SOCIAL PROTECTION & JOBS DISCUSSION PAPER No. 1932 | MAY 2019 What Employers Actually Want Skills in demand in online job vacancies in Ukraine Noël Muller and Abla Safir © 2019 International Bank for Reconstruction and Development / The World Bank 1818 H Street NW Washington DC 20433 Telephone: +1 (202) 473 1000 Internet: www.worldbank.org This work is a product of the staff of The World Bank with external contributions. 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. RIGHTS AND PERMISSIONS The material in this work is subject to copyright. Because The World Bank encourages dissemination of its knowledge, this work may be reproduced, in whole or in part, for noncommercial purposes as long as full attribution to this work is given. Any queries on rights and licenses, including subsidiary rights, should be addressed to World Bank Publications, The World Bank Group, 1818 H Street NW, Washington, DC 20433, USA; fax: +1 (202) 522 2625; e-mail: pubrights@worldbank.org. Abstract retro geometric background: © iStock.com/marigold_88 Project 41595 Abstract We explore online job vacancies from a Ukrainian website to assess the skills that employers look for among their new hires. We assess the demand for cognitive, socioemotional, and technical skills across a range of medium- and high-skilled occupations. We find that employers highly demand all three skills categories, much more than any education level. Most occupations demand a variety of different socioemotional skills while the demand for cognitive and technical skills focuses on one or two skills. Besides, cognitive and socioemotional skills appear as complementary: They are demanded similarly for a given occupation. Overall, online job vacancies are an informative complement to traditional sources to assess skills in demand. Keywords: Ukraine, web scraping, online job vacancies, job requirements, cognitive skills, socioemotional skills, technical skills, education, work experience, private job website. JEL codes: J23, J24, J63. 2 Acknowledgements The analysis was an input into the World Bank Advisory Services and Analytics (ASA) task supporting the Ukraine’s State Employment Service. The ASA benefited from funding from the Jobs Umbrella Trust Fund, which is supported by the Department for International Development/UK AID, and the Governments of Norway, Germany, Austria, the Austrian Development Agency, and the Swedish International Development Cooperation Agency. We are grateful to Ximena Del Carpio and Olga Kupets for initiating the task, for leading the data collection and the preliminary data analysis, and for their constant enthusiastic support. We benefited from conversations with several colleagues including Wendy Cunningham, Andrew Mason, Cem Mete, Harry Moroz, Katerina Petrina, Josefina Posadas, Mauro Testaverde, and Hernan Winkler. Finally, the study was possible thanks to the commitment and meticulousness of several research assistants at various stages of the study: Mykhailo Babii, Yanina Domenella, Anastasiya Ivanova, Alina Osadcha, Elena Sidorenko, Illya Spas, and Daria Tykhonova. 3 Table of contents 1. Motivation ......................................................................................................................... 6 1.1. Identifying employers’ demand for skills matters for firms and aspiring workers .... 6 1.2. Traditional sources of information do not capture well employers’ demand for skills 6 2. New, detailed data to understand employers’ demand for skills in Ukraine ................... 8 3. Data collection and description ......................................................................................... 9 3.1. Web scraping and sample .......................................................................................... 9 3.2. The online job website HeadHunter and its representativeness .............................. 9 3.3. Content of job postings ............................................................................................ 12 3.4. Definition and categories of skills ............................................................................ 13 4. Main findings ................................................................................................................... 15 4.1. Virtually all employers list skills requirements while education requirements are much less frequent .............................................................................................................. 15 4.2. A wide range of socioemotional skills are in demand for all occupations............... 18 4.3. Cognitive skills requirements focus on communication, foreign languages, and other cognitive skills that are demanded differently across occupations.................................... 23 4.4. In a given occupation, cognitive and socioemotional skills appear as complementary: they are demanded similarly............................................................................................... 26 4.5. Requirements for technical skills vary across occupations but most occupations demand some information and technology skills ............................................................... 28 5. Conclusion ....................................................................................................................... 32 Appendix A. Web scraping of job vacancies ........................................................................... 37 4 Appendix B. Comparing jobs advertised in HeadHunter and the public online job website, Trug.gov.ua ............................................................................................................................. 40 Appendix C. Definitions of skills .............................................................................................. 46 Appendix D. Top-16 occupations in HeadHunter’s vacancies, March 2015........................... 51 5 1. Motivation 1.1. Identifying employers’ demand for skills matters for firms and aspiring workers Understanding what skills employers look for in their future employees can help building policies for a more productive workforce, more efficient firms, and a more prosperous society. Workers with better skills — the attributes they use to successfully handle a range of tasks or situations — can perform their jobs more efficiently, use new technology better, and innovate. 2 If workers’ skills match their employers’ demand, they become better at their job, firms’ performance increases and firms move up the value chains, which would allow to increase the productivity of the Ukrainian economy and the country’s prosperity. At the same time, understanding what employers look for is also important for current students and jobseekers in Ukraine to make decisions on education and training. For youth, deciding on which studies and career to pursue can be daunting. Some know from an early age which profession they want. Others have a particular interest in fields of studies such as science, history, or the arts. Many others wonder what would be best for them. To help the latter make a decision, it might be useful to have access to information such as: what are the daily tasks of a given occupation? How rewarding are occupations? What kind of skills, education, and experience are needed to access a given job? Older jobseekers, who passed studying age and are looking for retraining opportunities, wonder the same. A number of high-income countries provide public career websites gathering that kind of information. In countries where that kind of information is not available, such as Ukraine, students and jobseekers can only count on the opinions of their circles or their own views. 1.2. Traditional sources of information do not capture well employers’ demand for skills Employer surveys can give incomplete or biased information about skills in demand. The sampling of an employer survey follows a clear protocol to ensure it is representative of firms within an industry or a country, for example. However, the sampling frames for employer 2 Arias and others (2014). 6 surveys are based on firm registries that are often outdated, and employer surveys often have high non-response rates. Combined, these two issues likely distort the representativeness of firm surveys. For example, the World Bank’s 2014 Ukraine STEP Employer Survey and the 2013 Ukraine Enterprise Survey have non-response rates of 50 and 35 percent, respectively. 3 Moreover, once conducted, surveys often miss two dimensions of information: 1) actual, rather than declared, information: Employers could, for instance, declare they are looking for workers with certain skills because a survey asked them about these skills but the actual skills they advertise may be different; 2) detailed information: Surveys are time-limited and may not allow collecting all desired detailed data (including on skills) because it is too time consuming. In the case of Ukraine, key information on the labor market and on skills in demand is missing. Existing labor-market information includes wage data from official records, household surveys featuring self-reported living standards and employment status, and employer surveys featuring self-reported firms’ practices and constraints. There are no regular employer surveys that cover the demand for skills in Ukraine. There are some existing ad-hoc national employer surveys on demanded skills but only for a limited number of industries. For example, the World Bank’s 2014 STEP Employer Survey, which collected detailed information on employers’ demand for skills among their current employees and future hires, only covered four sectors, and thus a limited fraction of employment and 3 For information on the 2014 STEP Employer Survey, see Del Carpio, Kupets, and Muller (2017). For information on the 2013 Enterprise Survey, see the Ukraine Implementation Report at: http://microdata.worldbank.org/index.php/catalog/1986. 7 economic activity. 4 As for household surveys, they rarely include measures of respondents’ skills and, when they do, they only give a partial view of skills in demand. 5 When collected, existing official records of job vacancies are little detailed in Ukraine. At the time of writing, the State Employment Service regularly collected data on job vacancies published on its website, Trud.gov.ua (Trud hereafter), but the State Employment Service did not analyze the content of job descriptions and job requirements. The State Employment Service only collected the level of the wage offers and, when compiling the data, only showed the breakdown of the numbers of job vacancies by location and industry. Besides, Trud captures a subset of employers’ demand that is typically focused on low-skilled jobs. Indeed, even though they are required to, many firms do not even advertise job vacancies to the State Employment Service because jobseekers using public employment services typically have low skills. 6 2. New, detailed data to understand employers’ demand for skills in Ukraine The main objective of this paper is to introduce online job vacancies as a source to measure employers’ demand for skills in Ukraine. In 2015, we used web scraping, a technique to extract data from websites, to collect job vacancies from HeadHunter Ukraine (HeadHunter hereafter). HeadHunter is one of the most popular private job websites in the country, with the major advantage that most advertised vacancies provide detailed information on the required skills. This paper analyzes the content of a dataset containing more than 2,500 of 4 For details on the World Bank’s 2014 Ukraine STEP Employer Survey, see Del Carpio, Kupets, and Muller (2017). The four sectors, picked for their strong economic and employment potential, are: agriculture, food processing, information technology, and renewable energy. 5 If it includes individuals’ measures of skills, household survey data can tell which skills correlate with higher probability of employment and higher wages, with all other measured characteristics constant, but not if these outcomes are the result of matching with employers’ demand or a multitude of other unexplained factors. 6 Kupets (2010). 8 these online job vacancies, in detail for the sixteen most-demanded occupations, to identify the most demanded skills. To the best of our knowledge, this is the first attempt to analyze the content of job vacancies in Ukraine, a type of information that is not available with other sources. The analysis of job vacancies allows gathering richer and more disaggregated information than existing official records and survey data. It allows determining a set of key skills, without imposing terms to designate skills or making surveyed firms rate the importance or absence of skill within a pre-defined list of skills. This can be done at a more disaggregated level of occupations than most employer skills surveys. In addition, job vacancies allow identifying the nature of demanded job-specific technical skills. In employer skills surveys, such as the World Bank’s STEP Employer Surveys, the importance or absence of technical skills is often based on questions that consider technical skills as a broad, undefined set. 7 3. Data collection and description 3.1. Web scraping and sample Data was collected using web scraping, a technique to extract data from websites, allowing to capture online job vacancies that were posted in HeadHunter, a popular private website (see appendix A for details on the data collection). After data cleaning, an exclusion of “professional areas” (the website’s job categories mixing occupations and sectors) with a small number of observations, and a random sampling of vacancies for easier classification, the sample includes 2,565 vacancies posted between February 27th and March 26th, 2015. 3.2. The online job website HeadHunter and its representativeness Created in 2000, HeadHunter is a leader among private job websites in Ukraine. The Ukraine website is part of an international group that also operates in the Baltic States (Estonia, Latvia, 7 An exception is the World Bank’s 2012 STEP-Enterprise Survey of the Lao People's Democratic Republic, which includes details questions of technical skills customized for each surveyed sector. Survey materials are available at this link: http://microdata.worldbank.org/index.php/catalog/1543. 9 and Lithuania), Belarus, Kazakhstan, and Russia. On the Ukraine website, a small share of ads (5 percent) are for vacancies outside of Ukraine, predominantly in Russia and Belarus. Vacancies can be posted in Ukrainian, Russian, and English. The job vacancies of HeadHunter do not represent employers’ demand for the whole spectrum of jobs in Ukraine, but rather cover medium- and high-skilled ones. HeadHunter is only one job website among a few in Ukraine, which are likely to advertise different vacancies. 8 In addition, firms also use informal networks to hire (e.g. references by other colleagues without publicly advertising the job). 9 Therefore, HeadHunter may represent only a segment of the overall jobs and skills’ demand. Indeed, while HeadHunter includes vacancies for clerical occupations, it over-represents formal, high-skilled jobs compared to the structure of employment in Ukraine. The proportion of HeadHunter’s vacancies of “senior officials and managers” and “technicians” is more than double that of employed individuals in 2015 (figure 1, panel A). 10 There is also a higher proportion of professionals (close to half more) and clerks (more than five times more). Headhunter has a much lower proportion of less skilled occupations: service and sales workers, skilled agricultural workers, craftspersons, machine operators, and laborers. HeadHunter’s vacancies also overrepresent occupations in 8 Other online job websites include Jobs.ua (27,544 vacancies in March 2017), Rabota.ua (57,701 vacancies in February 2017), and Work.ua (78,695 vacancies in March 2017) (sources: respective websites and www.jobboardfinder.net for Rabota.ua). 9 Some statistics suggest that the use of online job websites by firms may not be widespread. The World Bank's 2014 STEP Employer Survey shows that surveyed firms in the sectors of agriculture, food processing, information technology, and renewable energy in Ukraine report using private employment services to hire workers with highest skills gaps by 4, 4, 17, and 29 percent, respectively. By comparison, these four sectors use public employment services by 47, 45, 18, and 53, respectively. 61, 55, 68, and 70 percent, respectively, tell they also informal channels for hires (e.g. personal contacts and recommendations). 10 It is expected though that the distribution of actual employment and demand for workers (expressed by a job vacancy) across occupations and sectors would differ to some extent. Employment represents a match between firms demanding workers and workers demanding jobs but the whole demand of firms might not be fully satisfied, if firms cannot find adequate workers or no workers at all for instance. Job vacancies may also represent new demand in the labor market that is not translated into employment yet. 10 the sectors of information and communication, professional services, and industry, compared to the Ukrainian employment structure (figure 1, panel B). When compared to Trud, the public website of the State Employment Service, jobs advertised in HeadHunter are of higher- skilled occupations and better-paid jobs on average, typically requiring higher levels of education, and from different sectors than Trud, (see appendix B for a comparison of jobs advertised in HeadHunter’s and Trud’s vacancies). Figure 3.2.1. Comparing job vacancies in HeadHunter with the structure of employment, 2015 A. Employment in Ukraine versus B. Employment in Ukraine versus vacancies vacancies in HeadHunter, by broad in HeadHunter, by sector occupation category Source: Ukraine’s State Statistics Service (2016) for employment and HeadHunter data set (2015). Note: In panel A, occupations are 1-digit occupations according the ISCO-88 classification. In panel B, sectors are classified according to the revision 2 of the Statistical Classification of Economic Activities in the European Community, (NACE). 11 Hence, job vacancies in HeadHunter are a valuable source of information for the occupations and skills that need attention in workforce development and that employers may find difficulty getting through other websites or traditional means. Given that vacancies in HeadHunter are of higher qualified and better paid occupations, it is desirable to understand the skills associated with those occupations. Plus, the fact that firms used HeadHunter for these vacancies may precisely indicate that they have difficulty filling them using informal means, such as their networks. Thus, these are skills that need policymakers’ focus. 3.3. Content of job postings Virtually all postings feature a job title, the job category (occupation or sector category), the date of posting, the employment type (e.g. full time or temporary), and the job description as a block of text. The postings, collected though web scraping, came as a spreadsheet file with a cell for each of these categories, for every posting. More detailed ones have extra cells featuring some of the following elements: the firm that advertised the job (3 vacancies in 10), required experience (3 in 4), and salary level (1 in 2). For this study, the team re-classified the content of the sampled job postings into variables of interest, in particular skills. The block of text of job descriptions in the collected postings included a range of information on job requirements and responsibilities. Under this format — a condensed text block — one can observe the requirements and responsibilities for one job vacancy but cannot assess their frequency for occupation categories or the whole sample. Therefore, the team selected a subsample of 2,565 vacancies from the total 7,500 collected to make a first classification of the information from the job description into variables with smaller blocks of text describing categories of requirements (such as a range of skills, minimum education level, field of studies, other) and working conditions. The team then extracted pieces of text or single words referring to requirements to code them into variables allowing quantitative analyses. 12 3.4. Definition and categories of skills Skills are attitudes and behaviors that are malleable across an individual’s development and, thus, can be learned. In the context of skills listed in job descriptions, the term refers to the attributes defining the ability to handle a range of tasks or situations. Skills are formed not only in school but also by an individual’s family, his living environment, extracurricular activities, and the workplace. 11 Skills can be categorized into three broad overlapping sets (figure 2; Appendix C provides the definition of specific skills in each of the three categories): • Cognitive skills are mental abilities. They include basic academic knowledge, such as literacy and numeracy, and advanced cognitive skills, such as critical thinking and problem-solving. We identified fourteen broad categories of cognitive skills from those that appear in the postings, mostly advanced cognitive skills. 12 • Socioemotional skills are attitudes and behaviors that enable individuals to manage personal and social situations effectively. We categorized socioemotional skills according to two classifications: The Big Five Personality Traits taxonomy, a classification of broad traits widely used in international studies, and the PRACTICE taxonomy, a classification of socioemotional skills for the labor market identified in skills-development interventions and employers’ surveys. 13,14 11 Green and others (2001); Heckman and Mosso (2014). 12 Out of the fourteen broad cognitive skills, only literacy and math are basic cognitive skills. The twelve others are advanced cognitive skills. 13 For details on the Big Five personality traits taxonomy see John and Srivastava (1999). For details on the PRACTICE taxonomy of socioemotional skills for the labor market, see Guerra, Modecki, and Cunningham (2014). 14 Similar studies on other countries usually only distinguish cognitive and socioemotional skills or use their own taxonomy. Beblavý, Kureková, and Haita (2016) and Beblavý and others (2016) split socioemotional skills into two categories, social and personal skills, in studies on Slovakia and the United States, respectively. Kureková and others (2016) use the Big Five Personality Traits taxonomy. 13 • Technical skills are the specific knowledge needed to carry out one’s job, e.g. knowledge of production and processing, and knowledge of markets. Technical skills also include technology: digital skills, including the ability to use computer tools. Basic cognitive skills and socioemotional skills are general skills that serve as a prerequisite to learn more advanced skills, such as advanced cognitive skills and technical skills. Figure 3.4.1. Framework for cognitive, socioemotional, and technical skills Sources: Adapted from Cunningham, Acosta, and Muller (2016), based on Borghans and others (2008); Roberts (2009); Almlund and others (2011); OECD (2015). 14 4. Main findings 4.1. Virtually all employers list skills requirements while education requirements are much less frequent Skills are the most frequent requirement in HeadHunter’s job vacancies, ahead of work experience and education level. Overall, 9 in 10 job vacancies demand at least one skill, be it a cognitive, socioemotional, or technical skill, or a combination of the three (figure 3, panel A). Most vacancies also request work experience: about 7 in 10. More strikingly, only half of the job vacancies mention needing a minimum education level and less than a third a field of study. One possible explanation for this lack of demand for education — and the simultaneous high demand for skills and work experience — is that most Ukrainians complete higher education, which make it difficult for employers to discern how job applicants may be better at a job based on their education level. Another possible explanation is that higher education in Ukraine is not always of good quality nor relevant for the current labor market.15 As a result, employers do not rely on diplomas to judge the abilities of a future employee but rather of what he can do — his skills — and what he has done — his work experience. 15 Del Carpio, Kupets, and Muller (2017). 15 Figure 4.1.1. Job requirements A. All requirements B. Skills requirements Source: Job vacancies on HeadHunter online website, March 2015. Note: The sample includes 2,565 job vacancies. Employers seek a combination of advanced cognitive, socioemotional, and technical skill sets. Cognitive, socioemotional, and technical skills are each demanded by more than 6 in 10 job vacancies (figure 3, panel B). 6 skills are demanded by more than a quarter of vacancies: teamwork (a socioemotional skill; 46 percent), technology (a technical skill; 39 percent), communication (a cognitive skill; 34 percent), foreign languages (a cognitive skill; 29 percent), ethics (a socioemotional skill; 29 percent), and achievement motivation (a socioemotional skill; 27 percent) (figure 4). 16 16 See appendix C for definitions of the skills. 16 Figure 4.1.2. Most-demanded cognitive, socioemotional, and technical skills Source: Job vacancies on HeadHunter online website, March 2015. Notes: 15 categories of cognitive skills, 8 categories of socioemotional skills (using the PRACTICE taxonomy), and 21 categories of technical skills are considered. Skills appearing in less than 2 percent of vacancies are omitted from the graph for ease of presentation. See appendix C for definition of skills categories. The sample includes 2,565 job vacancies, including those not mentioning any required skill at all. Most demanded skills in the job vacancies are consistent with results from employer surveys when considering broad skills categories but differ when considering specific skills. A 2014 survey of employers in Ukraine of four sectors — agriculture, food processing, information technology, and renewable energy — also ranked a mix of cognitive, socioemotional, and technical skills among top-5 skills. 17 The survey asks employers to rank the five most important skills for their new hires among a list of fourteen. 18 Technical skills, 17 Del Carpio, Kupets, and Muller (2017). 18 The fourteen skills were: literacy in the official language, literacy in English, literacy in another foreign language, numeracy, job-specific technical skills, communication, leadership, teamwork, creative and critical 17 featured as a single option in the survey, turned out to be the most important in all the four sectors. Two cognitive skills (problem solving, creative and critical thinking) and three socioemotional skills (professional behavior, ability to work independently, and teamwork) were among the second to the fifth most important skills, changing only marginally the order across sectors. Job vacancies and the 2014 survey have in common a high demand for similar socioemotional skills: teamwork, ethics (which has overlap with “professional behavior”), and achievement motivation (which has some overlap with “the ability to work independently”, picked in the 2014 survey). However, they have discrepancies: (i) the job vacancies allow to show the demand for disaggregated technical skills, such as handling technology; (ii) cognitive skills appearing more demanded in the HeadHunter vacancies are about communication and foreign languages while those in the 2014 survey are about creative and critical thinking and problem solving. The differences may come from their different samples (the survey focuses on four sectors; the vacancies have higher-skilled occupations and more IT and professional services than the structure of employment in the country), but may also due to the fact that the survey asks employers about an ad-hoc list with different skills categories. 4.2. A wide range of socioemotional skills are in demand for all occupations Employers demand a wider range of socioemotional skills than cognitive and technical skills. 46 percent of all vacancies — including vacancies with no skills requirements — demand two or more socioemotional skills while only 15 percent demand one (figure 5). Some occupations, such as business-service agents and trade brokers, even require five socioemotional skills on average and a small number of vacancies require up to thirteen socioemotional skills, reflecting the multiplicity of this skills set. By contrast, most vacancies demand only one cognitive skill (32 percent). While vacancies demanding technical skills can demand up to nineteen technical skills (many software programs for computer professionals, for example), most vacancies demand only one technical skill too (32 percent). thinking, problem solving, independence, environmental awareness, professional behavior, and time management. 18 Figure 4.2.1. Number of citations of a skills category Source: Job vacancies on HeadHunter online website, March 2015. Note: The sample includes 2,565 job vacancies, including those not mentioning any required skill at all. Each socioemotional skill is demanded in at least 10 percent of the vacancies. Regardless of the classification of socioemotional skills considered – the Big Five Personality Traits taxonomy or the PRACTICE taxonomy – there is demand for each socioemotional skill in at least 10 percent of the vacancies (figure 6). In the Big Five taxonomy, conscientiousness is the skill in highest demand, followed by extraversion. 19 In the PRACTICE taxonomy, socioemotional skills in highest demand are related to working with others (teamwork) and achieving goals (which partly corresponds to being conscientious, but also taking initiative, and solving social problems, and having ethics). 20 19 Conscientiousness is most often the strongest predictor of labor-market outcomes, partly because this personality trait is useful across a wide range of work-related tasks (Nyhus and Pons 2005; Almlund and others 2011). 20 Having results for two taxonomies of socioemotional skills brings to light that the measured demand for specific skills categories is somehow sensitive to the classification of skills. We observe slightly different results of most-demanded socioemotional skills when using the Big Five Personality Traits taxonomy and using the PRACTICE taxonomy. The most-demanded personality traits in the Big-Five taxonomy, conscientiousness and extraversion, have some but incomplete overlap with most-demanded skills with the PRACTICE taxonomy that are teamwork, ethics, and achievement motivation (see Table C.2 for a comparison of the Big Five and PRACTICE 19 Figure 4.2.2. Demand for Big Five Personality Traits and PRACTICE taxonomies Source: Job vacancies on HeadHunter online website, March 2015. Note: The sample includes 2,565 job vacancies, including those not mentioning any required skill at all. The demand for specific socioemotional skills is relatively similar across occupations, with some socioemotional skills in high demand across widely diverse occupations. Across the top-16 occupations, the demand for specific socioemotional skills is relatively close to the average — the three main required skills being teamwork, ethics, and achievement motivation (figure 7, panel A). 21 A few other skills stand out as important for a variety of job contexts. Confidence, for instance, is in highest demand for business services agents and trade brokers, which is expected given that they need to build trust with other clients or other trade brokers (figure 7, panel B). The second occupation where confidence is in highest demand is hairdressers and barbers, an occupation of lower qualifications but that requires gaining trust from clients and possibly convincing them to try new styles. The third occupation taxonomies). The percentages and rankings of detailed cognitive, socioemotional, and technical skills depend to some extent on the classification of specific skills into these categories. 21 The top-16 occupations are those with at least 30 vacancies in the data set (see the detailed list in appendix D). 20 demanding confidence most is receptionists and information clerks, another low- qualification occupation but that also needs confidence in addressing a diverse set of demands. Similarly, resilience is in demand from — in order of frequency — translators, secretaries, and receptionists. While the latter two have very different qualification levels from the former, it is not surprising to see that translators need to be resilient, given that their work can be very intense on a short period. Similarly, secretaries and receptionists may also have to deal with multiple demands and difficult people. 21 Figure 4.2.3. Demand for specific socioemotional skills across occupations A. Demand for detailed socioemotional skills by top-16 occupations Occup. Occupation name code Senior officials and managers 1210 Directors and chief executives 1229 Production and operations managers (diverse) 1239 Specialist managers (diverse) Professionals 2131 Computer systems designers, analysts, and programmers 2139 Computing professionals (diverse) 2149 Architects, engineers and related professionals (diverse) 2419 Business professionals (diverse) 2444 Philologists, translators and interpreters Technicians 3121 Computer assistants 3415 Technical and commercial sales representatives 3419 Finance and sales associate professionals (diverse) 3429 Business services agents and trade brokers (diverse) 3431 Administrative secretaries and related associate professionals Clerks 4115 Secretaries 4222 Receptionists and information clerks Services and sales workers 5141 Hairdressers, barbers, beauticians and related workers 22 B. Demand for selected specific socioemotional skills for selected occupations (percentage of vacancies requiring the skills) Source: Job vacancies on HeadHunter online website, March 2015. Notes: Socioemotional skills are classified according to the PRACTICE taxonomy (Guerra, Modecki, and Cunningham 2014). Numbers in labels are occupation codes of the 4-digit classification ISCO-88. The sample includes the 1,779 vacancies of the top-16 occupations with most vacancies (more than 30 each), which represent 69 percent of the 2,565 job vacancies of the total sample. 4.3. Cognitive skills requirements focus on communication, foreign languages, and other cognitive skills that are demanded differently across occupations Communication and foreign languages stand out among cognitive skills cited in the job vacancies. The requirements of cognitive skills focus on fewer items than those of socioemotional skills, of which communication and foreign languages have the lion’s share. Communication, the ability to effectively convey information to others orally and in writing, is an explicit requirement for a third of vacancies (34 percent) (figure 8). As many jobs must deal with foreign firms for trade, supply chains, or services, close to a third of vacancies also require the ability to speak and write in a foreign language (29 percent). This is far more than the following cognitive skills most in demand: learning (12 percent), time management (8 percent), analytical and thinking skills (8 percent). 23 Figure 4.3.1. Specific cognitive-skills requirements of all vacancies Source: Job vacancies on HeadHunter online website, March 2015. Notes: See appendix C for definition of skills categories. The considered job vacancies are 2,565 and includes those not mentioning any required skill at all. Beyond communication and foreign languages, demand for other cognitive skills varies greatly across occupations. The demand for communication and foreign languages is generally the same across occupations (figure 9, panel A). There are exceptions for those dealing with local services who need less foreign languages (hairdressers for instance) and professionals who need more of it (programmers can hardly work without some command of English since coding uses it, for instance). Other cognitive skills matter greatly for some occupations, such as learning and literacy for business services agents and trade brokers, and analytical and thinking skills for managers, learning and time management for hairdressers and the like (figure 9, panel B). 24 Figure 4.3.2. Demand for detailed cognitive skills by top-16 occupations Occup. Occupation name code Senior officials and managers 1210 Directors and chief executives 1229 Production and operations managers (diverse) 1239 Specialist managers (diverse) Professionals 2131 Computer systems designers, analysts, and programmers 2139 Computing professionals (diverse) 2149 Architects, engineers and related professionals (diverse) 2419 Business professionals (diverse) 2444 Philologists, translators and interpreters Technicians 3121 Computer assistants 3415 Technical and commercial sales representatives 3419 Finance and sales associate professionals (diverse) 3429 Business services agents and trade brokers (diverse) 3431 Administrative secretaries and related associate professionals Clerks 4115 Secretaries 4222 Receptionists and information clerks Services and sales workers 5141 Hairdressers, barbers, beauticians and related workers Source: Job vacancies on HeadHunter online website, March 2015. 25 Notes: Numbers in labels are occupation codes of the 4-digit classification ISCO-88. The sample includes the 1,779 vacancies of the top-16 occupations with most vacancies (more than 30 each), which represent 69 percent of the 2,565 job vacancies of the total sample. 4.4. In a given occupation, cognitive and socioemotional skills appear as complementary: they are demanded similarly A given occupation needs cognitive and socioemotional skills at the same frequency. This is the case of 12 top-demanded occupations out of the 16 that we have analyzed in detail. Job vacancies of business-service agents and trade brokers show the highest demand for both cognitive and socioemotional skills (close to 100 percent), while vacancies of directors and chief executives and architects and engineers have the lowest (less than 40 percent) (figure 10). 22 The bulk of occupations have high frequencies of joint requirements for these two skills, which range between 50 and 90 percent. High-skilled occupations — senior officials and managers, professional, and technicians — tend to have lower requirements for these two skills than medium-skilled occupations — clerks and service and sales workers. The high demand for both cognitive and socioemotional skills across occupation skill-level is consistent with other employer surveys from around the world and similar skills-demand analysis on job vacancies in Slovakia and the United States. 23 One interpretation for this finding is that cognitive and socioemotional skills are complementary and form a base needed to apply the technical skills require for a given occupation. There are a few exceptions. Given that their job might require less interactions with others than other occupations, professionals and technicians working with computers demand 22 One would expect higher skills requirements for directors and chief executives, since they have more work responsibilities than regular employees. One potential explanation for the low level of requirements in job vacancies is that firms may have a different recruitment process for these occupations, with just a handful of high-level applicants to manage, and may rely more on interviews, references, and reputation than job vacancies to fill their positions. As such, they would less frequently advertise detailed job vacancies for these positions. 23 Cunningham and Villaseñor (2016); Kureková, Beblavý and Haita (2012, 2016). Kureková and others (2016). 26 cognitive skills twice as often as socioemotional skills (around 60 percent versus around 30 percent). Beauticians and related professions, by contrast, demand socioemotional skills more frequently than cognitive skills (80 percent versus 68 percent). Figure 4.4.1. Joint demand for cognitive and socioemotional skills Source: Job vacancies on HeadHunter online website, March 2015. Note: the size of the bubbles represents the number of vacancies of an occupation in the data set, ranging from 35 to 271. The line plots benchmark points for which the percentage of vacancies requiring cognitive or socioemotional skills would be the same. The sample includes the 1,779 vacancies of the top-16 occupations with most vacancies (more than 30 each), which represent 69 percent of the 2,565 job vacancies of the total sample. 27 4.5. Requirements for technical skills vary across occupations but most occupations demand some information and technology skills Technical skills are in highest demand among high-skilled occupations, and more so than cognitive and socioemotional skills. Technical skills, on one hand, and cognitive and socioemotional skills, on the other hand, seem to be inversely correlated: higher-skilled occupations tend to need more often technical skills and less often cognitive and socioemotional skills than medium-skilled occupations, and vice versa. The frequency of the demand for technical skills is most often much higher for higher-skilled technical occupations (such as production and operations managers and specialist managers, occupations working heavily with computers, and architects and engineers) and lower for lower-skilled occupations (technicians, clerks, and service workers) (figure 11). Figure 4.5.1. Demand for broad categories of cognitive, socioemotional, and technical skills, by top-16 occupations (from higher-skilled to lower-skilled) Source: Job vacancies on HeadHunter online website, March 2015. 28 Note: Numbers in labels are 4-digit occupation codes (ISCO-88). See appendix D for correspondence to the occupation description. The sample includes job vacancies for each of the top-16 occupations with most vacancies (more than 30 each, summing to 1,779 vacancies). The total includes the 2,565 job vacancies of the total sample. Even within lower-skilled occupations, most technical skills requirements are about IT skills. Ukraine is the largest supplier of information technology (IT) specialists of Eastern Europe and one of the top 10 countries in the world. 24 Yet, technical-skills requirements are not restricted to IT specialist. Handling technology, the most cited technical skill, is cited in nearly 40 percent of vacancies. Handling technology refers to knowing how to use computer software (for graphic design or architecture for instance), computers’ operating systems (e.g. Linux, Windows), and internet processes such as Search Engine Optimization (the process of affecting the online visibility of a website or a web page in a web-search engine), among others. The second most-demanded technical skill is computer programming (demanded by 15 percent of vacancies), which are more advanced IT skills to develop instructions to apply specific tasks on a computer. The demand for other skills is highly diverse: The nineteen other technical skills are at most 6 times less demanded than technology skills (figure 12). The sum of the share of vacancies requiring these nineteen other skills equals the demand for technology skills. 24 Kelly and others (2017). 29 Figure 4.5.2. Technical skills requirements of selected occupations Percentage of vacancies among all vacancies mentioning a given skill in their requirements Source: Job vacancies on HeadHunter online website, March 2015. Notes: Squares without labels are requirements with less than one percent of job vacancies. They include cosmetology, math, medical knowledge, knowledge of places, personnel and human resources, fine arts, and fitness. The sample includes 2,565 job vacancies, including those not mentioning any required skill at all. Other technical skills vary greatly across occupations. There is much more heterogeneity across occupations in the demand for technical skills than in the demand for cognitive and socioemotional skills. Aside from technology, for which demand is high across the board, most occupations only share a subset of technical skills requirements. Directors and chief executives, for instance, need sales and marketing (as do commercial sales representatives), customer and personal service (as do secretaries), and administration and management (as do production and operation managers), but no other occupation require the same set of technical skills (figure 13). Some technical skills are even demanded by one occupation only: cosmetology for hairdressers and data management and analysis for computing professionals, for example. These results point out the benefits of this analysis: Not using a pre-defined list of skills and allowing identifying specific skills in demand, even among technical skills. 30 Figure 13. Demand for detailed technical skills by top-16 occupations Occup. Occupation name code Senior officials and managers 1210 Directors and chief executives 1229 Production and operations managers (diverse) 1239 Specialist managers (diverse) Professionals 2131 Computer systems designers, analysts, and programmers 2139 Computing professionals (diverse) 2149 Architects, engineers and related professionals (diverse) 2419 Business professionals (diverse) 2444 Philologists, translators and interpreters Technicians 3121 Computer assistants 3415 Technical and commercial sales representatives 3419 Finance and sales associate professionals (diverse) 3429 Business services agents and trade brokers (diverse) 3431 Administrative secretaries and related associate professionals Clerks 4115 Secretaries 4222 Receptionists and information clerks Services and sales workers 5141 Hairdressers, barbers, beauticians and related workers 31 Source: Job vacancies on HeadHunter online website, March 2015. Notes: Numbers in labels are 4-digit occupation codes (ISCO-88). The sample includes the 1,779 vacancies of the top-16 occupations with most vacancies (more than 30 each), which represent 69 percent of the 2,565 job vacancies of the total sample. 5. Conclusion The observed demand from actual job vacancies confirms that employers look for skills rather than for diplomas for their employees, and this holds true across diverse occupations. At least 60 percent of vacancies in HeadHunter demand the three broad skills categories of cognitive, socioemotional, and technical – and 90 percent at least one of them. By contrast, only half the vacancies include education requirements. This could well presage of an era where jobseekers would have to be more and more explicit about their skills when applying to jobs — in their CVs, for example — as opposed to putting upfront their education and work experience as they do now. The analysis shows the centrality of socioemotional skills: employers look for a wide range of socioemotional skills across many occupations, more so than for cognitive and technical skills. Most demanded socioemotional skills are related to working with others, being conscientious, taking initiative, and having ethics, but ads mention the entire range of socioemotional skills, including achievement motivation and control. This wide range of socioemotional skills is required for all occupations, including occupations with lower qualifications. Cognitive requirements focus on a smaller number of skills, which include communication and foreign languages. Similarly, most occupations’ demand for technical skills focus on information and technology skills and vary greatly across occupations for other technical skills. Cognitive and socioemotional skills appear as complementary: they are demanded similarly when considering a given occupation. Cognitive and socioemotional skills seem to form a 32 base needed to apply the technical skills required for a given occupation. Both types of skills are especially demanded among lower-skilled occupations. Job vacancy data, such as those analyzed in this paper, provide new insights usually unavailable in traditional instruments to measure employers’ demand for skills and labor. First, they give detailed information on skills, especially technical ones, without imposing a pre-defined list of options. Second, job vacancies show actual demand from employers rather than intentions captured in surveys. Overall, while job vacancies from HeadHunter are only a subset of all vacancies in the country, they cover desirable high- and medium-skilled occupations. When comparing findings of most demanded skills in HeadHunter and in the 2014 Ukraine STEP Employer survey, there are some similarities (a mix of cognitive, socioemotional, and technical skills; similar socioemotional skills) but also differences (different cognitive and technical skills). This suggests that job vacancies are a promising way to identify skills in demand, in complement to surveys. Job vacancies can be used by governments and researchers to continuously assess labor market information, including to capture skills demand among emerging occupations, and address information failure. This could considerably enhance career-guidance provided to students and jobseekers. 33 References Almlund, M., A. L. Duckworth, J. J. Heckman, and T. Kautz. 2011. “Personality Psychology and Economics.” In Handbook of the Economics of Education, Vol. 2, edited by E. A. Hanushek. Amsterdam: North-Holland. Arias, O. S., C. Sanchez-Paramo, M. E. Davalos, I. Santos, E. R. Tiongson, C. 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Reaping Digital Dividends: Leveraging the Internet or Development in Europe and Central Asia. Europe and Central Asia Studies. Washington, DC: World Bank. 35 Kureková, L. M., M. Beblavý and Corinna Haita. 2012. “Qualifications or Soft Skills? Studying Job Advertisements for Demand for Low-Skilled Staff in Slovakia.” NEUJOBS Working Paper D.4.3.3. Kureková, L. M., M. Beblavý, C. Haita and A. Thum-Thysen. 2016. “Employers’ Skill Preferences across Europe: Between Cognitive and Non-cognitive Skills.” Journal of Education and Work. 29(6): 662–687. Kureková, L. M., M. Beblavý, and A. Thum-Thysen. 2015. “Using Online Vacancies and Web Surveys to Analyse the Labour Market: A Methodological Inquiry.” IZA Journal of Labor Economics. 4(1): 1–20. Kupets, O. 2010. Gender Mainstreaming at the Labour Market of Ukraine and Role of the Public Employment Service. Kyiv: International Labour Office (ILO). Nyhus, E. K., and E. Pons. 2005. “The Effects of Personality on Earnings.” Journal of Economic Psychology 26: 363–84. OECD (Organisation for Economic Co-operation and Development). 2015. Skills for Social Progress: The Power of Social and Emotional Skills. OECD Skills Studies. Paris: OECD Publishing. Roberts, B. W. 2009. “Back to the Future: Personality and Assessment and Personality Development.” Journal of Research in Personality 43 (2): 137–145. 36 Appendix A. Web scraping of job vacancies Web scraping (an online data-collection technique) and online job websites In March-April 2015, a World Bank team used web scraping, a technique to extract data from websites, to capture online job vacancies that had been posted for a few months on two job websites: HeadHunter, a popular private website, and Trud, the public website run by the State Employment Service. 25 A study of job websites of eleven European countries uses a similar method to extract occupations’ requirements from vacancies. 26 The analysis focuses on HeadHunter because it provides information on skills requirements for most of its vacancies. By contrast, Trud provides such information for virtually none of its vacancies. The data set of Trud vacancies serves as comparator to HeadHunter for the types of jobs advertised in the website (see appendix B). Samples Sample HeadHunter: On March 24–27, 2015, the team used web scraping to collect 7,486 job vacancies that were posted between February 27 and March 26, 2015. Every vacancy came as a spreadsheet with a few cells including basic information on the vacancy (job title, sectors, location, etc.) and a cell with a block of large text corresponding to the job requirements. The team then selected a subsample of 2,901 vacancies from those collected to make it more manageable to classify the block of texts of job requirements into variables: the team randomly selected 20 percent of job vacancies within the 20 professional areas — the website’s job categories mixing occupations and sectors — with the largest number of vacancies and most similar job requirements across vacancies. 27 Duplicates, which were scraped vacancies posted under several professional areas, were dropped, some vacancies 25 See Carnevale, Jayasundera, and Repnikov (2014) for details on web scraping techniques and challenges. 26 Beblavý and others (2016). 27 Among the 28 professional areas, 20 had a random subsampling of their vacancies and 8 were left as such. The latter 8 are: administrative personnel, installation and service, insurance, management, manufacturing, procurement, mining and quarrying, sports clubs (include fitness clubs and beauty salons). 37 were reclassified in professional areas that corresponded better to their content, resulting in a final sample of 2,565 vacancies (figure A.1.). Figure A.1. Number of job vacancies in HeadHunter after web scraping and after sampling and data cleaning, by professional area Source: HeadHunter data set (March 2015). Note: Professional areas are HeadHunter’s own classification of job categories mixing occupations and sectors. The subsampling consisted in randomly selecting 20 percent of a professional area’s job vacancies for professional areas with most vacancies and most similar job requirements across vacancies (professional areas number 3, 4, 5, 6, 7, 11, 15, 16, 24, 25, and 28) and the cleaning consisted in dropping duplicated vacancies. Sample Trud: On April 18–22, 2015, the team used web scraping to collect more than 32,000 vacancies that were posted between October 31, 2008, and April 22, 2015. The team removed all vacancies older than January 1, 2015, which were likely to be obsolete, resulting in a final sample of 23,477 vacancies. Figure A.2. shows the number of vacancies collected for HeadHunter and Trud by month of posting. 38 Figure A.2. Collected vacancies by website by month of posting Source: HeadHunter data set (March 2015) and Trud (January-April 2015). Data cleaning The data set went through an extensive effort of cleaning and classification of the information collected. Under guidance, research assistants extracted blocks of text and parsed them into variables that could be then coded. For the case of requirements of skills, variables of broad categories of skills – generic skills (cognitive and socioemotional), technical skills, computer skills, foreign language – were extracted from the single variable of the job description. The team used Stata to generate variables with single skills and skill categories to quantify the frequency of such requirements. Not every vacancy included these requirements in the job description, so the process also generated missing values that were then coded into zeros to indicate that a given skill was not demanded by a given occupation. Original information in Russian and Ukrainian was translated into English. 39 Appendix B. Comparing jobs advertised in HeadHunter and the public online job website, Trug.gov.ua HeadHunter has the reputation to advertise high-skilled jobs while Trud, the public website managed by the State Employment Service, has the opposite reputation. Even though they are required to, many firms do not even advertise job vacancies in the State Employment Service’s website, preferring to do so in private websites, because jobseekers who use the State Employment Service typically have low skills. 28 This appendix reviews and compares the job vacancies scraped from these two websites. 29 Job requirements: Skills for HeadHunter, Education for Trud The two websites have opposite skills and education requirements. While virtually every job vacancy in Trud requires a minimum level of education, this is the case for only half of HeadHunter’s vacancies (figure C.1). The opposite holds true regarding skills: close to 9 HeadHunter’s vacancies out of 10 include skills requirements in their job description, while only 13 percent of Trud’s vacancies include them. This contrast might result from (i) employers in HeadHunter look for skills, rather than diplomas of uncertain quality, and choose to be explicit about the skills they need in their vacancies; (ii) the forms filled by employers to post a vacancy in each website incentivize the way the job description is written. Furthermore, work experience is slightly higher for HeadHunter as well (74 percent versus 53 percent for Trud). On the other hand, and field of study is required similarly in the two websites, at around 30 percent. 28 Kupets (2010). 29 While the vacancies do not cover the same exact months (HeadHunter essentially March 2015 and Trud January-April 2015) they still cover about the same time-period and we do not expect differences to be driven by seasonality. 40 Figure B. 1. Requirements in HeadHunter’s and Trud’s job vacancies Source: HeadHunter data set (February-March 2015) and Trud (January-April 2015). Occupations and sectors: HeadHunter’s vacancies are of high-skilled occupations and higher valued-added sectors than Trud Headhunter’s vacancies mostly cover high-skilled occupations categories and little low- and medium-skilled occupations while Trud’s vacancies distributed relatively heavenly across occupation categories (figure C.2). Similar differences appear when considering sectors (figure C.3). 41 Figure B.2. Vacancies by broad occupation categories Source: HeadHunter data set (March 2015) and Trud (January-April 2015). Note: Occupations are 1-digit occupations according the ISCO-88 classification. Figure B.3. Vacancies by sectors Source: HeadHunter data set (March 2015) and Trud (January-April 2015). Note: Sectors are classified according to the revision 2 of the Statistical Classification of Economic Activities in the European Community, (NACE). 42 Education and Wage: HeadHunter has higher education requirements and better-paid jobs than Trud Among HeadHunter’s vacancies that require education (about half of them), 8 out of 10 vacancies require complete tertiary education (figure B.4). Trud, by contrast, requires complete tertiary education in only 2 vacancies that include education requirement out of 10; 40 percent of vocational secondary; and more than 20 percent regular secondary education. Figure B.4. Education requirements Source: HeadHunter data set (February-March 2015) and Trud (January-April 2015). When specified, wage offers in HeadHunter are much higher than Trud, in all occupations (figure B.5), and increasingly so when a higher share of vacancies of a given occupation require tertiary education (figure B.6). 43 Figure B.5. Wage offers Source: HeadHunter data set (February-March 2015) and Trud (January-April 2015). Figure B.6. Wages and education by occupation Source: HeadHunter data set (February-March 2015) and Trud (January-April 2015). 44 Note: The size of the bubble represents the percentage of the vacancies of one occupation among the total. Summary The job websites HeadHunter and Trud have the same purpose – advertising job vacancies in Ukraine, with the main difference in theory that all firms are supposed to advertise their vacancies in the public website, Trud. Yet, the two websites are different in many dimensions. Jobs advertised in HeadHunter are higher-skilled than Trud’s. Even for the same broad occupation category, salaries offered in the jobs advertised in HeadHunter are higher than in Trud. 45 Appendix C. Definitions of skills Table C.1. Definitions of cognitive skills Dimension No. Skill Definition Analytical and thinking 1 Ability to collect and analyze information skills The ability to convey information to another individual 2 Communication effectively, both orally and in writing 3 Decision making Ability to make decisions 4 Foreign languages Literacy in foreign language Advanced 5 Knowledge General knowledge such as history cognitive 6 Learning Ability to learn new things skills 7 Literate speech Correct use of native language 8 Memory Ability to remember 9 Planning Ability to look ahead and accomplish goals Process of working through details of a problem to reach a 10 Problem solving solution 11 Quick Speed of execution of tasks 12 Time management Ability to use one's time effectively Basic 13 Literacy Ability to read and write cognitive 14 Numeracy Ability to analyze number, quantity, and space skills Source: Own elaboration based on job vacancies on HeadHunter online website, March 2015. 46 Table C.2. Definitions of socioemotional skills of the PRACTICE taxonomy Dimension of Sub-skills (Skills, Socioemotional Related Big Five socioemotional Definition Attitudes, Beliefs, skill Personality Traits skills Behaviors) Orientation towards success, • Mastery mastery, and sense of purpose. • Conscientiousness orientation Achievement Associated with a high degree of (grit) • Sense of purpose motivation independence and the drive to • Openness to • Motivation to pursue difficult tasks work toward experience learn desired goals. The strength of character related to • Honesty fairness, honesty, following rules, • Fairness Ethics • Conscientiousness and a sense of responsibility, which orientation reflects into actions. • Moral reasoning Achieving goals Inclination to lead and take charge, • Agency operate as a positive actor, and • Conscientiousness • Internal locus of Initiative believe that outcomes depend on • Openness to control one’s own actions rather than fate, experience • Leadership chance, or others. Ways individuals solve social challenges, such a joining a group • Social-information (Social) and resolving conflicts, by processing skills problem- • Conscientiousness interpreting signals and emotional • Decision making solving reactions and deciding how to • Planning respond. • Self-efficacy Beliefs and feelings about oneself • Emotional Confidence • Self-esteem and one’s abilities. stability • Positive identity • Delay of gratification Managing Ability to delay gratification, focus Control • Impulse control • Conscientiousness emotions attention, and restrain impulses. • Attentional focus • Self-management Ability to adapt to situations, bounce • Stress resistance • Conscientiousness back from adversity, thrive in risky • Perseverance (grit) Resilience and stressful contexts, and • Optimism • Emotional realistically connect goals and one’s • Adaptability stability own abilities. Ability to deal with relationships by • Empathy/Prosocial being helpful and agreeable, behavior Working with understanding others’ feelings and • Low aggression • Agreeableness Teamwork others points of view, communicating • Communication • Extraversion effectively, and not engaging in skills aggressive or bullying behaviors. • Relationship skills Source: Adapted from Guerra, Modecki, and Cunningham (2014). Notes: * Although related, initiative and achievement motivation are distinct skills: initiative relates to any type of “take-charge” actions, such as suggesting a new project at work, while achievement 47 motivation is linked to a desire to succeed and is associated with setting long-term academic and career goals and following this pursuit despite obstacles that may occur along the way. Table C.3. Definitions of Big Five personality traits Dimension Personality trait Short definition Conscientiousness The tendency to be organized, responsible, and hardworking Achieving Openness to Appreciation for art, learning, unusual ideas and variety of goals experience experience Managing Predictability and consistency in emotional reactions, with Emotional stability emotions absence of rapid mood changes Agreeableness The tendency to act in a cooperative, unselfish manner Working Sociability, tendency to seek stimulation in the company of with others Extraversion others, talkativeness Source: Adapted from John and Srivastava (1999). 48 Table C.4. Definition of technical skills No. Technical skills Definition 1 Accounting, economics, Knowledge of economic and accounting principles and practices, the financial markets, and finance banking and the analysis and reporting of financial data. 2 Knowledge of business and management principles involved in strategic planning, Administration and resource allocation, human resources modeling, leadership technique, production Management methods, and coordination of people and resources. 3 Knowledge of media production, communication, and dissemination techniques and Communications and methods. This includes alternative ways to inform and entertain via written, oral, and Media visual media. 4 Cosmetology is the study and application of beauty treatment, including caring for the Cosmetology condition of hair, skin, and nails. 5 Knowledge of principles and processes for providing customer and personal services. Customer and personal This includes customer needs assessment, meeting quality standards for services, and service evaluation of customer satisfaction. 6 Data management and Strategies in collecting, processing, documenting, and summarizing data analysis 7 Knowledge of design techniques, tools, and principles involved in production of Design precision technical plans, blueprints, drawings, and models. 8 Knowledge of the theory and techniques required to compose, produce, and perform Fine Arts works of music, dance, visual arts, drama, and sculpture. 9 Includes aerobic exercise (jogging, walking, treadmill training, swimming, step aerobics Fitness and cycling) and body fitness systems like Tae Bo. 10 Foreign trade Knowledge of exports and imports. 11 Knowledge of markets Knowledge of actors, prices, and products of a market. 12 Knowledge of places Knowledge of countries, cities, or regions, and willingness to travel. 13 Law and regulations Knowledge of laws, legal codes, court procedures, precedents, government regulations, executive orders, agency rules, and the democratic political process. 14 Mathematics Knowledge of arithmetic, algebra, geometry, calculus, statistics, and their applications. 15 Medical knowledge The science and practice of the diagnosis, treatment, and prevention of disease. 16 Personnel and Human Knowledge of principles and procedures for personnel recruitment, selection, training, Resources compensation and benefits, labor relations and negotiation, and personnel information systems. 17 Production and Knowledge of raw materials, production processes, quality control, costs, and other Processing techniques for maximizing the effective manufacture and distribution of goods. 18 Programming and Writing computer programs for various purposes and knowing software specific to a specialized software job. 19 Sales and Marketing Knowledge of principles and methods for showing, promoting, and selling products or services. This includes marketing strategy and tactics, product demonstration, sales techniques, and sales control systems. 20 Secretarial Skills Includes skills as writing (communicating effectively in writing as appropriate for the needs of the audience), active listening (Giving full attention to what other people are saying, taking time to understand the points being made, asking questions as appropriate, and not interrupting at inappropriate times), speaking (talking to others to convey information effectively). It also includes clerical knowledge (knowledge of administrative and clerical procedures and systems such as word processing, managing files and records, stenography and transcription, designing forms, and other office procedures and terminology). 21 Technology Knowledge of technology products 49 Source: Adapted from the Occupational Information Network (O*NET), an online database of the United States that includes information on skills, abilities, knowledges, work activities, and interests associated with occupations. 50 Appendix D. Top-16 occupations in HeadHunter’s vacancies, March 2015 Table D.1. Frequency of the top-16 occupations in HeadHunter’s vacancies, by occupation category, March 2015 1-digit 3-digit occupation 4-digit occupation Top-16 4-digit occupations Freq. % category code category Directors and chief Directors and chief executives 1210 103 4 executives Senior Production and Production and operations officials and operations department managers not elsewhere 1229 79 3 managers managers classified Other department Other specialist managers not 1239 101 4 managers elsewhere classified Computer systems designers, 2131 153 6 Computing analysts and programmers professionals Computing professionals not 2139 35 1 elsewhere classified Architects, engineers Architects, engineers and Professionals and related related professionals not 2149 52 2 professionals elsewhere classified High-skilled Business professionals not occupation Business professionals 2419 206 8 elsewhere classified s Social science and Philologists, translators and 2444 50 2 related professionals interpreters Computer associate Computer assistants 3121 60 2 professionals Technical and commercial sales 3415 79 3 representatives Finance and sales Finance and sales associate associate professionals professionals not elsewhere 3419 225 9 Technicians classified Business services Business services agents and agents and trade trade brokers not elsewhere 3429 100 4 brokers classified Administrative Administrative secretaries and 3431 107 4 associate professionals related associate professionals Secretaries and keyboard-operating Secretaries 4115 117 5 Medium- Clerks clerks skilled Client information Receptionists and information occupation 4222 271 11 clerks clerks s Service and Other personal services Hairdressers, barbers, 5141 41 2 sales workers workers beauticians and related workers 51 Source: Occupations categories come from the International Standard Classification of Occupations 1988 (ILO 1988). Frequencies and percentages are from job vacancies on HeadHunter online website, March 2015. Note: Occupations were selected among the top 16 if they had more than 30 observations in the data set, a rule of thumbs for considering the minimum meaningful number of observations for an analysis. 52 Social Protection & Jobs Discussion Paper Series Titles 2017-2019 No. Title 1932 What Employers Actually Want - Skills in demand in online job vacancies in Ukraine by Noël Muller and Abla Safir May 2019 1931 Can Local Participatory Programs Enhance Public Confidence: Insights from the Local Initiatives Support Program in Russia by Ivan Shulga, Lev Shilov, Anna Sukhova, and Peter Pojarski May 2019 1930 Social Protection in an Era of Increasing Uncertainty and Disruption: Social Risk Management 2.0 by Steen Lau Jorgensen and Paul B. 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Dorfman April 2019 1926 Setting Up a Communication Package for the Italian NDC by Tito Boeri, Maria Cozzolino, and Edoardo Di Porto April 2019 1925 Sweden’s Fifteen Years of Communication Efforts by María del Carmen Boado-Penas, Ole Settergren, Erland Ekheden, and Poontavika Naka April 2019 1924 Information and Financial Literacy for Socially Sustainable NDC Pension Schemes by Elsa Fornero, Noemi Oggero, and Riccardo Puglisi April 2019 1923 Communicating NEST Pensions for “New” DC Savers in the United Kingdom by Will Sandbrook and Ranila Ravi-Burslem April 2019 1922 Harnessing a Young Nation's Demographic Dividends through a Universal NDC Pension Scheme: A Case Study of Tanzania by Bo Larsson, Vincent Leyaro, and Edward Palmer April 2019 1921 The Notional and the Real in China’s Pension Reforms by Bei Lu, John Piggott, and Bingwen Zheng April 2019 1920 Administrative Requirements and Prospects for Universal NDCs in Emerging Economies by Robert Palacios April 2019 1919 Bridging Partner Lifecycle Earnings and Pension Gaps by Sharing NDC Accounts by Anna Klerby, Bo Larsson, and Edward Palmer April 2019 1918 The Impact of Lifetime Events on Pensions: NDC Schemes in Poland, Italy, and Sweden and the Point Scheme in Germany by Agnieszka Chłoń-Domińczak, Marek Góra, Irena E. Kotowska, Iga Magda, Anna Ruzik-Sierdzińska, and Paweł Strzelecki April 2019 1917 Drivers of the Gender Gap in Pensions: Evidence from EU-SILC and the OECD Pension Model by Maciej Lis and Boele Bonthuis April 2019 1916 Gender and Family: Conceptual Overview by Nicholas Barr April 2019 1915 Labor Market Participation and Postponed Retirement in Central and Eastern Europe by Robert I. Gal and Márta Radó April 2019 1914 NDC Schemes and the Labor Market: Issues and Options by Robert Holzmann, David Robalino, and Hernan Winkler April 2019 1913 NDC Schemes and Heterogeneity in Longevity: Proposals for Redesign by Robert Holzmann, Jennifer Alonso-García, Heloise Labit-Hardy, and Andrés M. Villegas April 2019 1912 Annuities in (N)DC Pension Schemes: Design, Heterogeneity, and Estimation Issues by Edward Palmer and Yuwei Zhao de Gosson de Varennes April 2019 1911 Overview on Heterogeneity in Longevity and Pension Schemes by Ron Lee and Miguel Sanchez-Romero April 2019 1910 Chile's Solidarity Pillar: A Benchmark for Adjoining Zero Pillar with DC Schemes by Eduardo Fajnzylber April 2019 1909 Sweden: Adjoining the Guarantee Pension with NDC by Kenneth Nelson, Rense Nieuwenhuis, and Susanne Alm April 2019 1908 The ABCs of NDCs by Robert Holzmann April 2019 1907 NDC: The Generic Old-Age Pension Scheme by Marek Góra and Edward Palmer April 2019 1906 The Greek Pension Reforms: Crises and NDC Attempts Awaiting Completion by Milton Nektarios and Platon Tinios April 2019 1905 The Norwegian NDC Scheme: Balancing Risk Sharing and Redistribution by Nils Martin Stølen, Dennis Fredriksen, Erik Hernæs, and Erling Holmøy April 2019 1904 The Polish NDC Scheme: Success in the Face of Adversity by Sonia Buchholtz, Agnieszka Chłoń-Domińczak, and Marek Góra April 2019 1903 The Italian NDC Scheme: Evolution and Remaining Potholes by Sandro Gronchi, Sergio Nisticò, and Mirko Bevilacqua April 2019 1902 The Latvian NDC Scheme: Success Under a Decreasing Labor Force by Edward Palmer and Sandra Stabina April 2019 1901 The Swedish NDC Scheme: Success on Track with Room for Reflection by Edward Palmer and Bo Könberg April 2019 1803 Rapid Social Registry Assessment: Malawi’s Unified Beneficiary Registry (UBR) by Kathy Lindert, Colin Andrews, Chipo Msowoya, Boban Varghese Paul, Elijah Chirwa, and Anita Mittal November 2018 1802 Human(itarian) Capital? Lessons on Better Connecting Humanitarian Assistance and Social Protection by Ugo Gentilini, Sarah Laughton and Clare O’Brien November 2018 1801 Delivering Social Protection in the Midst of Conflict and Crisis: The Case of Yemen by Afrah Alawi Al-Ahmadi and Samantha de Silva July 2018 1705 Aging and Long-Term Care Systems: A Review of Finance and Governance Arrangements in Europe, North America and Asia-Pacific by Laurie Joshua November 2017 1704 Social Registries for Social Assistance and Beyond: A Guidance Note & Assessment Tool by Phillippe Leite, Tina George, Changqing Sun, Theresa Jones and Kathy Lindert July 1027 1703 Social Citizenship for Older Persons? Measuring the Social Quality of Social Pensions in the Global South and Explaining Their Spread by Tobias Böger and Lutz Leisering July 2017 1702 The Impacts of Cash Transfers on Women’s Empowerment: Learning from Pakistan’s BISP Program by Kate Ambler and Alan de Brauw February 2017 1701 Social Protection and Humanitarian Assistance Nexus for Disaster Response: Lessons Learnt from Fiji’s Tropical Cyclone Winston by Aisha Mansur, Jesse Doyle, and Oleksiy Ivaschenko February 2017 To view Social Protection & Jobs Discussion Papers published prior to 2017, please visit www.worldbank.org/sp. ABSTRACT We explore online job vacancies from a Ukrainian website to assess the skills that employers look for among their new hires. We assess the demand for cognitive, socioemotional, and technical skills across a range of medium- and high-skilled occupations. We find that employers highly demand all three skills categories, much more than any education level. Most occupations demand a variety of different socioemotional skills while the demand for cognitive and technical skills focuses on one or two skills. Besides, cognitive and socioemotional skills appear as complementary: They are demanded similarly for a given occupation. Overall, online job vacancies are an informative complement to traditional sources to assess skills in demand. ABOUT THIS SERIES Social Protection & Jobs Discussion Papers are published to communicate the results of The World Bank’s work to the development community with the least possible delay. This paper therefore has not been prepared in accordance with the procedures appropriate for formally edited texts. For more information, please contact the Social Protection Advisory Service, the World Bank, 1818 H Street, N.W., Room G7‑803, Washington, DC 20433, USA. Telephone: +1 (202) 458 5267, Fax: +1 (202) 614 0471, E-mail: socialprotection@worldbank.org or visit us on-line at www.worldbank.org/sp.