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Main Authors: Kubota, Kohsuke, Takahashi, Mitsuhiro, Saito, Yuta
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.22900
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author Kubota, Kohsuke
Takahashi, Mitsuhiro
Saito, Yuta
author_facet Kubota, Kohsuke
Takahashi, Mitsuhiro
Saito, Yuta
contents Optimizing survival outcomes, such as patient survival or customer retention, is a critical objective in data-driven decision-making. Off-Policy Evaluation~(OPE) provides a powerful framework for assessing such decision-making policies using logged data alone, without the need for costly or risky online experiments in high-stakes applications. However, typical estimators are not designed to handle right-censored survival outcomes, as they ignore unobserved survival times beyond the censoring time, leading to systematic underestimation of the true policy performance. To address this issue, we propose a novel framework for OPE and Off-Policy Learning~(OPL) tailored for survival outcomes under censoring. Specifically, we introduce IPCW-IPS and IPCW-DR, which employ the Inverse Probability of Censoring Weighting technique to explicitly deal with censoring bias. We theoretically establish that our estimators are unbiased and that IPCW-DR achieves double robustness, ensuring consistency if either the propensity score or the outcome model is correct. Furthermore, we extend this framework to constrained OPL to optimize policy value under budget constraints. We demonstrate the effectiveness of our proposed methods through simulation studies and illustrate their practical impacts using public real-world data for both evaluation and learning tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2603_22900
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Off-Policy Evaluation and Learning for Survival Outcomes under Censoring
Kubota, Kohsuke
Takahashi, Mitsuhiro
Saito, Yuta
Methodology
Artificial Intelligence
Machine Learning
Optimizing survival outcomes, such as patient survival or customer retention, is a critical objective in data-driven decision-making. Off-Policy Evaluation~(OPE) provides a powerful framework for assessing such decision-making policies using logged data alone, without the need for costly or risky online experiments in high-stakes applications. However, typical estimators are not designed to handle right-censored survival outcomes, as they ignore unobserved survival times beyond the censoring time, leading to systematic underestimation of the true policy performance. To address this issue, we propose a novel framework for OPE and Off-Policy Learning~(OPL) tailored for survival outcomes under censoring. Specifically, we introduce IPCW-IPS and IPCW-DR, which employ the Inverse Probability of Censoring Weighting technique to explicitly deal with censoring bias. We theoretically establish that our estimators are unbiased and that IPCW-DR achieves double robustness, ensuring consistency if either the propensity score or the outcome model is correct. Furthermore, we extend this framework to constrained OPL to optimize policy value under budget constraints. We demonstrate the effectiveness of our proposed methods through simulation studies and illustrate their practical impacts using public real-world data for both evaluation and learning tasks.
title Off-Policy Evaluation and Learning for Survival Outcomes under Censoring
topic Methodology
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2603.22900