English

Bayesian Criterion for Re-randomization

Methodology 2023-09-20 v2

Abstract

Re-randomization has gained popularity as a tool for experiment-based causal inference due to its superior covariate balance and statistical efficiency compared to classic randomized experiments. However, the basic re-randomization method, known as ReM, and many of its extensions have been deemed sub-optimal as they fail to prioritize covariates that are more strongly associated with potential outcomes. To address this limitation and design more efficient re-randomization procedures, a more precise quantification of covariate heterogeneity and its impact on the causal effect estimator is in a great appeal. This work fills in this gap with a Bayesian criterion for re-randomization and a series of novel re-randomization procedures derived under such a criterion. Both theoretical analyses and numerical studies show that the proposed re-randomization procedures under the Bayesian criterion outperform existing ReM-based procedures significantly in effectively balancing covariates and precisely estimating the unknown causal effect.

Keywords

Cite

@article{arxiv.2303.07904,
  title  = {Bayesian Criterion for Re-randomization},
  author = {Zhaoyang Liu and Tingxuan Han and Donald B. Rubin and Ke Deng},
  journal= {arXiv preprint arXiv:2303.07904},
  year   = {2023}
}