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首页> 外文期刊>Journal of business & economic statistics >The Finite Sample Performance of Inference Methods for Propensity Score Matching and Weighting Estimators
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The Finite Sample Performance of Inference Methods for Propensity Score Matching and Weighting Estimators

机译:倾向得分匹配和加权估计的推理方法的有限样本性能

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This article investigates the finite sample properties of a range of inference methods for propensity score-based matching and weighting estimators frequently applied to evaluate the average treatment effect on the treated. We analyze both asymptotic approximations and bootstrap methods for computing variances and confidence intervals in our simulation designs, which are based on German register data and U.S. survey data. We vary the design w.r.t. treatment selectivity, effect heterogeneity, share of treated, and sample size. The results suggest that in general, theoretically justified bootstrap procedures (i.e., wild bootstrapping for pair matching and standard bootstrapping for "smoother" treatment effect estimators) dominate the asymptotic approximations in terms of coverage rates for both matching and weighting estimators. Most findings are robust across simulation designs and estimators.
机译:本文研究了一系列倾向性方法的有限样本属性,这些方法用于基于倾向得分的匹配和加权估计器,经常用于评估对被治疗者的平均治疗效果。我们在模拟设计中分析了渐近逼近和自举方法,以计算方差和置信区间,这些设计基于德国登记数据和美国调查数据。我们会更改设计处理的选择性,效果的异质性,处理的比例和样本量。结果表明,一般而言,在理论上合理的引导程序(即,用于配对匹配的野生自举和用于“更平滑”治疗效果估计量的标准自举)在匹配和权重估计量的覆盖率方面都主导了渐近近似。大多数发现在仿真设计和估算器中都是可靠的。

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