Priority to Unemployed Immigrants? A Causal Machine Learning Evaluation of Training in Belgium

We investigate heterogenous employment effects of Flemish training programmes. Based on administrative individual data, we analyse programme effects at various aggregation levels using Modified Causal Forests (MCF), a causal machine learning estimator for multiple programmes. While all programmes have positive effects after the lock-in period, we find substantial heterogeneity across programmes and types of unemployed. Simulations show that assigning unemployed to programmes that maximise individual gains as identified in our estimation can considerably improve effectiveness. Simplified rules,... Mehr ...

Verfasser: Cockx, Bart
Lechner, Michael
Bollens, Joost
Dokumenttyp: doc-type:workingPaper
Erscheinungsdatum: 2019
Verlag/Hrsg.: Bonn: Institute of Labor Economics (IZA)
Schlagwörter: ddc:330 / J68 / policy evaluation / active labour market policy / causal machine learning / modified causal forest / conditional average treatment effects
Sprache: Englisch
Permalink: https://search.fid-benelux.de/Record/base-27384468
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : http://hdl.handle.net/10419/215271

We investigate heterogenous employment effects of Flemish training programmes. Based on administrative individual data, we analyse programme effects at various aggregation levels using Modified Causal Forests (MCF), a causal machine learning estimator for multiple programmes. While all programmes have positive effects after the lock-in period, we find substantial heterogeneity across programmes and types of unemployed. Simulations show that assigning unemployed to programmes that maximise individual gains as identified in our estimation can considerably improve effectiveness. Simplified rules, such as one giving priority to unemployed with low employability, mostly recent migrants, lead to about half of the gains obtained by more sophisticated rules.