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Testing for covariate balance using quantile regression and resampling methods

机译:使用分位数回归和重采样方法测试协变量平衡

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Consistency of propensity score matching estimators hinges on the propensity score's ability to balance the distributions of covariates in the pools of treated and non-treated units. Conventional balance tests merely check for differences in covariates' means, but cannot account for differences in higher moments. For this reason, this paper proposes balance tests which test for differences in the entire distributions of continuous covariates based on quantile regression (to derive Kolmogorov-Smirnov and Cramer-von-Mises-Smirnov-type test statistics) and resampling methods (for inference). Simulations suggest that these methods are very powerful and capture imbalances related to higher moments when conventional balance tests fail to do so.
机译:倾向得分匹配估计量的一致性取决于倾向得分平衡已处理和未处理单元池中协变量分布的能力。传统的平衡测试仅检查协变量均值的差异,而不能考虑较高时刻的差异。因此,本文提出了平衡测试,该测试基于分位数回归(得出Kolmogorov-Smirnov和Cramer-von-Mises-Smirnov型检验统计量)和重采样方法(用于推断)来检验连续协变量的整个分布的差异。 。仿真表明,这些方法功能非常强大,并且可以捕获与传统平衡测试无法做到的更高时刻有关的不平衡。

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