Rerandomization and Regression Adjustment
Xinran Li, Peng Ding

TL;DR
This paper demonstrates that combining rerandomization in experimental design with regression adjustment in analysis improves the precision and coverage of treatment effect estimates, providing a unified theoretical framework.
Contribution
It extends classical ANCOVA to a broader class of regression adjustments and establishes a unified theory for rerandomization and regression adjustment under the randomization-inference framework.
Findings
Rerandomization never harms sampling or estimated precision asymptotically.
Regression adjustment never harms estimated precision.
Combining rerandomization and regression adjustment improves statistical inference.
Abstract
Randomization is a basis for the statistical inference of treatment effects without strong assumptions on the outcome-generating process. Appropriately using covariates further yields more precise estimators in randomized experiments. R. A. Fisher suggested blocking on discrete covariates in the design stage or conducting analysis of covariance (ANCOVA) in the analysis stage. We can embed blocking into a wider class of experimental design called rerandomization, and extend the classical ANCOVA to more general regression adjustment. Rerandomization trumps complete randomization in the design stage, and regression adjustment trumps the simple difference-in-means estimator in the analysis stage. It is then intuitive to use both rerandomization and regression adjustment. Under the randomization-inference framework, we establish a unified theory allowing the designer and analyzer to have…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Statistical Methods in Clinical Trials
