percent of them are low income earners. Finally, in terms of work status, those who did not try to resolve the conflicts were mostly either out of the labor force (34 percent) or self-employed Senegalese (29 percent). These characteristics are statistically significant. Figure 49. 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World Bank Group. • World Bank Group. 2012. “Resolving Disputes between Consumers and Financial Business: Fundamentals for a Financial Ombudsman - A Practical Guide Based on Experience in Western Europe”. • World Bank Group. 2013a. “Global Financial Development Report 2014: Financial Inclusion.” World Bank, Washington, DC. • World Bank Group. 2013d. “Financial Capability Surveys Around the World: Why Financial Capability is important and how Surveys can help.” World Bank, Washington, DC. • The World Bank Group. 2014. “Financial inclusion: a critical goal for the World Bank Group” • World Bank Group and Bank for International Settlements. 2015. Consultative report. “Payment aspects of financial inclusion.” • Yoko Doi, David McKenzie and Bilal Zia. 2012. “Who you train Matters: Identifying Complementary Effects of Financial Education on Migrant Households.” World Bank Working Paper No. WPS6157, Washington, DC. 73 Appendix A.Cross-tabulation of Financial Inclusion Table 9. Financial Inclusion Summary by Social and Demographic Factors Formal Insu- Financial Commercial and Postal Banks Payment Providers MFIs Institut. rance Formal account General / Bank Credit E-money MFI owner- Loan Mortgage MTOs personal account card account credit 54 insuran. ship Gender Total 17.4% 10% 1.8% 1.3% 1.4% 39% 5% 2% 2% Male 21.9% 12% 2.7% 1.9% 1.9% 46% 5% 3% 3% Female 3.4% 8% 1.0% 0.7% 0.9% 33% 4% 2% 1% Area Urban 21.7% 13% 2.2% 1.0% 1.4% 49% 6% 2% 2% Rural 13.4% 6% 1.4% 1.5% 1.4% 30% 3% 3% 1% Income level First quartile 7.4% 2% 1.3% 1.0% 0.9% 15% 2% 1% 0% Second 15.4% 9% 1.1% 1.3% 0.1% 44% 4% 2% 1% quartile Third quartile 16.2% 10% 1.9% 1.3% 1.7% 39% 4% 2% 2% Fourth quartile 24.3% 14% 2.4% 1.4% 2.2% 46% 6% 3% 3% Employment Out of labor 13.5% 8% 0.6% 1.0% 1.2% 32% 3% 2% 2% force Unemployed 12.4% 7% 2.3% 0.2% 2.4% 26% 2% 2% 0.4% Formally 15.3% 8% 2.1% 1.8% 2.4% 39% 4% 0.5% 4% employed Informally 25.4% 14% 5.5% 1.5% 1.1% 45% 6% 5% 1% employed Self-employed 19.7% 11% 0.9% 1.6% 1.6% 45% 6% 2% 3% Retired 14.4% 9% 2.2% 1.2% 0.5% 36% 3% 1% 1% Level of education No schooling 17.6% 6% 0.6% 2.3% 0.5% 39% 7% 1% 2% Primary and 17.4% 10% 2.1% 1.3% 1.4% 39% 4% 2% 1% intermediate Secondary and 17.3% 10% 0.9% 0.5% 0.9% 39% 6% 2% 4% vocational Tertiary 16.4% 10% 0.0% 0.0% 7.0% 39% 3% 2% 5% 54 Formal account ownership (“financially included”) is defined in this Senegal financial capability study as the percentage of respondents who report having an account (by themselves or together with someone else) at a bank or another type of financial institution (formal credit, mortgage, credit from microfinance organizations or from the decentralized financial system, debit or credit card, formal savings, current or savings accounts), or personally using a mobile money service in the past 12 months. 74 Formal Insu- Financial Commercial and Postal Banks Payment Providers MFIs Institut. rance Formal account General / Bank Credit E-money MFI owner- Loan Mortgage MTOs personal account card account credit 54 insuran. ship Household size 1 – 3 members 19.4% 12% 2.1% 1.1% 0.8% 39% 6% 3% 2% 4 – 6 members 18.2% 10% 1.1% 2.0% 1.7% 34% 6% 2% 2% 7 – 9 members 17.5% 11% 1.4% 1.1% 1.4% 44% 5% 1% 2% 10 – 12 17.0% 10% 1.5% 0.6% 0.7% 40% 6% 2% 1% members More than 12 17.1% 8% 2.4% 1.5% 1.7% 37% 3% 2% 2% members Media consumption 0 - 1 media 18.6% 12% 4.0% 0.4% 3.6% 27% 4% 7% 0% 2 media 18.6% 12% 0.8% 1.7% 1.0% 33% 3% 4% 3% 3 media 17.1% 8% 1.7% 1.3% 1.4% 37% 5% 2% 2% 4 media 15.3% 10% 2.6% 1.2% 1.3% 41% 3% 1% 1% 5 media 18.4% 9% 1.2% 1.0% 1.5% 51% 8% 1% 3% 6 media 30.7% 12% 4.0% 0.4% 3.6% 27% 4% 7% 2% Region Dakar 17.4% 14% 0.8% 0.4% 0.8% 56% 7% 1% 2% Diourbel 20.0% 6% 4.3% 2.8% 1.4% 22% 3% 2% 1% Saint-Louis & 17.8% 11% 3.1% 1.2% 1.3% 42% 4% 4% 4% Matam Tambacounda 9.6% 6% 0.5% 0.8% 1.0% 35% 3% 1% 1% & Kedougou Thies 22.6% 6% 2.8% 2.6% 4.5% 21% 3% 5% 1% Louga 9.1% 5% 0.5% 3.1% 1.2% 17% 3% 0% 1% Fatick 13.4% 11% 1.8% 0.0% 1.0% 43% 2% 1% 1% Kaolack & 18.8% 10% 2.7% 2.3% 0.6% 36% 6% 2% 2% Kaffine Kolda & 11.0% 6% 0.1% 0.3% 2.4% 42% 2% 1% 1% Sedhiou Ziguinchor 7.7% 1% 0.6% 0.0% 1.3% 12% 1% 3% 0% Source: WBG Financial Capability Survey, Senegal 2015. 75 B. Background on Senegal Financial Survey Figure 50. Estimated Population Break-down by Urban/Rural Source: WBG Financial Capability Survey, Senegal 2015. Figure 51. Estimated Population Break-down by Region Source: WBG Financial Capability Survey, Senegal 2015. 76 Figure 52. Estimated Population Break-down by Gender Source: WBG Financial Capability Survey, Senegal 2015. Figure 53. Estimated Population Break-down by Age groups Source: WBG Financial Capability Survey, Senegal 2015. Figure 54. Estimated Population Break-down by Household Size Source: WBG Financial Capability Survey, Senegal 2015. 77 Figure 55. Estimated Population Break-down by Education Groups Note: “Other education” includes adults that report technical and professional school (n = 33, 1 percent), university education (n = 27, 1 percent), other higher education (n = 34, 1 percent), special education (n = 19, 1 percent). Source: WBG Financial Capability Survey, Senegal 2015. Figure 56. Estimated Population Break-down by Stable/Unstable Income Groups Source: WBG Financial Capability Survey, Senegal 2015. Figure 57. Estimated Population Break-down by Different Income Groups Source: WBG Financial Capability Survey, Senegal 2015. 78 C. Regression Tables Chapter 1. Financial Inclusion Table 10. Financial Inclusion by Social and Demographic Factors Financial Inclusion Variables in the Equation Coefficient Age 0.0092 *** (0.0033) Male 0.3118 *** (0.0842) No schooling as the baseline Primary and intermediate -0.0100 (0.1181) Secondary and vocational 0.0018 (0.1437) Tertiary -0.1440 (0.2709) Read/write in Wolof, French or another language 0.1479 * (0.0868) HH Head 0.0695 (0.1019) First quartile as the baseline Second quartile 0.4596 *** (0.1149) Third quartile 0.4925 *** (0.1204) Fourth quartile 0.7946 *** (0.1396) Out of labor force as the baseline Unemployed -0.0792 (0.1627) Formally employed -0.2459 (0.1368) Informally employed 0.3029 ** (0.1368) Self-employed 0.1150 (0.116) Retired -0.4070 ** (0.1746) Urban village 0.2503 *** (0.1801) 0 - 1 Media as the baseline 2 Media -0.0618 (0.1801) 3 Media -0.1489 (0.0106) 4 Media -0.2839 (0.2056) 79 Financial Inclusion Variables in the Equation Coefficient 5 – 6 Media -0.0856 (0.2177) HH size -0.0014 (0.0106) Stable income 0.2675 *** (0.0955) Save as a child -0.0621 (0.0667) Constant -2.1973 *** (0.3121) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 11. Probability of Having Ever Used Bank, Money Transfer or E-money Products by Social and Demographic Factors Bank Product Money Transfer E-money Agent Usage Product Usage Product Usage Variables in the Equation Coefficient Coefficient Coefficient Age 0.0096 *** 0.0190 *** 0.0217 *** (0.0033) (0.0025) (0.0044) Male 0.3265 *** 0.3759 *** 0.3298 ** (0.0861) (0.0781) (0.1348) No schooling as the baseline Primary and intermediate 0.2554 * 0.0423 -0.2725 (0.1362) (0.1057) (0.1868) Secondary and vocational 0.1649 0.0173 -0.0206 (0.1847) (0.1145) (0.1787) Tertiary 0.3489 0.0053 -0.3428 (0.2593) (0.212) (0.352) Read/write in Wolof, French 0.0853 -0.0713 -0.0892 or another language (0.11) (0.0926) (0.1166) HH Head -0.1949 * -0.6191 *** -0.3110 ** (0.1022) (0.092) (0.1523) First quartile as the baseline Second quartile 0.3782 *** 0.9408 *** 0.1172 (0.0931) (0.0955) (0.1391) Third quartile 0.5912 *** 0.7285 *** 0.2652 (0.0961) (0.1133) (0.1615) Fourth quartile 0.9109 *** 0.8185 *** 0.5064 *** (0.1274) (0.1546) (0.1658) Out of labor force as the baseline Unemployed -0.0672 -0.0463 -0.1584 (0.1286) (0.1382) (0.1615) Formally employed -0.1363 0.1940 -0.3899 (0.1367) (0.1709) (0.2571) Informally employed 0.0847 0.0378 0.0881 (0.1213) (0.125) (0.1729) 80 Bank Product Money Transfer E-money Agent Usage Product Usage Product Usage Variables in the Equation Coefficient Coefficient Coefficient Self-employed -0.0474 0.0406 0.2673 * (0.0962) (0.1158) (0.1435) Retired -0.2168 -0.4812 *** -0.6622 *** (0.1752) (0.1598) (0.1886) Urban village 0.3490 *** 0.4915 *** 0.2778 ** (0.0941) (0.1252) (0.108) 0 - 1 Media as the baseline 2 Media -0.0942 0.2633 -0.3074 (0.1936) (0.1753) (0.2702) 3 Media -0.1116 0.3518 * -0.1621 (0.1961) (0.1933) (0.2563) 4 Media -0.0913 0.2735 -0.4161 (0.2015) (0.1909) (0.2651) 5 – 6 Media -0.1902 0.4441 ** -0.0390 (0.2107) (0.1811) (0.2851) HH size -0.0183 ** -0.0051 -0.0320 *** (0.0082) (0.0097) (0.0113) Stable income -0.0729 -0.1985 ** 0.2267 (0.0887) (0.0837) (0.146) Save as a child 0.0255 -0.0568 -0.0639 (0.0717) (0.0655) (0.0921) Constant -1.7713 *** -1.7961 *** -2.0708 *** (0.2779) (0.2809) (0.4157) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 12. Probability of Having Ever Used Bank Products by Village Factors Bank Product Usage Variables in the Equation Coefficient Inner city as the baseline Urban -0.4958 *** (0.1503) Peri-urban -0.6473 *** (0.1832) Rural (village) -0.5860 *** (0.1615) Rural, non-village -0.7789 *** (0.177) Distance in km to primary school 0.0253 (0.031) Distance in km to secondary school -0.0127 (0.0336) Distance in km to clinic or hospital -0.0515 (0.0311) 81 Bank Product Usage Variables in the Equation Coefficient Distance in km to bank 0.0636 ** (0.0318) Distance in km to MFI 0.0476 (0.0377) Most of the homes do not have electricity inside property as the baseline Most of the homes have electricity inside property -0.0944 (0.0942) Most of the homes do not have piped water inside property Most of the homes have piped water inside -0.0032 property (0.1079) Water supply is a problem to some extent as the baseline Water supply is not a problem 0.2869 ** (0.1012) Unemployment is a problem as the baseline Unemployment is a problem to some extent -0.0084 (0.1012) Unemployment is not a problem 0.3151 (0.2336) Crime is a problem as the baseline Crime is a problem to some extent 0.0481 (0.1343) Crime is not a problem 0.0135 (0.1262) Life in location has better than 5 years ago as the baseline Life in location has not changed from 5 years ago 0.0731 (0.1145) Life in location is worse than 5 years ago 0.0286 (0.1499) Normal dress below standards as the baseline Normal dress standards in location 0.2370 ** (0.1025) Normal dress above standards in location 0.3407 ** (0.147) Location is wealthy (perceived) as the baseline Location is middle wealthy (perceived) -0.2185 (0.2158) Location is poor (perceived) -0.9974 *** (0.3558) 82 Bank Product Usage Variables in the Equation Coefficient Constant -0.5101 * (0.2706) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 13. Probability of Knowing Products by Social and Demographic Factors Bank awareness Variables in the Equation Coefficient Age 0.0032 (0.0026) Male 0.2779 *** (0.0786) No schooling as the baseline Primary and intermediate 0.1762 (0.1268) Secondary and vocational 0.1489 (0.1264) Tertiary 0.1739 (0.2273) Read/write in Wolof, French or another language 0.1309 * (0.0727) HH Head -0.0910 (0.072) First quartile as the baseline Second quartile 0.1380 * (0.0778) Third quartile 0.4333 *** (0.0873) Fourth quartile 0.5441 *** (0.0908) Out of labor force as the baseline Unemployed -0.1460 (0.1277) Formally employed -0.1686 (0.1142) Informally employed 0.0116 (0.1142) Self-employed -0.1903 * (0.1033) Retired 0.0448 (0.1433) Urban village 0.1854 *** (0.1747) 0 - 1 Media as the baseline 2 Media -0.3934 ** (0.1747) 3 Media -0.2685 83 Bank awareness Variables in the Equation Coefficient (0.0071) 4 Media -0.2150 (0.1639) 5 – 6 Media -0.3114 * (0.174) HH size -0.0144 ** (0.0071) Stable income -0.1450 (0.107) Save as a child 0.0555 (0.0664) Constant 0.1133 (0.2507) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 14. Probability of Currently Having a Bank Account by Social and Demographic Factors Bank account Variables in the Equation Coefficient Age 0.0135 *** (0.0041) Male 0.3042 *** (0.0925) No schooling as the baseline Primary and intermediate 0.3014 ** (0.1365) Secondary and vocational 0.3381 ** (0.1709) Tertiary 0.2079 (0.3156) Read/write in Wolof, French or another language 0.2016 * (0.1066) HH Head -0.1331 (0.115) First quartile as the baseline Second quartile 0.6083 *** (0.1424) Third quartile 0.6364 *** (0.1269) Fourth quartile 0.9001 *** (0.1525) Out of labor force as the baseline Unemployed -0.0383 (0.1658) Formally employed -0.2158 (0.1469) Informally employed 0.1485 (0.1469) 84 Bank account Variables in the Equation Coefficient Self-employed 0.0146 (0.1318) Retired -0.4375 ** (0.1918) Urban village 0.3226 *** (0.2075) 0 - 1 Media as the baseline 2 Media -0.0869 (0.2075) 3 Media -0.3828 * (0.0105) 4 Media -0.3546 * (0.213) 5 – 6 Media -0.4251 * (0.2361) HH size -0.0189 * (0.0105) Stable income 0.0645 (0.1212) Save as a child 0.0291 (0.0767) Constant -2.7893 *** (0.3593) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 15. Probability of Having Ever Used MFI or Money Charger Products by Social and Demographic Factors MFI Product Money Charger Usage Product Usage Variables in the Equation Coefficient Coefficient Age 0.0089 ** 0.0050 (0.0045) (0.0048) Male 0.1235 0.3359 ** (0.1106) (0.1331) No schooling as the baseline Primary and intermediate 0.2334 -0.1153 (0.1679) (0.2297) Secondary and vocational 0.2254 0.0695 (0.183) (0.2545) Tertiary 0.0598 0.0478 (0.3186) (0.4767) Read/write in Wolof, French 0.0060 -0.4789 *** or another language (0.0982) (0.1659) HH Head -0.2407 * -0.1332 85 MFI Product Money Charger Usage Product Usage Variables in the Equation Coefficient Coefficient (0.1255) (0.2005) First quartile as the baseline Second quartile 0.5080 *** 0.6162 *** (0.1084) (0.2178) Third quartile 0.2214 * 0.5913 *** (0.1233) (0.2241) Fourth quartile 0.1684 1.0762 *** (0.122) (0.2684) Out of labor force as the baseline Unemployed 0.0238 0.1931 (0.1967) (0.2878) Formally employed 0.3610 * -1.2348 *** (0.2104) (0.3922) Informally employed 0.1012 -1.1475 *** (0.1912) (0.3257) Self-employed 0.2437 -0.2730 (0.1615) (0.2061) Retired -0.1432 0.2647 (0.2281) (0.2687) Urban village 0.0266 -0.0987 (0.1018) (0.1277) 0 - 1 Media as the baseline 2 Media 0.0871 0.3112 (0.274) (0.4524) 3 Media -0.0061 0.5809 (0.2696) (0.4533) 4 Media -0.1216 0.7167 (0.2677) (0.453) 5 – 6 Media -0.0694 0.6824 * (0.2775) (0.373) HH size 0.0165 -0.0151 (0.0104) (0.0181) Stable income -0.1588 -0.2945 * (0.1148) (0.1676) Save as a child -0.1093 -0.0968 (0.0979) (0.156) Constant -2.3731 *** -2.7034 *** (0.377) (0.5031) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 86 Table 16. Probability of Having Ever Used Insurance Products by Social and Demographic Factors Insurance Product Usage Variables in the equation Coefficient Age 0.0075 * (0.0041) Male 0.0516 (0.1422) No schooling as the baseline Primary and intermediate -0.3470 (0.2517) Secondary and vocational -0.1268 (0.222) Tertiary -0.3079 (0.454) Read/write in Wolof, French or another -0.0419 language (0.1491) HH Head 0.2910 ** (0.135) First quartile as the baseline Second quartile 0.5469 *** (0.1915) Third quartile 0.7406 *** (0.1779) Fourth quartile 0.8499 *** (0.1959) Out of labor force as the baseline Unemployed -0.0252 (0.3549) Formally employed 0.2355 (0.3221) Informally employed -0.2159 (0.2254) Self-employed 0.1481 (0.1637) Retired 0.1861 (0.2762) Urban village 0.2417 (0.1602) HH size 0.0046 (0.0169) Stable income 0.0829 (0.1351) Save as a child -0.0046 (0.1168) Constant -2.7785 *** (0.3338) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 87 Table 17. Probability of Having Ever Used Brokerage Houses Products by Social and Demographic Factors Brokerage Houses Usage Variables in the Equation Coefficient Age 0.0133 ** (0.0051) Male -0.1327 (0.1258) No schooling as the baseline Primary and intermediate 0.1135 (0.1518) Secondary, vocational and tertiary -0.0693 (0.1845) Read/write in Wolof, French or another 0.1327 language (0.1794) HH Head 0.1228 (0.1405) First quartile as the baseline Second quartile 0.0818 (0.2349) Third quartile 0.5803 *** (0.1922) Fourth quartile 1.1097 *** (0.1895) Out of labor force as the baseline Unemployed 0.1885 (0.2344) Formally employed -0.4495 * (0.2397) Informally employed 0.1815 *** (0.91) Self-employed 0.1196 (0.1637) Retired 0.2168 (0.268) Urban village -0.0589 (0.1241) 0 - 1 Media as the baseline 2 Media -0.0608 (0.2491) 3 Media -0.3967 (0.2446) 4 Media -0.1410 (0.2478) 5 – 6 Media -0.2158 (0.2556) HH size -0.0333 ** (0.0133) Stable income -0.1440 (0.1865) 88 Brokerage Houses Usage Variables in the Equation Coefficient Save as a child 0.2156 ** (0.0923) Constant -2.8544 *** (0.4769) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 89 Chapter 2. Financial Capability Table 18. Financial Literacy Score by Social and Demographic Factors Financial Financial Literacy Score Product Level Awareness Score Level Low [0] Low [0] Lower-middle [1 – 3] Lower-middle [1 – 3] Middle [4] Middle [4] Upper-middle [5] Upper-middle [5 - 6] High [6 – 7] High [7 – 8] Variables in the Equation Coefficient Coefficient Age -0.0046 * 0.0042 (0.0025) (0.0026) Male 0.0495 0.1854 ** (0.0574) (0.0738) No schooling as the baseline Primary and intermediate -0.0820 0.1392 (0.0955) (0.1239) Secondary and vocational -0.1087 0.1619 (0.1201) (0.125) Tertiary 0.0984 0.0124 (0.1865) (0.2038) Read/write in Wolof, French or another -0.0623 0.0877 language (0.0797) (0.0692) HH Head 0.0092 0.0313 (0.0833) (0.067) First quartile as the baseline Second quartile 0.0754 0.2830 *** (0.0735) (0.0771) Third quartile 0.0486 0.4056 *** (0.0690) (0.0834) Fourth quartile 0.0606 0.5829 *** (0.0872) (0.0895) Out of labor force as the baseline Unemployed 0.0870 0.0000 (0.1337) (0.0965) Formally employed -0.3049 ** -0.0309 (0.1385) (0.1294) Informally employed -0.1101 -0.0389 (0.1036) (0.1257) Self-employed -0.0157 0.0103 (0.0976) (0.1263) Retired 0.1797 0.1017 (0.1234) (0.137) Urban village 0.0826 0.2974 *** (0.0661) (0.0633) 0 - 1 Media as the baseline 90 Financial Financial Literacy Score Product Level Awareness Score Level Low [0] Low [0] Lower-middle [1 – 3] Lower-middle [1 – 3] Middle [4] Middle [4] Upper-middle [5] Upper-middle [5 - 6] High [6 – 7] High [7 – 8] Variables in the Equation Coefficient Coefficient 2 Media 0.0388 -0.2053 (0.1711) (0.1718) 3 Media 0.0605 -0.1967 (0.1578) (0.1644) 4 Media 0.1104 -0.2106 (0.1734) (0.1713) 5 – 6 Media 0.1503 -0.1348 (0.1787) (0.1741) HH size 0.0008 -0.0109 (0.0069) (0.0076) Stable income 0.1875 ** -0.1371 * (0.0818) (0.0812) Save as a child 0.0784 -0.0386 (0.0476) (0.0696) /cut1 -3.0478 *** -1.8984 *** (0.236) (0.2566) /cut2 -0.0695 0.6333 ** (0.2047) (0.2432) /cut3 0.7804 *** 1.3630 *** (0.2102) (0.2482) /cut4 1.6528 *** 2.7835 *** (0.2224) (0.257) Estimates of ordered probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 91 Table 19. Financial Literacy Score by Village Factors Financial Financial Literacy Score Product Level Awareness Score Level Low [0] Low [0] Lower-middle [1 – 3] Lower-middle [1 – 3] Middle [4] Middle [4] Upper-middle [5] Upper-middle [5 - 6] High [6 – 7] High [7 – 8] Variables in the Equation Coefficient Coefficient Inner city as the baseline Urban -0.4747 *** -0.2039 ** (0.0974) (0.0971) Peri-urban -0.7223 *** -0.3160 *** (0.1097) (0.1162) Rural (village) -0.2898 *** -0.4785 *** (0.1063) (0.123) Rural, non-village -0.2029 ** -0.6197 *** (0.0953) (0.1256) Distance in km to primary school 0.0249 0.0027 (0.0176) (0.0199) Distance in km to secondary school 0.0062 0.0112 (0.0169) (0.0223) Distance in km to clinic or hospital 0.0077 0.0103 (0.0213) (0.0214) Distance in km to bank -0.0127 0.0241 (0.0181) (0.0213) Distance in km to MFI -0.0305 0.0253 (0.019) (0.021) Most of the homes do not have electricity inside property as the baseline Most of the homes have electricity inside -0.0364 -0.1014 property (0.0579) (0.0675) Most of the homes do not have piped water inside property Most of the homes have piped water inside 0.0655 -0.0547 property (0.0833) (0.0841) Water supply is a problem to some extent as the baseline Water supply is not a problem -0.0235 0.1805 * (0.0717) (0.0784) Unemployment is a problem as the baseline Unemployment is a problem to some extent -0.1255 * -0.0355 (0.0717) (0.0784) Unemployment is not a problem -0.2552 * 0.3524 ** 92 Financial Financial Literacy Score Product Level Awareness Score Level Low [0] Low [0] Lower-middle [1 – 3] Lower-middle [1 – 3] Middle [4] Middle [4] Upper-middle [5] Upper-middle [5 - 6] High [6 – 7] High [7 – 8] Variables in the Equation Coefficient Coefficient (0.1448) (0.14) Crime is a problem as the baseline Crime is a problem to some extent 0.0629 0.1175 (0.0828) (0.0936) Crime is not a problem 0.0649 0.0560 (0.0639) (0.0824) Life in location has better than 5 years ago as the baseline Life in location has not changed from 5 years 0.1219 * 0.0395 ago (0.0669) (0.0746) Life in location is worse than 5 years ago 0.1421 0.1383 (0.091) (0.1084) Normal dress below standards as the baseline Normal dress standards in location 0.1464 ** 0.0392 (0.0703) (0.0766) Normal dress above standards in location 0.1664 * 0.1093 (0.0969) (0.1) Location is wealthy (perceived) as the baseline Location is middle wealthy (perceived) -0.1138 -0.2911 ** (0.125) (0.1442) Location is poor (perceived) -0.3125 -0.8335 *** (0.2071) (0.2382) /cut1 -3.2394 *** -2.7499 *** (0.1872) (0.1773) /cut2 -0.2203 -0.2237 (0.1521) (0.1666) /cut3 0.6389 *** 0.5043 *** (0.1496) (0.1716) /cut4 1.5138 *** 1.9230 *** (0.1524) (0.1826) Estimates of ordered probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 93 Table 20. Financial Capabilities by Social and Demographic Factors (I) Controlled Living within Saving for the Monitoring budgeting one’s means unexpected expenses Variables in the Coefficient Coefficient Coefficient Coefficient Equation Financial Literacy -0.8229 0.3421 -0.1770 -0.5638 Score (0.7933) (0.4808) (0.488) (0.5499) Financial Product 0.6390 -0.3846 1.5256 *** 0.5732 Awareness (0.5834) (0.5231) (0.4185) (0.5243) Age 1.0194 *** 0.0190 -0.0917 * 0.3148 *** (0.0806) (0.0606) (0.0535) (0.0595) Male 10.2676 *** -5.2047 *** -1.3028 13.6102 *** (1.8306) (1.4048) (1.4563) (1.6809) No schooling as the baseline Primary and -2.0975 -4.7341 ** 1.4096 -2.5032 intermediate (2.4743) (1.9581) (1.7368) (2.5633) Secondary and -1.7829 -5.9030 * 3.9513 -0.1760 vocational (3.7958) (3.0667) (2.4336) (2.9186) Tertiary -3.4352 -11.1668 * -0.5649 -0.3227 (4.732) (6.6105) (3.8922) (4.5062) Read/write in Wolof, 3.8850 ** 1.1545 1.6154 0.3729 French or another language (1.9062) (1.8302) (1.4807) (2.098) HH Head 9.1924 *** 4.2359 ** 5.9231 *** -2.8053 ** (1.5977) (1.7789) (1.5446) (1.3089) First quartile as the baseline Second quartile -5.7685 ** 1.7962 4.1321 *** 2.6795 (2.2615) (1.5847) (1.2882) (1.811) Third quartile -7.1738 *** 5.7378 *** 11.3287 *** -0.1336 (1.9366) (1.6662) (1.5917) (1.7857) Fourth quartile -9.0040 *** 10.7343 *** 23.6734 *** 1.1244 (2.1313) (1.7742) (1.8459) (1.9052) Out of labor force as the baseline Unemployed 1.2330 0.5379 -0.2978 0.8835 (3.6534) (3.2548) (3.1167) (3.8254) Formally employed 10.5668 *** 3.7437 -2.0457 14.0723 *** (3.7909) (2.996) (2.8039) (3.0261) Informally employed 10.1022 ** 4.9175 * -0.8323 13.8377 *** (3.9332) (2.5648) (2.3256) (3.0907) Self-employed 11.1522 *** 1.6501 0.7674 13.6841 *** (2.9333) (2.1933) (2.0416) (2.7634) Retired -31.2482 *** 0.1635 8.7765 *** -14.0912 *** 94 Controlled Living within Saving for the Monitoring budgeting one’s means unexpected expenses Variables in the Coefficient Coefficient Coefficient Coefficient Equation (3.2576) (3.9064) (2.8607) (3.313) Urban village 0.1965 3.9733 *** 1.0188 0.4679 (1.8687) (1.4155) (1.6302) (1.6021) 0 - 1 Media as the baseline 2 Media 2.0984 -4.7462 -4.7815 0.8525 (4.4711) (3.6602) (2.9704) (4.1737) 3 Media 1.9697 -5.9152 * -2.8567 -0.3074 (4.2931) (3.4512) (3.0645) (3.7638) 4 Media -0.8833 -7.2886 ** -4.5982 * -2.1537 (4.7631) (3.4622) (2.7558) (3.9375) 5 – 6 Media 1.0139 -13.1381 *** -5.1591 -1.6179 (4.8822) (4.4103) (3.5686) (4.4016) HH size 0.0108 -0.1702 -0.2110 0.2102 (0.1754) (0.1536) (0.1407) (0.1716) Stable income 0.6502 -0.1950 2.8362 -3.8961 * (2.2308) (1.8) (1.8025) (2.194) Save as a child -3.0039 * 1.2465 17.7455 *** -0.2644 (1.7626) (1.4707) (1.7198) (1.5758) Constant 12.4800 75.8418 *** 11.5768 ** 47.5528 *** (7.5588) (5.463) (5.2137) (5.706) Estimates of the regression model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 21. Financial Capabilities by Social and Demographic Factors (II) Achievement Planning for old Willingness to Impulsiveness orientation age expenses learn from the environment and improve financial situation Variables in the Coefficient Coefficient Coefficient Coefficient Equation Financial Literacy 0.2521 -0.4358 1.2562 *** 0.4744 Score (0.6259) (0.4404) (0.4658) (0.8007) Financial Product 0.8471 -0.6672 -1.0280 ** 0.4021 Awareness (0.5652) (0.4051) (0.5004) (0.5395) Age -0.0713 0.3075 *** -0.1005 * -0.1901 ** (0.0632) (0.0443) (0.0523) (0.0738) Male -0.3575 1.2777 -3.6332 * -6.8155 *** (2.2219) (1.8709) (1.8448) (1.9987) 95 Achievement Planning for old Willingness to Impulsiveness orientation age expenses learn from the environment and improve financial situation Variables in the Coefficient Coefficient Coefficient Coefficient Equation No schooling as the baseline Primary and -2.4484 0.7953 0.6961 -2.6277 intermediate (3.0064) (2.0957) (1.9826) (2.9792) Secondary and 0.8443 2.3594 -1.3965 -3.7677 vocational (3.4786) (2.4112) (2.0172) (3.8203) Tertiary -7.1156 -1.7913 2.8051 4.5450 (6.2865) (4.3998) (3.126) (6.5262) Read/write in Wolof, -6.1312 *** 4.4636 ** -0.5504 0.9667 French or another language (2.3007) (2.1091) (1.336) (2.8649) HH Head -0.8920 -2.1408 1.7212 7.9257 *** (1.8926) (1.6776) (1.6288) (2.2618) First quartile as the baseline Second quartile -3.5893 0.0630 2.0120 -3.4756 * (2.2224) (1.4206) (1.8073) (1.9937) Third quartile 0.5871 0.3080 5.3591 *** 0.6218 (2.4990) (1.7588) (1.5414) (2.2407) Fourth quartile -3.1607 4.3913 *** 3.3420 ** 5.4764 ** (2.4972) (1.6764) (1.6449) (2.4802) Out of labor force as the baseline Unemployed 1.0259 -3.5165 -0.5886 -0.7339 (3.7115) (2.2002) (2.4214) (3.5997) Formally employed -0.6703 1.2119 4.1161 * 2.2747 (3.9838) (2.4546) (2.3324) (3.5725) Informally employed 0.4280 -0.6798 0.1673 1.3089 (3.9213) (2.2671) (2.2401) (2.8355) Self-employed -1.7645 -1.0751 -2.8396 0.6808 (3.2053) (2.0274) (2.0918) (2.3674) Retired 1.3330 3.9715 11.6505 *** (3.589) (2.9727) (3.8697) Urban village -1.2897 -3.4118 ** 4.6418 *** -5.1780 *** (1.9007) (1.4578) (1.3338) (1.9022) 0 - 1 Media as the baseline 2 Media 1.4276 0.1442 -3.3336 0.9784 (5.3151) (2.7741) (3.141) (4.1157) 3 Media 2.1750 0.3994 -2.8164 3.6311 96 Achievement Planning for old Willingness to Impulsiveness orientation age expenses learn from the environment and improve financial situation Variables in the Coefficient Coefficient Coefficient Coefficient Equation (4.9769) (2.9886) (2.686) (3.9882) 4 Media 2.2095 0.8063 -3.8942 4.2125 (5.0726) (2.9197) (2.7779) (4.1473) 5 – 6 Media -0.5846 -0.3801 -4.6836 1.1743 (5.5355) (2.9156) (3.21) (4.4943) HH size -0.2479 0.0976 -0.0271 -0.3939 * (0.1838) (0.1518) (0.1327) (0.216) Stable income -1.5905 2.6043 * -3.8609 ** 1.4184 (2.7777) (1.4947) (1.4918) (2.6239) Save as a child -0.4481 0.2863 0.3397 -2.3841 (1.9974) (1.1296) (1.238) (1.7447) Constant 48.8775 *** 56.9071 *** 75.7671 *** 56.9746 *** (8.6299) (4.4876) (4.3953) (7.2088) Estimates of the regression model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 22. Financial Capabilities by Social and Demographic Factors (III) Farsightedness Measure and Choosing respect of financial financial goals products Variables in the Coefficient Coefficient Coefficient Equation Financial Literacy -0.3201 -0.6366 -0.2355 Score (0.5454) (0.4971) (1.005) Financial Product 1.2281 *** -0.4601 2.5173 *** Awareness (0.3756) (0.4209) (0.9017) Age 0.1235 *** 0.0496 0.0298 (0.0446) (0.043) (0.1135) Male 2.9354 ** -0.6905 -1.1662 (1.1826) (1.1083) (2.7466) No schooling as the baseline Primary and 0.8954 -2.7920 * 6.3698 * intermediate (1.9691) (1.6244) (3.5884) Secondary and 1.5790 -5.8514 *** 4.4463 vocational (2.2393) (2.1314) (4.5406) Tertiary 7.4941 * -3.3340 0.2085 97 Farsightedness Measure and Choosing respect of financial financial goals products Variables in the Coefficient Coefficient Coefficient Equation (3.9348) (4.2028) (7.1854) Read/write in Wolof, 0.1728 -0.7451 0.3825 French or another language (1.3308) (1.147) (2.5077) HH Head -12.5299 *** -0.1672 1.9518 (1.4685) (1.1949) (3.2096) First quartile as the baseline Second quartile 13.7316 *** -0.4754 7.2442 ** (1.9812) (1.4381) (3.1476) Third quartile 5.5637 *** -2.6669 ** 8.8959 ** (1.8851) (1.3025) (3.9036) Fourth quartile 7.3265 *** -2.2703 * 17.6720 *** (2.1866) (1.3117) (3.8179) Out of labor force as the baseline Unemployed -1.8010 2.0518 14.6085 * (2.3405) (2.1167) (8.1283) Formally employed 0.3918 3.0991 -1.9766 (2.5665) (2.2361) (5.1022) Informally employed -0.9699 1.3807 -7.6283 * (1.7283) (1.9869) (4.2055) Self-employed -0.2976 0.1351 -4.4637 (1.6428) (1.3498) (4.0839) Retired -2.7109 -3.9684 * -4.7257 (2.5552) (2.3888) (6.0405) Urban village 5.1635 ** -2.6423 ** -1.0719 (1.992) (1.1781) (2.502) 0 - 1 Media as the baseline 2 Media 0.0424 -1.3546 5.6142 (2.9831) (3.0385) (6.8569) 3 Media 3.1203 0.0885 5.1074 (3.1187) (2.4373) (6.3098) 4 Media -0.9011 0.0298 7.4170 (3.1577) (2.5234) (6.7121) 5 – 6 Media 0.4453 -0.0524 7.1642 (3.1713) (2.8021) (6.8175) HH size 0.1402 -0.0477 -0.5857 * (0.1852) (0.1389) (0.3097) Stable income -3.6604 ** -0.5602 -1.5982 (1.5287) (1.6587) (2.4929) Save as a child 0.6233 0.2465 -3.9904 (0.9041) (0.9369) (2.4159) 98 Farsightedness Measure and Choosing respect of financial financial goals products Variables in the Coefficient Coefficient Coefficient Equation Constant 38.8119 *** 71.1747 *** -2.3228 (4.8911) (4.8671) (9.9661) Estimates of the regression model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 99 Chapter 3. Relationship between financial inclusion and financial capability Table 23. Probability of Financial Inclusion by Financial Literacy Score, Financial Product Awareness, Social and Demographic Factors Financial inclusion Variables in the Equation Coefficient Financial Literacy Score 0.0200 (0.0324) Financial Product Awareness 0.4084 *** (0.0343) Age 0.0084 *** (0.0031) Male 0.2501 *** (0.0867) No schooling as the baseline Primary and intermediate -0.0692 (0.1303) Secondary and vocational -0.0520 (0.1592) Tertiary -0.1522 (0.2839) Read/write in Wolof, French or another 0.1233 language (0.0906) HH Head 0.0299 (0.1048) First quartile as the baseline Second quartile 0.3809 *** (0.1225) Third quartile 0.3306 *** (0.1232) Fourth quartile 0.5855 *** (0.143) Out of labor force as the baseline Unemployed -0.1784 (0.1827) Formally employed -0.2808 (0.1721) Informally employed 0.3132 ** (0.1432) Self-employed 0.0714 (0.1287) Retired -0.5771 *** (0.1869) Urban village 0.1514 (0.1017) 0 - 1 Media as the baseline 2 Media 0.0850 (0.1854) 100 Financial inclusion Variables in the Equation Coefficient 3 Media -0.0146 (0.1994) 4 Media -0.1421 (0.2079) 5 – 6 Media 0.0383 (0.2249) HH size 0.0002 (0.0103) Stable income 0.3661 *** (0.1149) Save as a child -0.0688 (0.0714) Constant -3.6660 *** (0.3674) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 Table 24. Probability of Using Financial Instruments on Financial Capabilities Scores (I) Bank Product Insurance MFI Product Money Charger Usage Product Usage Usage Product Usage Variables in the Coefficient Coefficient Coefficient Coefficient Equation Financial Product 0.3852 *** 0.3397 *** 0.2797 *** 0.1761 *** Awareness (0.0423) (0.0591) (0.0479) (0.0642) Financial Literacy 0.0897 ** -0.0300 -0.0969 * 0.0462 Score (0.0381) (0.0628) (0.0496) (0.0639) Controlled budgeting 0.0039 ** -0.0023 0.0016 -0.0107 *** (0.0016) (0.0034) (0.0029) (0.0027) Living within one’s 0.0054 *** 0.0016 -0.0020 0.0043 means (0.0019) (0.0026) (0.002) (0.0029) Saving for the 0.0055 *** 0.0059 *** -0.0052 ** -0.0042 unexpected (0.0021) (0.0018) (0.0021) (0.0031) Monitoring expenses 0.0051 ** 0.0042 0.0041 0.0019 (0.002) (0.003) (0.0026) (0.0031) Achievement 0.0030 ** -0.0032 0.0008 -0.0003 orientation (0.0014) (0.0025) (0.0017) (0.0021) Planning for old age 0.0025 0.0027 -0.0022 -0.0082 ** expenses (0.0031) (0.004) (0.0027) (0.0035) 101 Bank Product Insurance MFI Product Money Charger Usage Product Usage Usage Product Usage Variables in the Coefficient Coefficient Coefficient Coefficient Equation Willingness to learn 0.0003 -0.0014 -0.0001 -0.0056 ** from the environment and improve financial situation (0.003) (0.004) (0.0021) (0.0025) Impulsiveness -0.0003 -0.0011 0.0008 -0.0008 (0.0015) (0.002) (0.0019) (0.0026) Farsightedness -0.0076 ** 0.0116 ** 0.0024 0.0087 * (0.003) (0.0046) (0.0032) (0.0044) Measure and respect 0.0015 -0.0014 -0.0005 0.0103 ** of financial goals (0.0028) (0.0029) (0.0029) (0.004) Choosing financial 0.0010 0.0011 -0.0004 0.0030 products (0.0014) (0.0017) (0.0018) (0.0019) Age -0.0002 0.0056 -0.0068 0.0134 * (0.0054) (0.0084) (0.0071) (0.0073) Male 0.2947 ** -0.1835 -0.1623 0.0289 (0.1263) (0.2234) (0.1279) (0.16) No schooling as the baseline Primary and 0.4033 ** -0.7522 ** 0.3104 -0.0114 intermediate (0.1758) (0.2943) (0.2109) (0.2314) Secondary and 0.2037 -0.1379 0.2755 0.1807 vocational (0.1938) (0.228) (0.2456) (0.2631) Tertiary 0.4152 -0.5372 0.0412 0.0476 (0.4205) (0.6401) (0.4452) (0.5339) Read/write in Wolof, 0.0657 -0.1843 -0.1125 -0.3270 * French or another language (0.1493) (0.1727) (0.1315) (0.1812) HH Head -0.0588 0.4496 ** 0.0961 0.1558 (0.1275) (0.2112) (0.131) (0.2015) Constant -3.6727 *** -3.5477 *** -1.8845 *** -2.9333 *** (0.5366) (0.6121) (0.5865) (0.744) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 102 Table 25. Probability of Using Financial Instruments on Financial Capabilities Scores (II) Money Transfer E-money Agent Brokerage Product Usage Product Usage House Product Usage Variables in the Coefficient Coefficient Coefficient Equation Financial Product 0.0943 0.1383 *** 0.5716 *** Awareness (0.0591) (0.043) (0.109) Financial Literacy -0.0045 -0.0083 0.0590 Score (0.0433) (0.056) (0.0705) Controlled budgeting 0.0038 ** 0.0013 0.0006 (0.0017) (0.0022) (0.0038) Living within one’s 0.0001 0.0006 0.0075 ** means (0.002) (0.0023) (0.0032) Saving for the 0.0001 0.0039 ** 0.0167 *** unexpected (0.002) (0.0019) (0.0027) Monitoring expenses 0.0025 -0.0012 0.0056 (0.0023) (0.0022) (0.0048) Achievement 0.0013 -0.0001 -0.0014 orientation (0.0018) (0.0014) (0.0025) Planning for old age -0.0023 -0.0037 * 0.0059 * expenses (0.0025) (0.0021) (0.0035) Willingness to learn -0.0078 *** -0.0007 -0.0014 from the environment and improve financial situation (0.0029) (0.0028) (0.0048) Impulsiveness -0.0014 -0.0007 -0.0012 (0.0016) (0.0015) (0.0022) Farsightedness -0.0008 0.0005 -0.0056 (0.0034) (0.0027) (0.0055) Measure and respect 0.0034 0.0000 -0.0052 of financial goals (0.0028) (0.0024) (0.0055) Choosing financial 0.0018 -0.0005 -0.0018 products (0.0019) (0.0015) (0.0022) 103 Money Transfer E-money Agent Brokerage Product Usage Product Usage House Product Usage Variables in the Coefficient Coefficient Coefficient Equation Age 0.0128 ** 0.0207 *** 0.0094 (0.0057) (0.0067) (0.0109) Male 0.6690 *** 0.3808 ** -0.3084 (0.1496) (0.15) (0.2236) No schooling as the baseline Primary and -0.1121 -0.4512 * -0.0771 intermediate (0.2143) (0.2671) (0.2736) Secondary and 0.1174 -0.1967 -0.2595 vocational (0.2533) (0.2931) (0.3227) Tertiary -0.3098 -0.8412 * (0.4007) (0.4915) Read/write in Wolof, -0.0104 0.0123 0.6142 * French or another language (0.1351) (0.2107) (0.3139) HH Head 0.1696 -0.0678 0.3744 (0.1406) (0.179) (0.2395) Constant 0.0085 -2.1273 *** -6.7769 *** (0.6185) (0.7135) (1.0324) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 104 Chapter 4. Consumer Protection Table 26. Probability of Encountering a Financial Conflict by Social and Demographic Factors Financial disputes Variables in the Equation Coefficient Age -0.0025 (0.0044) Male -0.0172 (0.1237) No schooling as the baseline Primary and intermediate -0.0815 (0.1745) Secondary and vocational -0.3828 (0.238) Tertiary -0.4521 (0.3111) Read/write in Wolof, French or another -0.0936 language (0.096) HH Head -0.0404 (0.1287) First quartile as the baseline Second quartile 0.6320 *** (0.1302) Third quartile 0.2973 ** (0.1360) Fourth quartile 0.3853 *** (0.1411) Out of labor force as the baseline Unemployed -0.4273 * (0.2193) Formally employed -0.1076 (0.2068) Informally employed -0.4534 ** (0.1744) Self-employed -0.4571 *** (0.1307) Retired -0.0435 (0.2169) Urban village 0.5321 *** (0.1266) 0 - 1 Media as the baseline 2 Media 0.0198 (0.2738) 3 Media 0.0106 (0.2805) 4 Media -0.1465 (0.2859) 5 – 6 Media 0.2770 105 Financial disputes Variables in the Equation Coefficient (0.2956) HH size 0.0271 ** (0.0108) Stable income -0.3309 *** (0.1211) Save as a child -0.1057 (0.0848) Dakar as the baseline Zigunchor -0.8250 *** (0.3041) Diourbel -0.2124 (0.1611) Saint-Louis -0.8324 *** (0.1867) Tambacounda -0.6622 *** (0.2409) Kaolack -0.1175 (0.2608) Thies -0.3730 ** (0.1826) Louga -0.2878 (0.2172) Fatick 0.3862 ** (0.1559) Kolda -0.0044 (0.2204) Matam 0.4899 *** (0.1848) Kaffine 0.5639 *** (0.155) Kedougou 0.3363 (0.2147) Sedhiou 0.3172 (0.2039) Constant -1.5412 *** (0.4495) Estimates of probit model. Standard error in parentheses *** p<0.01, ** p<0.05, * p<0.1 106