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arXiv 提交日期: 2026-05-11
📄 Abstract - Selection of the Best Policy under Fairness Constraints for Subpopulations

Many high-stakes decisions in health care, public policy, and clinical development require committing to a single policy that will be applied uniformly across a heterogeneous population. Regulatory and fairness standards sometime requires that the chosen policy performs adequately in every pre-specified subpopulation, not only on average. We formalize this as a Selection of the Best with Fairness Constraints (SBFC) problem, in order to identify the policy with the highest average performance among those policies that meet a minimum per-subpopulation threshold. We establish an instance-specific lower bound on sample complexity of the SBFC problem. We then develop a Track-and-Stop with Constraints on Subpopulation (T-a-S-CS) algorithm that achieves the lower bound asymptotically. We extend the framework to general closed-set and penalty-based fairness specifications with matching guarantees. Numerical experiments and a case study using the International Stroke Trial demonstrate substantial efficiency gains over policy-level allocation baselines.

顶级标签: machine learning reinforcement learning theory
详细标签: fairness constraints subpopulations sample complexity policy selection algorithm 或 搜索:

亚群体公平约束下的最优政策选择 / Selection of the Best Policy under Fairness Constraints for Subpopulations


1️⃣ 一句话总结

本文提出了一种在医疗、公共政策等领域中,如何在保证每个子群体(如不同年龄或种族人群)均满足最低性能要求的前提下,从多个备选政策中选出平均效果最好的政策的方法,并开发了一种高效算法来减少所需的数据量。

源自 arXiv: 2605.09945