Rerandomization with Diminishing Covariate Imbalance and Diverging Number of Covariates
Yuhao Wang, Xinran Li

TL;DR
This paper demonstrates that rerandomization with diminishing covariate imbalance as sample size grows can achieve optimal precision and robustness, bridging the gap between randomization and optimal design philosophies.
Contribution
It establishes conditions under which rerandomization attains optimal precision while maintaining robustness, using a refined asymptotic analysis for large samples.
Findings
Rerandomization with diminishing imbalance achieves optimal precision.
Conditions on covariate number ensure desired asymptotic properties.
Theoretical insights reconcile randomization and optimal design philosophies.
Abstract
Completely randomized experiments have been the gold standard for drawing causal inference because they can balance all potential confounding on average. However, they may suffer from unbalanced covariates for realized treatment assignments. Rerandomization, a design that rerandomizes the treatment assignment until a prespecified covariate balance criterion is met, has recently got attention due to its easy implementation, improved covariate balance and more efficient inference. Researchers have then suggested to use the treatment assignments that minimize the covariate imbalance, namely the optimally balanced design. This has caused again the long-time controversy between two philosophies for designing experiments: randomization versus optimal and thus almost deterministic designs. Existing literature argued that rerandomization with overly balanced observed covariates can lead to…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods in Clinical Trials · Statistical Methods and Inference
