Active labour market measures and entrepreneurship in Poland Rafał Trzciński Impact Evaluation Spring School Hungary, 18.05.2011 case 1 – Evaluation of @lternative II project • Objective of the project: preventing unemployment among young people. • The territorial scope: 59 poviats of Poland (NUTS 4) with unemployment rate above 20% and high unemployment among young people. • Eligibility: • young unemployed (27 or younger), • registered at the labour office. • Total number of beneficiaries: 5 657. • Budget: € 4 090 702. • Type of services: pre-training assistance (recruitment, needs assessment, guidance); vocational training services linked with ECDL, both at basic and advanced level, as well as related areas; practical training (temporary employment/ on the job training organised under the agreements signed with employers; training allowances; vocational guidance and post training assistance; job-broking. • Period of implementation: 2005-2006. Evaluation problem Efect: lower unemployment @lternative II project Selection Factor to the x1 project SELECTION BIAS ? Problem: High unemployment rate among young people Self-selection Factor xn to the project The selection bias problem in control/comparison group approach To estimate the impact of the intervention we cannot simply compare beneficiaries (treated) with those who did not participate in the project (non-treated) This is because of factors affecting both participation and outcomes. If we don't control for those factors, we can overestimate or underestimate the impacts(picking the winners/ picking the losers). Data used in the evaluation PULS System, which: • is used for services for the unemployed • is present in approximately 90% of Poviat Labour Offices in Poland (2006) • provides a wide range of data on each unemployed person (socio-demographics, employment characteristics, previous qualification improvement, skills etc. ), • includes a detailed history of unemployment and other activities on each person (registration in the office, deregistration, trainings, use of the benefits, etc.). Data collection • We collected data from 55 of the 59 Poviat Labour Offices involved in the project. • In total we managed to identify 5 065 participants of the @lternative II project (90% of all beneficiaries). • Moreover we collected data on 126 633 persons (non-treated), which meet the formal conditions for eligibility for the project (registration in the labour office, age condition). Variables Socio-demographic characteristics Sex Age Marital status Single parenting Number of children Education Poviat Previous qualification improvement Number of training courses, in which the person participated during the one year prior to participation in the project Total number of days spent on training Having a work placement before participating in the project Skills Possession of driving license (B category) Employment characteristics Profession (ten categories) Number of days of work Number of professions (in total) Number of days being unemployed before participating in the project Number of days receiving the unemployment benefit before… Number of job offers during the one year period before… Number of days participating in subsidised work Number of days of permanent unemployment (during the two years period before…) Motivation to find a job Percentage of showing up in the Poviat Labour Office, Having the right to unemployment benefit Back to the selection problem… 0,259 0,132 0,024 0,012 0,075 0,694 0,072 0,121 0,032 0,087 21,932 159,267 0,251 Eligible non participants 0,433 0,242 0,189 0,033 0,260 0,382 0,044 0,086 0,077 0,272 23,302 366,093 0,145 Standardized difference in % -37,1 -28,6 -55,5 -13,9 -50,9 66,0 11,6 11,6 -20,1 -37,6 -66,1 -42,9 26,8 industrial wokers/craftsman workers 0,065 0,192 -38,7 without occupation v45 Number of days being unemployed before participating in the A. v46 Number of days receiving the unemployment benefit before… without the right 0,248 473,867 299,207 0,380 0,189 819,623 447,247 0,262 14,4 -59,1 -42,3 25,4 < 1 month 0,062 0,072 -4,3 >1 month but <3 months 0,121 0,153 -9,3 0,437 0,512 -15,0 233,624 330,349 -39,6 Variable Beneficiaries v47 Having the right to unemployment benefit v17 Profession Education v3 Sex (male) v5 Marital status (married) Primary Lower secondary Basic vocational v6 Secondary Post-secondary Higher v7 Single parenting v8 Number of children v9 Age v10 Number of days of work technicians >3 months Number of days of permanent unemployment v49 (during the two years period before…) Bearing in mind the assumptions… Conditional Independence Assumption Population A Counterfactual Treatment action Population B Counterfactual Treatment action • We assume that if we can control for observable differences in characteristics between the beneficiares and non-treated population, the outcome (observable change) that would result in the absence of treatment (counterfactual action) is the same in both populations. • Ergo, we assume that unobservables do not affect the outcomes! Propensity score matching (1-1; nearest neighbour) Beneficiaries (N=5 065) Eligible non participants Control group (N=126 633) (N=5 065) ps= 0,8 ps= 0,1 ps= 0,4 ps= 0,5 ps= 0,9 ps= 0,6 ps= 0,2 ps= 0,1 ps= 0,3 ps= 0,2 ps= 0,01 ps= 0,3 ps= 0,8 ps= 0,9 ps= 0,4 What we have achieved using PSM? 0,259 0,132 0,024 0,012 0,075 0,694 0,072 0,121 0,032 0,087 21,932 159,267 0,251 0,065 0,248 Eligible non participants 0,433 0,242 0,189 0,033 0,260 0,382 0,044 0,086 0,077 0,272 23,302 366,093 0,145 0,192 0,189 Control group 0,258 0,138 0,025 0,010 0,073 0,693 0,076 0,122 0,031 0,089 21,952 150,804 0,258 0,061 0,242 Standardized difference in % 0,3 -1,6 -0,1 1,3 0,7 0,3 -2,0 -0,2 0,4 -0,2 -1,0 1,8 -2,0 1,3 1,4 473,867 819,623 483,460 -1,6 299,207 447,247 304,967 -1,6 0,380 0,262 0,378 0,5 < 1 month 0,062 0,072 0,062 0,0 >1 month but <3 months 0,121 0,153 0,123 -0,5 0,437 0,512 0,438 -0,1 233,624 330,349 267,151 -13,7 Variable Beneficiaries v47 Having the right to unemployment benefit Profession Education v3 Sex (male) v5 Marital status (married) Primary Lower secondary Basic vocational v6 Secondary Post-secondary Higher v7 Single parenting v8 Number of children v9 Age v10 Number of days of work technicians v17 industrial wokers/craftsman workers without occupation Number of days being unemployed before v45 participating in the project Number of days receiving the unemployment v46 benefit before… without the right >3 months Number of days of permanent unemployment v49 (during the two years period before…) Employment rate Impact 50% 45% 40% 35% 30% 25% 20% 15% 10% 5% 0% 0 1 Beneficiaries 2 3 4 Control group 5 6 7 8 9 10 Non-treated population 11 12 Month Source: Ex-post evaluation of Phare 2003 Economic and Social Cohesion – Human Resources Development component, PAED, Warsaw 2007 Impact Month after participation in the project A. Beneficiaries B. Control group C. Eligible non participants A-B: Impact T test A-B* 0 0,00% 0,00% 0,00% 0,00% - 1 21,86% 20,04% 18,26% 1,82% + 2 25,19% 22,29% 20,83% 2,90% + 3 27,84% 24,80% 22,98% 3,04% + 4 30,48% 26,87% 24,94% 3,61% + 5 32,73% 29,10% 26,56% 3,63% + 6 35,28% 30,86% 28,09% 4,42% + 7 37,67% 32,60% 29,59% 5,07% + 8 39,80% 34,43% 30,84% 5,37% + 9 41,64% 35,60% 32,00% 6,04% + 10 43,65% 36,58% 32,97% 7,07% + 11 45,17% 38,28% 34,04% 6,89% + 12 46,22% 39,23% 34,93% 6,99% + Cost-benefit analysis Money spent € 4 090 702 Employment rate after 12 months (observed change) 46% Number of beneficiares that found the job 2 602 Average cost € 1 572 Impact 7% Estimated number of beneficiares that found the job due to the participation in the project 396 Average cost € 10 330 (Counter)example 2 – Entrepreneurship promotion project • Objective of the project: encouraging business activities among unemployed people. • Beneficiaries: unemployed people (with priority to young job-seekers). • Type of services: initial business training; guidance on conducting economic activities; training allowance; relevant specialised training; coaching after setting up a business. • Time of implementation: 2004-2005. • Evaluation framework: the same approach as in the @lternativa II exaple (the same methodology, source of data, analysis...). Self-employment rate Impact? 30% 25% 20% 15% 10% 5% 0% 0 1 2 3 Beneficiaries 4 5 6 7 Control group 8 9 10 11 12 Month Source: Ex-post evaluation of Phare 2002 Economic and Social Cohesion – Human Resources Development component, PAED, Warsaw 2006 Lessons learned/points for the discussion What data we were lacking in both examples? ◦ Missing covariates? (Are our assumptions plausible?) ◦ Missing outcome variables? What do we know and what we don't know after completing the evaluation (towards theory based impact evaluation)? How we could modify the plan of the evaluaton to get more insight on impacts (targeting issue)? What is the avaibility of systems such as PULS in other EU countries (looking for possibilities of implementing IE)? What is the utility of data collected in public statistics? Do we need new data systems for IE or maybe we need to modify existing ones? (towards more systematic discussion on IE planning). Thank you!!!