• Medientyp: E-Book; Bericht
  • Titel: What Is the Value Added by Using Causal Machine Learning Methods in a Welfare Experiment Evaluation?
  • Beteiligte: Strittmatter, Anthony [VerfasserIn]
  • Erschienen: Essen: Global Labor Organization (GLO), 2019
  • Sprache: Englisch
  • Schlagwörter: H75 ; conditional average treatment effects ; Labor supply ; J31 ; J22 ; random forest ; I38 ; individualized treatment effects ; C21
  • Entstehung:
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  • Beschreibung: Recent studies have proposed causal machine learning (CML) methods to estimate conditional average treatment effects (CATEs). In this study, I investigate whether CML methods add value compared to conventional CATE estimators by re-evaluating Connecticut's Jobs First welfare experiment. This experiment entails a mix of positive and negative work incentives. Previous studies show that it is hard to tackle the effect heterogeneity of Jobs First by means of CATEs. I report evidence that CML methods can provide support for the theoretical labor supply predictions. Furthermore, I document reasons why some conventional CATE estimators fail and discuss the limitations of CML methods.
  • Zugangsstatus: Freier Zugang