Abstract
This paper introduces an innovative Bayesian machine learning algorithm to draw interpretable inference on heterogeneous causal effects in the presence of imperfect compliance (e.g., under an irregular assignment mechanism). We show, through Monte Carlo simulations, that the proposed Bayesian Causal Forest with Instrumental Variable (BCF-IV) methodology outperforms other machine learning techniques tailored for causal inference in discovering and estimating the heterogeneous causal effects while controlling for the familywise error rate (or, less stringently, for the false discovery rate) at leaves’ level. BCF-IV sheds a light on the heterogeneity of causal effects in instrumental variable scenarios and, in turn, provides the policy-makers with a relevant tool for targeted policies. Its empirical application evaluates the effects of additional funding on students’ performances. The results indicate that BCF-IV could be used to enhance the effectiveness of school funding on students’ performance.
Funding Statement
Falco J. Bargagli-Stoffi acknowledges funding from the Alfred P. Sloan Foundation Grant for the development of “Causal Inference with Complex Treatment Regimes: Design, Identification, Estimation, and Heterogeneity” and funding from the 2021 Harvard Data Science Initiative Postdoctoral Research Fund Award.
Kristof De Witte acknowledges funding from Steunpunt SONO and KU Leuven (C24/18/005).
Acknowledgments
We thank the Associate Editor and two anonymous referees for helpful comments.
Citation
Falco J. Bargagli-Stoffi. Kristof De Witte. Giorgio Gnecco. "Heterogeneous causal effects with imperfect compliance: A Bayesian machine learning approach." Ann. Appl. Stat. 16 (3) 1986 - 2009, September 2022. https://doi.org/10.1214/21-AOAS1579
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