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A sequential classification learning for estimating quantile optimal treatment regimes

A sequential classification learning for estimating quantile optimal treatment regimes

来源:Arxiv_logoArxiv
英文摘要

Quantile optimal treatment regimes (OTRs) aim to assign treatments that maximize a specified quantile of patients' outcomes. Compared to treatment regimes that target the mean outcomes, quantile OTRs offer fairer regimes when a lower quantile is selected, as it focuses on improving outcomes for individuals who would otherwise experience relatively poor results. In this paper, we propose a novel method for estimating quantile OTRs by reformulating the problem as a sequential classification task. This reformulation enables us to leverage the powerful machine learning technique to enhance computational efficiency and handle complex decision boundaries. We also investigate the estimation of quantile OTRs when outcomes are discrete, a setting that has received limited attention in the literature. A key challenge is that direct extensions of existing methods to discrete outcomes often lead to inconsistency and ineffectiveness issues. To overcome this, we introduce a smoothing technique that maps discrete outcomes to continuous surrogates, enabling consistent and effective estimation. We provide theoretical guarantees to support our methodology, and demonstrate its superior performance through comprehensive simulation studies and real-data analysis.

Junwen Xia、Jingxiao Zhang、Dehan Kong

医学研究方法计算技术、计算机技术

Junwen Xia,Jingxiao Zhang,Dehan Kong.A sequential classification learning for estimating quantile optimal treatment regimes[EB/OL].(2025-07-15)[2025-08-02].https://arxiv.org/abs/2507.11255.点此复制

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