LGMLMay 18

Adaptive Experimentation for Censored Survival Outcomes

arXiv:2605.1845957.9
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This work addresses the problem of efficient causal effect estimation in adaptive experiments with censored survival outcomes, which is a known bottleneck in clinical trials and reliability analysis.

The paper develops an adaptive experimentation framework for survival data with right censoring, deriving a closed-form efficiency-optimal allocation policy and the Adaptive Survival Estimator (ASE). The method achieves consistent efficiency gains over uniform randomization and censoring-agnostic baselines in numerical experiments.

Adaptive experimentation enables efficient estimation of causal effects, but existing methods are not designed for survival data with censoring, where event times are only partially observed (e.g., overall survival in cancer trials but with dropout). In this paper, we develop a novel framework for adaptive experimentation to estimate causal effects under right censoring. For this, we derive the semiparametric efficiency bound for the average survival effect curve as a function of the treatment allocation policy and thereby obtain a closed-form efficiency-optimal allocation policy. The policy generalizes classical Neyman allocation to survival settings by prioritizing patient strata where both event and censoring dynamics induce high uncertainty. Building on this, we propose the Adaptive Survival Estimator (ASE), an adaptive framework that learns the allocation policy and estimates the average survival effect curve sequentially. Our framework has three main benefits: (i) it accommodates arbitrary machine learning models for nuisance estimation; (ii) it is guided by a closed-form efficiency-optimal allocation policy; and (iii) it admits strong theoretical guarantees, including asymptotic normality via a martingale central limit theorem. We demonstrate our framework across various numerical experiments to show consistent efficiency gains over uniform randomization and censoring-agnostic baselines.

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