Covariate Shift Corrected Conditional Randomization Test
Bowen Xu, Yiwen Huang, Chuan Hong, Shuangning Li, Molei Liu

TL;DR
This paper introduces a covariate shift corrected conditional randomization test that maintains error control and improves power in the presence of distributional differences between source and target populations.
Contribution
It proposes the csPCR test, integrating importance weights and control variates to adapt CRT for covariate shifts, with theoretical error control and empirical performance validation.
Findings
Maintains Type-I error control under covariate shift.
Demonstrates superior power compared to traditional methods.
Successfully applied to COVID-19 treatment data.
Abstract
Conditional independence tests are crucial across various disciplines in determining the independence of an outcome variable from a treatment variable , conditioning on a set of confounders . The Conditional Randomization Test (CRT) offers a powerful framework for such testing by assuming known distributions of ; it controls the Type-I error exactly, allowing for the use of flexible, black-box test statistics. In practice, testing for conditional independence often involves using data from a source population to draw conclusions about a target population. This can be challenging due to covariate shift -- differences in the distribution of , , and surrogate variables, which can affect the conditional distribution of -- rendering traditional CRT approaches invalid. To address this issue, we propose a novel Covariate Shift Corrected Pearson…
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Taxonomy
TopicsOptimal Experimental Design Methods · Advanced Statistical Methods and Models · Statistical Methods and Inference
