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Main Authors: Zhang, Yue, Luo, Shanshan, Geng, Zhi, He, Yangbo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.12321
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author Zhang, Yue
Luo, Shanshan
Geng, Zhi
He, Yangbo
author_facet Zhang, Yue
Luo, Shanshan
Geng, Zhi
He, Yangbo
contents In precision medicine, one of the most important problems is estimating the optimal individualized treatment rules (ITR), which typically involves recommending treatment decisions based on fully observed individual characteristics of patients to maximize overall clinical benefit. In practice, however, there may be missing covariates that are not necessarily confounders, and it remains uncertain whether these missing covariates should be included for learning optimal ITRs. In this paper, we propose a covariate-balancing doubly robust estimator for constructing optimal ITRs, which is particularly suitable for situations with additional predictive covariates. The proposed method is based on two main steps: First, the propensity scores are estimated by solving the covariate-balancing equation. Second, an objective function is minimized to estimate the outcome model, with the function defined by the asymptotic variance under the correctly specified propensity score. The method has three significant advantages: (i) It is doubly robust, ensuring consistency when either the propensity score or outcome model is correctly specified. (ii) It minimizes variance within the class of augmented inverse probability weighted estimators. (iii) When applied to partially observed covariates related to the outcome, the method may further improve estimation efficiency. We demonstrate the proposed method through extensive numerical simulations and two real-world datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2510_12321
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal Treatment Rules under Missing Predictive Covariates: A Covariate-Balancing Doubly Robust Approach
Zhang, Yue
Luo, Shanshan
Geng, Zhi
He, Yangbo
Methodology
Statistics Theory
In precision medicine, one of the most important problems is estimating the optimal individualized treatment rules (ITR), which typically involves recommending treatment decisions based on fully observed individual characteristics of patients to maximize overall clinical benefit. In practice, however, there may be missing covariates that are not necessarily confounders, and it remains uncertain whether these missing covariates should be included for learning optimal ITRs. In this paper, we propose a covariate-balancing doubly robust estimator for constructing optimal ITRs, which is particularly suitable for situations with additional predictive covariates. The proposed method is based on two main steps: First, the propensity scores are estimated by solving the covariate-balancing equation. Second, an objective function is minimized to estimate the outcome model, with the function defined by the asymptotic variance under the correctly specified propensity score. The method has three significant advantages: (i) It is doubly robust, ensuring consistency when either the propensity score or outcome model is correctly specified. (ii) It minimizes variance within the class of augmented inverse probability weighted estimators. (iii) When applied to partially observed covariates related to the outcome, the method may further improve estimation efficiency. We demonstrate the proposed method through extensive numerical simulations and two real-world datasets.
title Optimal Treatment Rules under Missing Predictive Covariates: A Covariate-Balancing Doubly Robust Approach
topic Methodology
Statistics Theory
url https://arxiv.org/abs/2510.12321