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.
翻译:与典型随机实验相比,重新自发性作为一种实验性因果推断工具的普及程度有所提高,因为其优异的共变平衡和统计效率高于典型的随机实验。然而,基本的重新自发方法(称为REM)及其许多扩展被认为不够理想,因为它们没有优先考虑与潜在结果更密切相关的共变方法。为了解决这一限制和设计更有效的重新自发性程序,更准确地量化共变异性及其对因果关系估计器的影响是一项巨大的吸引力。这项工作填补了这一空白,采用了巴耶斯人重新自发标准以及根据这一标准得出的一系列新的重新自发程序。理论分析和数字研究表明,根据巴伊西亚标准提议的重新自发性程序大大超越了现有的重新自控程序,从而有效地平衡了共变和准确估计未知因果效应。</s>