Impact Evaluation of the Introduction of Electronic Tax Filing in Tajikistan Endline Report May 2017 Oyebola Okunogbe (World Bank Group) Victor Pouliquen (Paris School of Economics) Acknowledgements We are grateful for the leadership and dedicated support of Penelope Fidas (Task Team Leader) over the course of this project. We also thank Alisher Isaev, Dmitry Pyatachenko, Emil Abdykalykov, Inomjon Sadulloev, Rustam Karimov, Vazha Nadareishvili, and partners from the Tax Committee of Tajikistan for their invaluable role in implementing the project and collecting data. We appreciate the advice and input we received from Alejandra M. Alcantara, Ana Goicoechea, Asim Khwaja, Christopher D. Miller, Dina Pomeranz, Jennifer Murtazashvili, Liam Wren Lewis, Marc Gurgand, and two anonymous referees. The research for this paper was funded by the Impact Program managed by the World Bank Group (WBG) Trade and Competitiveness Global Practice and the Impact Evaluation to Development Impact Trust Fund (i2i) managed under the WBG Development Impact Evaluation Unit. The findings, interpretations, and conclusions expressed in this paper, and all errors, are entirely ours. They do not necessarily represent the views of the World Bank Group, its Executive Directors or the countries they represent. 2 Abbreviations and Acronyms IFC International Finance Corporation LATE Local Average Treatment Effect WBG World Bank Group 3 Table of Contents Acknowledgements ................................................................................................................................... 2 Abbreviations and Acronyms .................................................................................................................. 3 Executive Summary ................................................................................................................................... 5 1. Introduction and Background......................................................................................................... 6 2. Impact Evaluation Methodology ..................................................................................................... 7 2.1. Research Questions ................................................................................................................... 7 2.2. Impact Evaluation Design and Implementation .................................................................. 7 2.3. Sampling ...................................................................................................................................... 9 3. Data .................................................................................................................................................... 10 3.1. Data Sources ............................................................................................................................. 10 3.2. Firm Characteristics and Balance Checks ........................................................................... 11 4. Empirical Strategy ........................................................................................................................... 12 5. Results on Adoption of Electronic Tax Filing ............................................................................. 12 5.1. Adoption Rates Across Groups.............................................................................................. 12 5.2. Firm Characteristics that Predict E-filing Adoption ......................................................... 14 6. Results on Impact of Electronic Tax Filing ................................................................................. 15 6.1. Impact on Compliance Costs and Interactions with Tax Officials .................................. 16 6.2. Impact on Intermediate Outcomes ...................................................................................... 16 6.3. Impact on Firm Performances and Tax Payment .............................................................. 17 6.4. Impact on other E-technology Adoption ............................................................................. 19 7. Cost-Effectiveness Analysis ........................................................................................................... 19 8. Conclusion and Policy Implications ............................................................................................. 20 Appendix ................................................................................................................................................... 22 4 Executive Summary This project provides novel empirical evidence on the impact of technology on tax compliance costs and tax behavior of firms by examining the adoption and subsequent impact of electronic tax filing (e-filing) on small and medium enterprises in Tajikistan. It is, to the best of our knowledge, the first randomized experiment on this topic. In this context, electronic filing allows taxpayers to submit their tax declarations online instead of in- person at the tax office thereby eliminating the need for time-consuming visits to the tax office and frequent interactions with tax officials (and the potential unofficial behaviors that may arise from these interactions). The study sample of 1498 small and medium enterprises was drawn from firms registered at the tax authority. Firms were randomly assigned to receive two types of interventions designed to encourage e-filing adoption and compared to a control group that did not receive the interventions. The first treatment group received information and training on e-filing, and logistical help to complete all the steps required for e-filing registration. The second group received only information and training on e-filing. The results indicate that the e-filing training coupled with logistical help with registration is highly successful at promoting e-filing adoption as 93 percent of firms in this group adopt e-filing. In contrast, the e-filing training alone does not produce an effect with any significant difference from the control group treatment (63 percent adoption, compared with 59 percent in the control group). This finding that helping firms register for e-filing has such a substantial effect, compared to only informing them of the benefits of e-filing and providing them with in-depth training, suggests that hassle costs may serve as an important barrier in accessing government services. Further, the results indicate that firms with above-median risk of evading taxes (as measured by the risk index developed by the Tax Committee) were less likely to sign up for e-filing. There were no significant differences in e-filing adoption between male-owned and female-owned firms. In addition, this report examines the impact of e-filing on firms that adopt it as a result of the intervention. As expected, e-filing reduces time spent by firms in complying with tax obligations. Firms save about five hours on average every month, about 15 percent of the total amount of time spent on tax-related activities. The analysis reveals that the benefits in terms of time saved by firms more than covered the costs of providing logistical help to register within seven months. Firms that e-file have fewer in-person interactions with tax authorities and are less likely to experience coercion from tax officials on certain measures. No significant impacts were found on the average amount of tax paid by firms but this masks significant differences across firms—e-filing increases the amount of tax paid by firms with above-median risk score and closes the revenue gap between firms with above- median risk and those with below-median risk. Lastly, once firms begin to e-file, they become more likely to adopt other technology such as electronic accounting records, online banking and use of email. Given that these other technologies may increase productivity of the firm, this effect may be a potential channel for long term impact on firm performance. 5 1. Introduction and Background Across the world, different sectors of government are embracing the use of information technology in delivering services and interacting with citizens. While improving service delivery and efficiency is typically a central motivation of these e-government initiatives, increasing compliance is often an important consequence. Technological innovations can provide systems that are difficult for human agents to interfere with and thus reduce the occurrence of unauthorized behavior. In addition, technology systems can make available at low cost a tremendous amount of data that can be used for monitoring compliance behavior. This study contributes to the growing body of evidence on the impact of technology on governance by examining the introduction of electronic tax filing in Tajikistan. Electronic tax filing was introduced in Tajikistan in 2012 as part of a broader reform package of the Central Asia Tax Administration Project. Through this project, the IFC provided support to the Tax Committee of Tajikistan and stakeholders from the business community in crafting a new tax code that went into effect on January 1, 2013. The new code contains a number of reforms aimed at reducing compliance costs for businesses and stimulating business formalization and growth. The Tax Committee had a number of reasons for introducing e-filing. First, it sought to reduce tax compliance costs faced by firms. Most firms have monthly filing obligations for five categories of taxes (social tax, personal income tax, corporate income tax, road users’ tax and value added tax). In the absence of e-filing, firms submit their tax declarations in person at local tax offices with otherwise productive time spent waiting in line for multiple checks and signatures. On average, firms in the study sample (with a median of two employees) report spending 33 hours each month on fulfilling their tax obligations, with about three hours going towards the monthly visits to the tax office. The second goal of e-filing was to reduce the frequency of interactions between taxpayers and tax officials in order to reduce the occurrence of unofficial behaviors that may arise during those interactions. The World Bank Enterprise Survey 2013 reports that 32 percent of firms expect to give gifts in meetings with tax officials and 37 percent expect to give gifts to any public officials to “get things done.'' By making it easier for people to file and pay taxes, and by closing off opportunities for unofficial interactions, the government expects that e-filing will ultimately lead to increased voluntary compliance and thus increased tax revenues. Other motives for introducing e-filing are to improve the availability and quality of tax records by reducing the mistakes made by clerks with large data entry burdens; and improving the efficiency of tax administration by releasing officials from routine work to focus on higher value activities. After its introduction in 2012, adoption of e-filing by firms was slower than expected and only about 30 percent of firms had registered for e-filing at the time this project began. Given the anticipated benefits from adoption, there was significant interest in understanding the constraints to adoption and potential ways of addressing them. Focus group meetings and interviews with business owners as well as Tax Committee officials indicated that firms were not using e-filing for a variety of reasons, including: lack of awareness of e-filing, lack of trust in the reliability of the e-filing system, difficulties 6 in the registration process, lack of computers and internet access, and lastly, some firms simply preferred to deal directly with the same tax inspector on a regular basis rather than e-file. The Tax Committee in partnership with the World Bank Group decided to conduct an impact evaluation to assess the effect of two sets of encouragements designed to promote e-filing adoption among firms: (i) information and training on e-filing to overcome the lack of awareness and trust, and (ii) logistical help with registering for e-filing to address the challenges firms faced in the registration process. Importantly, the logistical support could also serve as a nudge to firms that would otherwise postpone the adoption of e-filing. In parallel, the Tax Committee implemented a number of additional reforms to increase e-filing adoption including eliminating the fees firms initially had to pay for registration and an e-token, conducting information campaigns and providing e-terminals for firms that lacked internet access. 2. Impact Evaluation Methodology 2.1. Research Questions This study evaluates two broad sets of questions. The first set of questions examines the decisions of firms to adopt e-filing: i. What is the impact of providing information and training about e-filing on adoption? ii. What is the additional impact of helping firms to register? iii. What other firm characteristics predict e-filing adoption? The second set of questions examines the impact of e-filing: i. What is the impact of e-filing on firms, particularly their compliance costs, tax behavior and productivity? 2.2. Impact Evaluation Design and Implementation Firms were randomly assigned into two treatment groups and one control group designed to address the identified constraints. In the intensive treatment arm (Group A), firms received an e-filing training session in which they learned about e-filing availability, its benefits, and registration procedures. The training also included an interactive demonstration of the e-filing system. In addition, these firms received logistical support in registering for e-filing: a representative of the implementing partner contacted the firms and helped them complete all the steps required for registration. Firms in the second treatment arm (Group B) received an identical e-filing training session but they did not receive the logistical help for registration. In the control group (Group C), firms did not receive e-filing training. However, to keep constant the delivery format of the treatments, these firms also received a general training on taxation that was not specific to e-filing. Rather, the training included a review of different tax laws and procedures. Due to a requirement by the Tax Committee, this 7 general tax training included one statement about the availability of e-filing on a slide that listed the three modes of filing taxes: “by paper, by mail and electronically.”1 This impact evaluation is a randomized control trial, as this method enables us to verify that any changes observed are due to the interventions offered. Indeed, the random allocation of firms to treatment and control groups ensures that firms in different groups have on average the same characteristics prior to program implementation (and are expected to have equivalent trajectories going forward). So the only difference between the control group and the two treatment groups is the type of program received. The outcomes observed after the program implementation will therefore identify the effect of the program. The training programs and logistical support were delivered by a Dushanbe-based firm with the support of the Tax Committee from October 2014- January 2015. Firms were invited to attend a general training on taxation through phone calls by trained operators. Firms were randomly assigned into the treatment and control groups before the trainings but exactly the same script was used for all firms. Out of 2,004 firms in the study database, 1,722 were contacted to achieve the desired sample size. In total, 1,498 firms (87 percent of those called) attended trainings.2 Trainings were held in either the Tax Committee office or the implementing partner office. On average, trainings lasted for 2 hours in Groups A and B and 1 hour in Group C. A few days after each training, the implementing partner called back all firms in Group A and assisted interested firms in registering for e-filing as follows: an agent from the implementing partner collected the application form and supporting documents required for registration from the firm, submitted them to the Tax Committee for processing and returned to install the software on the firm’s computer and provide an e-token that contains the digital signature of the firm that must be used every time the firm submits a declaration online. Figure 1 below illustrates the impact evaluation design and the program implementation. 1 In addition, firms in this group would have been aware of the existence of e-filing from a reference to it in the invitation materials and some questions in the baseline survey. 2 The Tax Committee organizes events and trainings for firms from time to time, so this program was not unusual. 8 Figure 1: Study Design and Program Implementation Population of all firms in Dushambe Firms registered at Tax Committee 2004 firms randomly selected from the Tax Committee database with stratification on status of the firm (legal/individual entreprise) Random allocation of firms into the different groups With stratification on type of status, rayon and sector of activity Group A Group B Group D (control ) 802 firms selected 400 firms selected 802 firms selected 690 firms (86%) 332 firms (83%) 700 firms (87%) called and invited called and invited called and invited to a training to a training to a training 594 firms (74%) 296 firms (74%) 608 firms (75.8%) trained: trained: trained: - Baseline survey - Baseline survey - Baseline survey - General training on - General training on - General training on taxation taxation taxation -Training on how to -Training on how to register and use E- register and use E- filing filing Follow-up by phone with all the 594 firms to help to register to E- filing 2.3. Sampling The study draws from the universe of firms in Dushanbe that are registered in the Tax Committee database. All legal entities and individual entrepreneurs which are (i) simplified tax regime payers (ii) have been active in the system for at least 2 years (i.e. not new enterprises or liquidated ones) and (iii) are not currently e-filing were eligible for the study. There were 5,218 firms in the Tax Committee database that met these three criteria. 9 A list of 2,004 firms was randomly selected from this overall population with stratification on status of the firm (legal entities or individual enterprises) and rayon (tax district). Based on discussions with the Tax Committee and the implementing partner, this sample size of 2,000 firms was determined as the number of firms that needed to be contacted to obtain the attendance of 1500 firms at a training session. Since the intervention was expected to be more effective on legal entities which are usually bigger firms than individual enterprises, we oversampled legal entities to have 75 percent of legal entities and 25 percent of individual enterprises in the study population. Table 1 below gives the total number of firms and the number selected in each stratum. Table 1: Sampling Strategy Strata Population size Selection size Legal entities, rayon 1 (Shokhmansur) 434 337 Legal entities, rayon 2 (Somoni) 442 333 Legal entities, rayon 3 (Firdausi) 470 353 Legal entities, rayon 4 (Sino) 646 479 Individual Enterprises, rayon 1 (Shokhmansur) 483 114 Individual Enterprises, rayon 2 (Somoni) 244 65 Individual Enterprises, rayon 3 (Firdausi) 1629 176 Individual Enterprises, rayon 4 (Sino) 870 147 Total 5218 2004 3. Data 3.1. Data Sources This study relies on three main sources of data. First, it uses administrative data from the Tax Committee on variables on firm characteristics (risk score, size, ownership, legal status, industry and region) and monthly data on e-filing use, tax declarations and payments, and audits. The two other sources are the baseline survey of firms conducted at the beginning of each training session and the endline survey conducted about one year later. The baseline survey was self- administered (completed on paper forms by firm representatives) with detailed instructions and examples provided by the implementing partner. The baseline survey includes information on firm characteristics and economic behavior, as well as experiences of firms with the tax administration process (such as compliance costs and assessment of taxation and the Tax Committee). The endline survey differed from the baseline in that it was administered in-person by enumerators at the firm's premises. In addition to the information collected in the baseline survey, the endline survey included questions on additional topics such as firm performances (profit, number of employees), tax behaviors (amount and type of tax paid, interactions with tax officials), and tax inspections and audits (and perceived probability of audit). 10 Table 2 below shows survey completion rates at endline for the different treatment arms. It shows that 84 percent of the firms enrolled in the study were successfully surveyed at endline and this rate was similar across control and treatment groups. About 13 percent of the firms liquidated since the study started and attrition rate (refusal, firms that moved to another town, etc.) was very low (2.3 percent). Table 2: Attrition at Endline Survey Mean [SD] Difference between P-values of the test: Control control group and […] Group A= Group A= group Group A Group B N Group B Group B= 0 Survey completed and firm still operating 0.84 0.007 0 1498 0.786 0.932 [0.366] (0.021) (0.026) Survey completed and firm liquidated 0.127 -0.008 -0.023 1498 0.506 0.586 [0.333] (0.019) (0.023) Survey not completed: not available or not found 0.023 0.009 0.023* 1498 0.307 0.226 [0.15] (0.009) (0.014) Survey not completed: moved to another town 0.01 -0.008* 0 1498 0.205 0.11 [0.099] (0.004) (0.007) Survival analysis (excluding those without any information) Still operating 0.869 0.008 0.022 1442 0.564 0.649 [0.338] (0.02) (0.024) Notes: Endline survey data 2015. Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies. ***, **, * indicate significance at 1, 5 and 10%. Finally, the study also relies on extensive interviews and focus groups with tax inspectors and firms at different stages of the project to understand potential channels of impact and interpret findings. 3.2. Firm Characteristics and Balance Checks On average, firms in the study sample have 3.6 employees and are predominantly in the trade (40 percent) and services (43 percent) sectors. Sixty-eight percent of firms have internet access while less than 40 percent use emails for business communication and less than 25 percent use electronic program accounting. Firms visited the Tax Committee office, on average, slightly more than one time per month. Appendix Table 1 shows summary statistics for variables from the administrative data and the baseline survey. These tables also show that randomization achieved balance across the different treatment groups for most variables. An important firm characteristic for the analysis is the risk score. The Tax Committee assigns a risk score to firms based on a proprietary algorithm that incorporates observed firm characteristics and results of prior audits on other firms. We use this score as a measure of a firm's likelihood of evading taxes. However, the Tax Authority only calculates this score for legal entities (75 percent of the sample) so it is unavailable for individual entities.3 3 Since randomization was stratified on legal status, this characteristic is perfectly balanced among the different treatment groups. 11 4. Empirical Strategy We use Equation (1) below to examine the relative impact of the two treatments in promoting e-filing adoption, as well as the firm characteristics that are associated with adoption: = 0 + 1 , + 2 , + + (1) Where is an indicator variable for whether a firm i registers for and uses e-filing, , and , are indicators for the training with logistical help (Group A) and the training alone treatments (Group B) respectively. 1 and 2 estimate the causal effect of receiving the two treatments respectively on adoption and the difference between them, 1 − 2 , estimates the differential impact of the provision of logistical support in addition to the training. is a vector of strata dummies—legal status, sector of activity and rayon. To examine firm characteristics that are associated with adoption, we include a range of firm level variables in Equation (1). To assess the impact of e-filing, we use Equation (1) above, and replace with , the outcome variables of interest, to estimate the effect of being assigned to either of the two treatment groups (the intent-to-treat estimate). We control for baseline measures of variables when available. In addition, we use Equation (2) below to estimate the effect of e-filing on firms that adopted it because of the program by using assignment to only Group A (the intensive treatment arm) as an instrumental variable (IV) for adopting e-filing, the Local Average Treatment Effect (LATE), since assignment to Group B has no effect on e-filing adoption. As such, in all IV estimates, the effective control group consists of both Groups B and C. ̂ + + = 0 + (2) 5. Results on Adoption of Electronic Tax Filing 5.1. Adoption Rates Across Groups By December 2015, about one year after program implementation, 93 percent of firms in Group A had registered for e-filing and used it at least once. The combination of training with logistical support with registration was successful at increasing e-filing adoption by 34 percentage points relative to the control group (Table 3). On the other hand, there was no significant difference between the adoption rate for firms in Group B (63 percent) and those in Group C (59 percent), indicating that e-filing training and demonstration did not promote e-filing adoption compared to brief mentions of e-filing that firms in the control group were exposed to. 12 Table 3: Impact on E-filing Adoption Mean [SD] Difference between P-values of the test: Control control group and […] Group A= Group A= group Group A Group B N Group B Group B= 0 PANEL A: Administrative data from TC (Aug 2014-Dec 2015) Used E-filing 0.59 0.337*** 0.038 1498 0.000*** 0.000*** [0.492] (0.023) (0.033) Used E-filing conditional on survival 0.641 0.34*** 0.042 1275 0.000*** 0.000*** [0.48] (0.022) (0.035) Still using e-filing 0.548 0.238*** 0.046 1498 0.000*** 0.000*** [0.498] (0.027) (0.034) PANEL B: Endline survey data (Feb 2016) Firm used electronic filing to submit tax reports in 2015 0.564 0.439*** 0.038 1263 0.000*** 0.000*** [0.496] (0.022) (0.037) Found out about e-filing during ISYS training 0.796 0.202*** 0.054* 1263 0.000*** 0.000*** [0.403] (0.018) (0.029) Found out about e-filing from business network 0.17 -0.169*** -0.047* 1263 0.000*** 0.000*** [0.376] (0.017) (0.027) Found out about e-filing from another source (during 0.033 -0.033*** -0.007 1263 0.011** 0.000*** another training, from tax Committee publication) [0.18] (0.008) (0.013) Notes: Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies. ***, **, * indicate significance at 1, 5 and 10%. The large difference between the impact of the treatments in Groups A and B indicates that the logistical help with registration helped to overcome an important constraint to e-filing registration. This may be due to a number of reasons including helping firms navigate a complex registration process, or helping them overcome procrastination. One additional possibility is that firms in Group A may have felt coercion to register for e-filing due to the follow up support offered by the implementing firm. The lack of a significant difference between Groups B and C could be because neither of the two treatments had any impact on firms, or because the limited exposure that control group firms had to information on e-filing had effects as strong as the e-filing training. While there is currently no available data on a randomly selected pure control group to investigate these two possibilities, we can compare the study treatment groups to two groups of firms that are not included in the study: first, the firms that were not contacted at all because the required number of firms was reached4, and second, firms that were contacted but declined to participate in the training5. In both groups, the e- filing adoption rate is about half of the control group at 25 percent and 24 percent respectively suggesting that the brief mentions of the availability of e-filing in the control group had a significant effect (that was not different from the effect of a detailed training on e-filing procedures and 4 This group is not random because the implementing firm may have selected to call certain types of firms before others. 5 This group is also not random because firms with particular characteristics may have declined to participate. 13 demonstration). Indeed, 80 percent of firms in the control group indicated that they found out about e-filing from the general tax training session they attended (Table 3). 5.2. Firm Characteristics that Predict E-filing Adoption This section examines firm characteristics that are associated with e-filing with particular attention to the risk score of firms. Table 4 demonstrates that firms with higher risk score (the proxy for greater likelihood of evasion) are significantly less likely to adopt e-filing.6 One standard deviation increase in the risk score is associated with a 6.5 percentage point decrease in a firm’s likelihood of e-filing. This result is consistent with higher risk firms preferring to deal directly with individual tax inspectors with whom they have an ongoing relationship and are able to collude to pay less taxes. In addition, firms that report extortion by tax officials to pay additional informal payments during tax submissions during the baseline survey are more likely to adopt e-filing (Table 4). This result is statistically significant for legal entities and is consistent with these firms seeking to avoid interactions with tax collectors that lead to extortion. Lastly, neither the gender of the owner nor the firm's level of comfort with technology (measured by an index of whether or not the firm has high speed internet, uses email for business communications, and maintains accounting records electronically) is significantly associated with the likelihood of e- filing adoption. 6 The first and third columns include the risk scores of firms. Since this measure is only available for legal entities, the first column imputes the average value of the variable to all individual enterprises. For comparison, the second and fourth columns show the relationship with other variables in the absence of the risk score. 14 Table 4: Determinants of E-filing Adoption (1) (2) (3) (4) Dependent variable: Firm used E-Filing All Sample Only Legal entities Treatment variables Group A (Training and logistical help) 0.338*** 0.336*** 0.362*** 0.361*** (0.023) (0.023) (0.027) (0.027) Group B (Training alone) 0.051 0.047 0.039 0.034 (0.033) (0.033) (0.039) (0.040) Administrative data (baseline) Female owner -0.013 -0.012 -0.015 -0.013 (0.040) (0.040) (0.054) (0.054) Number of employees 0.002 0.003 0.007** 0.008** (0.002) (0.002) (0.003) (0.003) Standardized risk profile score in 2014 λ -0.064*** -0.060*** (0.013) (0.012) Survey data (baseline) Share of technological practices implemented т 0.030 0.018 0.038 0.024 (0.029) (0.029) (0.033) (0.033) Number of times any employees visited tax authority 0.016 0.021* 0.016 0.021* office in Jan-Jun 2014 (0.011) (0.011) (0.011) (0.012) Amount of time spent on typical visit to tax authority -0.010 -0.013* -0.010 -0.014* (hours) (0.008) (0.008) (0.008) (0.008) Time spent by employees in calculating taxes and 0.005 0.005 0.006 0.006 completing tax forms during a typical month (hours) (0.004) (0.004) (0.004) (0.004) Number of times tax inspectors visited the company in Jan- -0.018* -0.018 -0.035*** -0.034*** Jun 2014 (0.011) (0.011) (0.013) (0.013) Score (out of 3) of perception of Tax Committee т -0.003 -0.004 0.011 0.011 (0.026) (0.026) (0.032) (0.031) Score (out of 4) of perception of taxation т -0.008 -0.006 0.004 0.007 (0.018) (0.018) (0.021) (0.020) Ever used e-filing (with another company) 0.010 0.007 -0.007 -0.010 (0.034) (0.034) (0.035) (0.035) Index of extortion from tax officials т 0.068 0.078 0.136* 0.147** (0.060) (0.060) (0.070) (0.069) Observations 1,483 1,483 1,086 1,086 R-squared 0.222 0.206 0.223 0.205 Mean Dep Var in control 0.222 0.206 0.224 0.206 Notes: Robust standard errors in parentheses. Omitted group are firms in the control group that received a general tax training. Regressions include fixed effects for strata. λ: for individual entities there are no risk profile scores so missing values were replaced by the mean of the variable. т: see appendix for a description of the construction of all indexes. ***, ** and * denote significance at the 1, 5 and 10 percent levels, respectively. 6. Results on Impact of Electronic Tax Filing This section examines the impact of e-filing on direct outcomes (interactions with tax officials and compliance costs), on intermediate outcomes (attitudes toward Tax Committee, informal behaviors 15 and actual and perceived level of monitoring), and on final outcomes (tax behavior and economic performance). 6.1. Impact on Compliance Costs and Interactions with Tax Officials Table 5 presents estimates of program impact (Columns 1-6) on interactions with tax officials and compliance costs and LATE estimates of the impact of e-filing adoption on those who adopt it because of the program (Column 7). Firms that e-file as a result of the program visit the tax authority 1.4 fewer times each month. In all, e-filing reduces time spent by firms on tax-related activities by 4.7 hours a month. This effect is concentrated in activities that involve visiting the Tax Committee office (submitting tax returns and obtaining the reconciliation act). As such, e-filing does fulfill the intended goal of reducing tax compliance costs of firms. However, the time savings is a relatively modest share of the overall 33 hours firms report spending on tax-related activities. Table 5: Program Impact on Tax Compliance Costs and Interactions with Tax Officials (1) (2) (3) (4) (5) (6) (7) Mean [SD] Difference between P-values of the test: (IV) Control control group and Group A= Group A= Impact of group Group A Group B N Group B Group B= 0 E-filing Average number of visits per month to tax 0.8 -0.5*** 0.000 1,263 0.000*** 0.000*** -1.4*** authority office in 2015 [0.5] (0.000) (0.000) [0.1] Total time spent on all tax-related activities 33.6 -1.7*** -0.4 1,252 0.006*** 0.000*** -4.7*** by month in 2015 (in hours) [6.3] (0.4) (0.5) [1.1] By specific tasks: Time spent daily by month to collate 21.8 0.000 0.1 1,252 0.588 0.783 0 records (total time monthly) (in hours) [2.4] (0.1) (0.2) [0.4] Submitting the tax returns (including time 1.1 -0.8*** -0.1* 1,252 0.000*** 0.000*** -2.4*** to go and return to the tax office) (in hours) [1] (0.000) (0.1) [0.1] Getting the reconciliation act (in hours) 0.7 -0.3*** -0.1** 1,252 0.000*** 0.000*** -0.9*** [0.6] (0.000) (0.000) [0.1] Prepare all the primary documents used for 9.5 -0.6 -0.3 1,252 0.618 0.279 -1.4 tax purposes (in hours) [5.6] (0.4) (0.4) [1] Notes: Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies and baseline value of the outcome when available. Column 7: IV regressions with e-filing instrumented by Group A treatment dummies, controling for strata dummies and baseline value of the outcome when available. ***, **, * indicate significance at 1, 5 and 10%. 6.2. Impact on Intermediate Outcomes Table 6 presents the impact on intermediate outcomes. Consistent with the reduction in visits to the tax office to submit declarations in person, e-filing also reduces the frequency of firms being required by tax officials to increase their declarations at the point of submission, which from focus group discussions was a major source of unofficial payments. Column 7 indicates that over the course of the one-year study period, firms that e-file as a result of the program were 15 percentage points less likely to have been required to increase their declaration. One potential concern is that if tax officials are no longer able to influence firms' declarations at the point of submission, they may substitute with increased audits and inspections at the firms' premises. We find no evidence that firms that adopt e- 16 filing due to the program are audited more or less often than firms that do not e-file, and e-filing firms do not consider themselves to be at a greater likelihood of being audited. On the other hand, we find no significant impact on indexes of attitudes towards taxation and the tax authority and reported extortion. Table 6: Program Impact on Intermediate Outcomes (1) (2) (3) (4) (5) (6) (7) Mean [SD] Difference between P-values of the test:(IV) Control control group and […] Group A= Group A= Impact of group Group A Group B N Group B Group B= 0 E-filing Attitudes toward Tax Authority and Taxation: Confidence in Tax Authority (1-4 scale, 4 means a 3.037 0.034 0.004 1,263 0.654 0.805 0.096 great deal of confidence) [0.775] (0.054) (0.066) [0.146] Summary index of (positive) evaluation of tax 0 0.033 0.002 1,263 0.429 0.538 0.097 Т authority characteristics [0.483] (0.032) (0.039) [0.088] Summary index of level of satisfaction with different 0 -0.014 0.032 1,263 0.124 0.306 -0.072 aspects of taxation Т [0.377] (0.024) (0.03) [0.066] Extortion from Tax Official ("other firms"): Index of extortion from tax officials т 0.247 0.016 -0.008 1,263 0.129 0.245 0.055 [0.195] (0.013) (0.015) [0.035] Tax Harassment: In 2015, a Tax official required the firm to increase 0.566 -0.059* -0.027 1,263 0.428 0.18 -0.148* the amount of tax declaration at least once. [0.496] (0.032) (0.039) [0.087] In 2015, number of times a Tax official required the 0.9 -0.137** -0.086 1,263 0.477 0.055* -0.325** firm to increase the amount of tax declaration [0.937] (0.057) (0.071) [0.157] Actual and Perceived Monitoring: The firm was audited in 2015 (Survey data) 0.076 0.016 0.006 1,263 0.667 0.669 0.041 [0.266] (0.018) (0.022) [0.049] Thinks that the likelihood of an audit in the next 6 0.29 -0.015 -0.041 1,263 0.468 0.502 -0.007 months is very likely [0.454] (0.029) (0.035) [0.078] Notes: Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies and baseline value of the outcome when available. Column 7: IV regressions with e-filing instrumented by Group A treatment dummies, controling for strata dummies and baseline value of the outcome when available. Т: see appendix for a description of the construction of all indexes. ***, **, * indicate significance at 1, 5 and 10%. 6.3. Impact on Firm Performances and Tax Payment As detailed in Table 7, on average, we find no significant impacts of e-filing on firm tax payments, tax declaration and business performance (number of employees, turnover, and profit). Standard errors are however large and we cannot reject small positive or negative impacts. We use administrative data to measure tax declarations and payments as the sum of the payments over the course of the one-year study period.7 We also use survey on taxes paid in two focal months of the year, June and December and obtain similar results. 7 To allow that there may be learning effects, we also examined the sum of payments made in the last 6 months and in the last 3 months of 2015 but the results are similar 17 Table 7: Program Impact on Tax Behavior and Firm Performances (1) (2) (3) (4) (5) (6) (7) Mean [SD] Difference between P-values of the test: Control control group and […] Group A= Group A= (IV) Impact group Group A Group B N Group B Group B= 0 of E-filing PANEL A: Administrative data from Tax Committee: α Amount of tax paid in 2015 29,067 2,000 296 1,498 0.658 0.799 5,857 [57,546] (3,116) (3,814) [8,735] α Amount of tax declared in 2015 25,781 1,337 249 1,498 0.748 0.881 3,867 [51,367] (2,746) (3,361) [7,711] PANEL B: Survey Data (Feb 2016): Amount of tax paid in June 2015 α 2,431 -128 464 1,263 0.196 0.425 -822 [6,110] (369) (454) [1,015] Amount of tax paid in Dec 2015α 2,431 -137 -272 1,263 0.785 0.849 -147 [6,794] (399) (490) [1,089] Average number of employees in 3.205 -0.032 0.135 1,263 0.503 0.792 -0.225 2015 including respondent α [3.488] (0.202) (0.248) [0.553] Summary index of profit and 0 -0.026 0.021 1,263 0.445 0.728 -0.097 turnover in Dec and June 2015α [0.836] (0.05) (0.061) [0.137] Notes: Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies. Column 7: IV regressions with e-filing instrumented by Group A treatment dummies, controling for strata dummies. α: trimmed at P99. ***, **, * indicate significance at 1, 5 and 10%. One potential mechanism by which e-filing may affect outcomes is by disrupting collusion between evading firms and tax officials. As such, we examine whether e-filing has different impacts by baseline values of firms’ risk of evasion. We find evidence that firms with above-median risk score at baseline increase the amount of taxes declared and paid, consistent with e-filing disrupting collusion between firms and tax officials. In particular, we find that e-filing closes the tax revenue gap between firms with above-median risk score and those with below-median risk score, thereby promoting horizontal equity (Figure 2). Figure 2: E-filing Closes Revenue Gap Between High-Risk and Low-Risk Firms $5,678 $5,167 $4,640 $3,383 High risk Low risk Group B & C Group A 18 6.4. Impact on other E-technology Adoption A final result that may be relevant for the long term performance of the firm is that firms that e-file become much more likely to adopt other electronic technology such as having internet on premises, using email for business communication, maintaining accounting and tax records in electronic form and using online banking to pay taxes (Table 8). As such, it appears that e-filing serves as a gateway for firms to using other technologies that could potentially enhance firm productivity. Table 8: Program Impact: E-Technology Adoption (1) (2) (3) (4) (5) (6) (7) Mean [SD] Difference between P-values of the test: Control control group and […] Group A= Group A= (IV) Impact group Group A Group B N Group B Group B= 0 of E-filing Director or accountant ever used e-filing 0.299 0.367*** 0.026 890 0.000*** 0.000*** 0.651*** for another company [0.458] (0.036) (0.042) [0.049] Firm used on-line banking system to pay 0.387 0.361*** 0.022 1263 0.000*** 0.000*** 0.83*** taxes in 2015 [0.488] (0.022) (0.027) [0.023] Organization has internet on premises 0.53 0.148*** -0.036 1263 0.000*** 0.000*** 0.375*** [0.5] (0.031) (0.038) [0.064] Organization uses emails for business 0.207 0.141*** -0.005 1263 0.000*** 0.000*** 0.334*** communication [0.406] (0.028) (0.034) [0.057] Maintain accounting and tax records in 0.652 0.119*** 0.025 1263 0.000*** 0.000*** 0.261*** electronic form using a specialized [0.477] (0.017) (0.021) [0.035] program Notes: Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies and baseline value of the outcome when available. Column 7: IV regressions with e-filing instrumented by Group A treatment dummies, controling for strata dummies and baseline value of the outcome when available. ***, **, * indicate significance at 1, 5 and 10%. 7. Cost-Effectiveness Analysis Administering the program (organizing the trainings, inviting firms, and providing logistical support for e-filing registration to Group A firms) cost $25 per firm in Group A, compared to $17 per firm in Group B and $12 per firm in Group C (Table 9). Given the 34 percentage point difference in take-up between Group A and the control group, and the $13 per firm difference in program costs, the cost per additional e-filing adoption in Group A relative to the control group is $37. The lack of any significant difference between adoption in Group B and the control group indicates that the relevant aspect of Group A treatment was the logistical help with registration. The difference in program costs per firm between Group A and Group B (cost of logistical support for registration) is $8 per firm. Given the 30 percentage point difference between Group A and Group B, the cost per additional e-filing adoption in Group A relative to Group B is $27. 19 Table 9: Cost-Effectiveness Analysis Control Group Group A Group B Program implementation: Number of firms 608 594 296 Number of training conducted 12 36 16 Program costs (in USD): Training organization (specific by group) 7,573 10,167 4,931 Logistical help to register to e-filing (group A only) 0 4,696 0 Total program costs 7,573 14,863 4,931 Cost effectiveness analysis : Cost per firm included in treatment (in USD) 12 25 17 Additional cost with respect to Groups B and C (in USD) 13 Program impact on e-filing adoption (from table 3) 34% Cost per additional e-filing adoption (in USD) 37 Program impact on compliance costs (in hours saved) (from table 6) -4.7 α Amount of money saved monthly by firms (in USD) 5.5 Number of months for private benefits in term of time 7 saved to exceed program costs Note: Exchange rate from Oanda.com on January 1st 2016: USD 1 = TJS 6.99. α: assuming the wage of the person in charge of tax declaration is in average USD 178 per month or USD 1.11 per hour. We can compare the program costs to the benefits that accrue to firms from the program.8 Table 5 estimates that firms save 4.7 hours each month that would have otherwise been spent on tax-related activities. From survey data, the average wage of the person in charge of tax declaration in firms is $178 per month (or $1.11 per hour), creating an estimated $5.5 savings by firms each month. As such, it would take 5 to 7 months for private benefits in terms of time saved to exceed program costs. Although firms may not necessarily be willing to pay the full costs of the program,9 these results provide guidance for a social planner on the types of interventions that may be considered in promoting e-filing adoption. 8. Conclusion and Policy Implications The introduction of electronic tax filing in Tajikistan presents an important opportunity to improve service delivery, reduce tax compliance costs of firms and disrupt avenues for unofficial behavior. However, an important determinant of the benefits to be realized is the adoption decision of intended users. By offering two sets of incentives, e-filing training and logistical help with registration versus e-filing training alone, we show that enabling firms to overcome hurdles to registration by helping them register significantly increases the likelihood that they use e-filing. This finding reflects the 8 Current data limitations prevent us from calculating other potential benefits of the program such as savings in tax administration costs. In addition, from the government's perspective, we detect no significant average effects on tax revenue although any revenue impact would be a transfer from firms to the government. 9 E-filing adoption remained quite low when firms had to pay $40 to register and obtain a token 20 important role that hassle costs and procrastination play in the voluntary take up of different government programs and suggests that the Tax Committee may increase e-filing adoption by simplifying the process of registration or by offering a small nudge to register. In many countries, firms do not need to complete a separate in-person registration process or obtain an e-token in order to e-file and can simply begin to submit their declarations online. Given the lack of significant difference between Groups B and C, it also appears that firms do not require significant training from the Tax Committee to learn how to use the e-filing system. A second major result with policy implications is that certain firm characteristics are associated with e-filing adoption. In particular, firms that report extortion from tax officials during in-person submission of tax declarations are more likely to e-file. On the other hand, firms with a higher risk of evasion, that are likely to benefit from colluding with tax officials are less likely to adopt e-filing and the intensive treatment arm, Group A, where over 90 percent of firms began to e-file was able to attract more risky firms to begin to e-file. While this may seem to suggest making e-filing mandatory for all firms, it is important to consider that experiences from other countries indicate that forcing firms to e-file may lead to adverse consequences such as increased compliance costs for firms that do not have the capacity to do so.10 Lastly, the results show that although e-filing reduces the amount of time firms spent on tax-related activities and reduces tax harassment, we find no significant impacts on firm productivity or tax payment for firms on average. However, e-filing appears to have multiplier effects by encouraging firms to use other electronic technology in their businesses that may affect their productivity in the long run. 10 See Yılmaz, Fatih and Jacqueline Coolidge. “Can E-Filing Reduce Tax Compliance Costs in Developing Countries?'' World Bank Policy Research Working Paper 6647, October 2013. 21 Appendix Appendix 1: Construction of Indices Index of technological use: Share of technological practices implemented among the following practices: "has high speed internet on premises," "uses emails for business communication," "maintain accounting and tax records electronically." Index of extortion (at baseline and at endline): This index is the share of positive answers to the following questions: “Firm says firms often or always have to give bribes,” “Reason given for why some firms give bribes is that inspector insists on higher payments to fulfill his revenue plan” and “Reason given for why some firms give bribes is that inspector threatens firms with higher taxes and penalties.” Score (out of 3) of perception of Tax Committee: Number of Tax committee characteristics that are considered as "good" or "very good" by the respondent. The 3 characteristics are the following: "Professionalism and competency of tax officials"; "Readiness to help" and "Fairness and honesty. Score (out of 4) of perception of taxation: Number of aspects of taxation for which the respondent said he/she is "satisfied" of "very satisfied." The 4 characteristics are the following: "Amount of time required for tax accounting," "Clarity of tax legislation," "Level of tax control," and "Level of tax rates." Summary index of (positive) evaluation of tax authority characteristics: The characteristics are the following: Professionalism and competency of tax officials; Readiness to help; Fairness and honesty and Availability of useful explanations of tax laws. The index was built as follows: each of characteristics was graded on a 1 to 4 scale by respondents, then we standardized scores for each characteristic using the control group standard deviation and mean. Finally, we took the average of the standardized score. Summary index of level of satisfaction with different aspects of taxation: The characteristics are the following: Amount of time required for tax accounting; Number of taxes and fees; Clarity of tax legislation; Level of tax control; Level of tax rates; Frequency of submission of tax reports. The index was built following same steps as for the previous index. 22 Table A1: Descriptive Statistics and Balance Checks on Study Population Mean [SD] Difference between P-values of the test: Control control group and […] Group A= Group A= group Group A Group B N Group B Group B= 0 PANEL A: Administrative data from Tax Committee (2014) β Legal entities 0.734 - - 1,498 - - [0.442] β Sector of activity is Trade 0.413 - - 1,498 - - [0.493] Female owner 0.072 0.027 0.012 1,498 0.474 0.258 [0.259] (0.016) (0.019) Number of employees 3.53 0.159 0.045 1,498 0.833 0.967 [7.592] (0.608) (0.346) λ Risk profile score in 2014 62.1 1 2.8 1,067 0.433 0.475 [28.7] (1.8) (2.3) PANEL B: Baseline Survey Data (2014) Share of technological practices implemented т 0.547 0.016 -0.023 1,498 0.159 0.367 [0.432] (0.023) (0.028) Number of times any employees visited tax 6.373 0.136** 0.02 1,498 0.095* 0.066* authority office in Jan-Jun 2014 [0.978] (0.061) (0.066) Average time spent monthly on visits to tax 2.999 0.128 0.265*** 1,498 0.206 0.024** authority (hours) [1.389] (0.088) (0.099) Time spent in calculating taxes and completing tax 3.045 0.154 0.2 1,483 0.825 0.427 forms during a typical month (hours) [2.484] (0.138) (0.203) Number of times tax inspectors visited the 1.334 -0.032 -0.016 1,498 0.808 0.861 company in Jan-Jun 2014 [0.989] (0.059) (0.063) Score (out of 3) of perception of Tax Committee т 2.819 0.015 0.002 1,498 0.682 0.84 [0.463] (0.027) (0.032) Score (out of 4) of perception of taxation т 3.663 0.066* -0.016 1,498 0.092* 0.134 [0.667] (0.039) (0.047) Ever used e-filing (with another company) 0.127 0.000 0.04 1,498 0.111 0.23 [0.333] (0.019) (0.025) т Index of extortion from tax officials 0.12 -0.014 -0.005 1,498 0.444 0.372 [0.183] (0.01) (0.012) Notes: Column 1: Standard deviations presented in brackets. Columns 2-3: coefficients and standard errors (in parentheses) from an OLS regression of the firm owner/firm characteristic on treatment dummies, controlling for strata dummies. β: variables used for stratification. λ: Risk profile scores are only calculated for legal entities. Т: see appendix for a description of the construction of all indexes. ***, **, * indicate significance at 1, 5 and 10%. 23