Inference for Optimal Linear Treatment Regimes in Personalized Decision-making
Yuwen Cheng, Shu Yang

TL;DR
This paper investigates the asymptotic behavior of estimated linear treatment regimes in personalized decision-making, revealing a cube-root convergence and proposing a bootstrap method for valid inference.
Contribution
It characterizes the non-normal limiting distribution of linear regimes and introduces a bootstrap approach for consistent inference, filling a gap in existing methodology.
Findings
Parameter converges at cube-root rate to a non-normal distribution
Standard bootstrap is invalid for inference in this setting
Proposed bootstrap method provides consistent distributional approximation
Abstract
Personalized decision-making, tailored to individual characteristics, is gaining significant attention. The optimal treatment regime aims to provide the best-expected outcome in the entire population, known as the value function. One approach to determine this optimal regime is by maximizing the Augmented Inverse Probability Weighting (AIPW) estimator of the value function. However, the derived treatment regime can be intricate and nonlinear, limiting their use. For clarity and interoperability, we emphasize linear regimes and determine the optimal linear regime by optimizing the AIPW estimator within set constraints. While the AIPW estimator offers a viable path to estimating the optimal regime, current methodologies predominantly focus on its asymptotic distribution, leaving a gap in studying the linear regime itself. However, there are many benefits to understanding the regime, as…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Causal Inference Techniques · Statistical and Computational Modeling
