Priority to unemployed immigrants? A causal machine learning evaluation of training in Belgium

Based on administrative data on unemployed in Belgium, we estimate the labour market effects of three training programmes at various aggregation levels using Modified Causal Forests, a causal machine learning estimator. While all programmes have positive effects after the lock-in period, we find substantial heterogeneity in effectiveness across programmes and unemployed. Simulations show that “black-box” reassignment rules that respect capacity constraints on average, increase, respectively decrease, the time spent in employment, respectively unemployment, by more than one month within 30 mont... Mehr ...

Verfasser: Cockx, Bart
Lechner, Michael
Bollens, Joost
Dokumenttyp: journalarticle
Erscheinungsdatum: 2023
Schlagwörter: Business and Economics / Social Sciences / Law and Political Science / Policy evaluation / Economics and Econometrics / active labour market policy / causal machine learning / modified causal forest / conditional average treatment effects
Sprache: Englisch
Permalink: https://search.fid-benelux.de/Record/base-27379575
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : https://biblio.ugent.be/publication/01GK7MJBYVJDW45QCM01NK44YC

Based on administrative data on unemployed in Belgium, we estimate the labour market effects of three training programmes at various aggregation levels using Modified Causal Forests, a causal machine learning estimator. While all programmes have positive effects after the lock-in period, we find substantial heterogeneity in effectiveness across programmes and unemployed. Simulations show that “black-box” reassignment rules that respect capacity constraints on average, increase, respectively decrease, the time spent in employment, respectively unemployment, by more than one month within 30 months of programme start. A shallow policy tree delivers a simple rule that realizes about 85% of this gain.