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Main Authors: Mascolo, Federica, Bearth, Nora, Muny, Fabian, Lechner, Michael, Mareckova, Jana
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.23322
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author Mascolo, Federica
Bearth, Nora
Muny, Fabian
Lechner, Michael
Mareckova, Jana
author_facet Mascolo, Federica
Bearth, Nora
Muny, Fabian
Lechner, Michael
Mareckova, Jana
contents Active labor market policies are widely used by the Swiss government, enrolling over half of all unemployed individuals. This paper evaluates the effectiveness of Swiss programs in improving employment and earnings outcomes using causal machine learning and rich administrative data on unemployed individuals in 2014 and 2015, including detailed labor market histories and other covariates. The findings for Swiss citizens and immigrants with permanent residency indicate a small positive average effect of a Temporary Wage Subsidy program on employment and earnings in the third year after program start. In contrast, Basic Courses, such as job application training, exhibit negative effects on both outcomes over the same period. No significant impacts are found for Employment Programs conducted outside the regular labor market or for Training Courses such as language or computer classes. The programs are most effective for individuals with a non-EU migration background, while Temporary Wage Subsidies also benefit those with lower educational attainment. Finally, shallow policy trees provide practical guidance for improving the targeting of program assignments.
format Preprint
id arxiv_https___arxiv_org_abs_2410_23322
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle From Average Effects to Targeted Assignment: A Causal Machine Learning Analysis of Swiss Active Labor Market Policies
Mascolo, Federica
Bearth, Nora
Muny, Fabian
Lechner, Michael
Mareckova, Jana
General Economics
Economics
Active labor market policies are widely used by the Swiss government, enrolling over half of all unemployed individuals. This paper evaluates the effectiveness of Swiss programs in improving employment and earnings outcomes using causal machine learning and rich administrative data on unemployed individuals in 2014 and 2015, including detailed labor market histories and other covariates. The findings for Swiss citizens and immigrants with permanent residency indicate a small positive average effect of a Temporary Wage Subsidy program on employment and earnings in the third year after program start. In contrast, Basic Courses, such as job application training, exhibit negative effects on both outcomes over the same period. No significant impacts are found for Employment Programs conducted outside the regular labor market or for Training Courses such as language or computer classes. The programs are most effective for individuals with a non-EU migration background, while Temporary Wage Subsidies also benefit those with lower educational attainment. Finally, shallow policy trees provide practical guidance for improving the targeting of program assignments.
title From Average Effects to Targeted Assignment: A Causal Machine Learning Analysis of Swiss Active Labor Market Policies
topic General Economics
Economics
url https://arxiv.org/abs/2410.23322