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Optimal Model Selection for Conformalized Robust Optimization

Optimal Model Selection for Conformalized Robust Optimization

来源:Arxiv_logoArxiv
英文摘要

In decision-making under uncertainty, Contextual Robust Optimization (CRO) provides reliability by minimizing the worst-case decision loss over a prediction set, hedging against label variability. While recent advances use conformal prediction to construct prediction sets for machine learning models, the downstream decisions critically depend on model selection. This paper introduces novel model selection frameworks for CRO that unify robustness control with decision risk minimization. We first propose Conformalized Robust Optimization with Model Selection (CROMS), which automatically selects models to approximately minimize the average decision risk in CRO solutions. We develop two algorithms: E-CROMS, which is computationally efficient, and F-CROMS, which enjoys a marginal robustness guarantee in finite samples. Further, we introduce Conformalized Robust Optimization with Individualized Model Selection (CROiMS), which performs individualized model selection by minimizing the conditional decision risk given the covariate of test data. This framework advances conformal prediction methodology by enabling covariate-aware model selection. Theoretically, CROiMS achieves asymptotic conditional robustness and decision efficiency under mild assumptions. Numerical results demonstrate significant improvements in decision efficiency and robustness across diverse synthetic and real-world applications, outperforming baseline approaches.

Yajie Bao、Yang Hu、Haojie Ren、Peng Zhao、Changliang Zou

自动化基础理论计算技术、计算机技术

Yajie Bao,Yang Hu,Haojie Ren,Peng Zhao,Changliang Zou.Optimal Model Selection for Conformalized Robust Optimization[EB/OL].(2025-07-07)[2025-07-21].https://arxiv.org/abs/2507.04716.点此复制

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