What is the Value Added by using Causal Machine Learning Methods in a Welfare Experiment Evaluation?
I investigate causal machine learning (CML) methods to estimate effect heterogeneity by means of conditional average treatment effects (CATEs). In particular, I study whether the estimated effect heterogeneity can provide evidence for the theoretical labour supply predictions of Connecticut's Jobs First welfare experiment. For this application, Bitler, Gelbach, and Hoynes (2017) show that standard CATE estimators fail to provide evidence for theoretical labour supply predictions. Therefore, this is an interesting benchmark to showcase the value added by using CML methods. I report evidence that the CML estimates of CATEs provide support for the theoretical labour supply predictions. Furthermore, I document some reasons why standard CATE estimators fail to provide evidence for the theoretical predictions. However, I show the limitations of CML methods that prevent them from identifying all the effect heterogeneity of Jobs First.
H75 - State and Local Government: Health, Education, and Welfare ; I38 - Government Policy; Provision and Effects of Welfare Programs ; J22 - Time Allocation and Labor Supply ; J31 - Wage Level and Structure; Wage Differentials by Skill, Training, Occupation, etc ; C21 - Cross-Sectional Models; Spatial Models