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Fairness-Oriented Learning for Optimal Individualized Treatment Rules

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  • Ethan X. Fang
  • Zhaoran Wang
  • Lan Wang

Abstract

There has recently been a surge on the methodological development for optimal individualized treatment rule (ITR) estimation. The standard methods in the literature are designed to maximize the potential average performance (assuming larger outcomes are desirable). A notable drawback of the standard approach, due to heterogeneity in treatment response, is that the estimated optimal ITR may be suboptimal or even detrimental to certain disadvantaged subpopulations. Motivated by the importance of incorporating an appropriate fairness constraint in optimal decision making (e.g., assign treatment with protection to those with shorter survival time, or assign a job training program with protection to those with lower wages), we propose a new framework that aims to estimate an optimal ITR to maximize the average value with the guarantee that its tail performance exceeds a prespecified threshold. The optimal fairness-oriented ITR corresponds to a solution of a nonconvex optimization problem. To handle the computational challenge, we develop a new efficient first-order algorithm. We establish theoretical guarantees for the proposed estimator. Furthermore, we extend the proposed method to dynamic optimal ITRs. The advantages of the proposed approach over existing methods are demonstrated via extensive numerical studies and real data analysis.

Suggested Citation

  • Ethan X. Fang & Zhaoran Wang & Lan Wang, 2023. "Fairness-Oriented Learning for Optimal Individualized Treatment Rules," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 118(543), pages 1733-1746, July.
  • Handle: RePEc:taf:jnlasa:v:118:y:2023:i:543:p:1733-1746
    DOI: 10.1080/01621459.2021.2008402
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    Cited by:

    1. Anders Bredahl Kock & David Preinerstorfer, 2024. "Regularizing Discrimination in Optimal Policy Learning with Distributional Targets," Papers 2401.17909, arXiv.org.

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