2022
DOI: 10.48550/arxiv.2201.12692
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Meta-Learners for Estimation of Causal Effects: Finite Sample Cross-Fit Performance

Abstract: Estimation of causal effects using machine learning methods has become an active research field in econometrics. In this paper, we study the finite sample performance of meta-learners for estimation of heterogeneous treatment effects under the usage of sample-splitting and cross-fitting to reduce the overfitting bias. In both synthetic and semi-synthetic simulations we find that the performance of the meta-learners in finite samples greatly depends on the estimation procedure. The results imply that sample-spl… Show more

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