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Data-Automated Policy Learning for Nonlinear Welfare

Author

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  • Chunrong Ai
  • Zeqi Wu
  • Zheng Zhang

Abstract

This paper explores policy learning from observational data, focusing on a nonlinear welfare criterion in a binary treatment setting. The nonlinear criterion is inspired by scenarios where policymakers prioritize specific population segments. We model this criterion using a utility function that encompasses potential outcomes and intermediate parameters, with the latter capturing higher moments of the outcome distributions. When formulated in the context of observational data, both the intermediate parameters and the welfare criterion depend on the propensity score, which we estimate using machine-learning techniques. To address bias in machine learning estimates, we introduce a novel reweighting-based debiasing approach that offers a promising alternative to traditional orthogonality-based methods. To tackle the complexities of infinite-dimensional policy spaces, we employ sieve approximations and $K$-fold cross-validation for model selection, thereby fully automating the policy-learning process. Despite these complexities, we demonstrate that both the welfare regret and the average welfare regret of our proposed policy learning method satisfy an oracle inequality, thereby providing theoretical guarantees on the performance of the estimated policy relative to the best possible policy. This finding extends the existing results from linear to nonlinear welfare criteria, from finite-dimensional to infinite-dimensional policy spaces, and from a known propensity score to a machine-learned one.

Suggested Citation

  • Chunrong Ai & Zeqi Wu & Zheng Zhang, 2026. "Data-Automated Policy Learning for Nonlinear Welfare," Papers 2606.01659, arXiv.org.
  • Handle: RePEc:arx:papers:2606.01659
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    File URL: http://arxiv.org/pdf/2606.01659
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