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Trading-off Bias and Variance in Stratified Experiments and in Matching Studies, Under a Boundedness Condition on the Magnitude of the Treatment Effect

Abstract

I consider estimation of the average treatment effect (ATE), in a population composed of SS groups or units, when one has unbiased estimators of each group's conditional average treatment effect (CATE). These conditions are met in stratified experiments and in matching studies. I assume that each CATE is bounded in absolute value by BB standard deviations of the outcome, for some known BB. This restriction may be appealing: outcomes are often standardized in applied work, so researchers can use available literature to determine a plausible value for BB. I derive, across all linear combinations of the CATEs' estimators, the minimax estimator of the ATE. In two stratified experiments, my estimator has twice lower worst-case mean-squared-error than the commonly-used strata-fixed effects estimator. In a matching study with limited overlap, my estimator achieves 56\% of the precision gains of a commonly-used trimming estimator, and has an 11 times smaller worst-case mean-squared-error.

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