2022
DOI: 10.48550/arxiv.2210.16547
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Flexible machine learning estimation of conditional average treatment effects: a blessing and a curse

Abstract: Causal inference from observational data requires untestable assumptions. If these assumptions apply, machine learning (ML) methods can be used to study complex forms of causal-effect heterogeneity. Several ML methods were developed recently to estimate the conditional average treatment effect (CATE). If the features at hand cannot explain all heterogeneity, the individual treatment effects (ITEs) can seriously deviate from the CATE. In this work, we demonstrate how the distributions of the ITE and the estimat… Show more

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