How to Control for Many Covariates? Reliable Estimators Based on the Propensity Score

M. Huber, M. Lechner, Conny Wunsch
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引用次数: 44

Abstract

We investigate the finite sample properties of a large number of estimators for the average treatment effect on the treated that are suitable when adjustment for observable covariates is required, like inverse probability weighting, kernel and other variants of matching, as well as different parametric models. The simulation design used is based on real data usually employed for the evaluation of labour market programmes in Germany. We vary several dimensions of the design that are of practical importance, like sample size, the type of the outcome variable, and aspects of the selection process. We find that trimming individual observations with too much weight as well as the choice of tuning parameters is important for all estimators. The key conclusion from our simulations is that a particular radius matching estimator combined with regression performs best overall, in particular when robustness to misspecifications of the propensity score is considered an important property.
如何控制多协变量?基于倾向分数的可靠估计器
我们研究了在需要调整可观测协变量时,适用于平均处理效果的大量估计器的有限样本性质,如逆概率加权、核和其他匹配变量,以及不同的参数模型。所使用的模拟设计是根据通常用于评价德国劳动力市场方案的真实数据。我们改变了设计的几个实际重要性的维度,如样本量、结果变量的类型和选择过程的各个方面。我们发现,对于所有估计器来说,用过多的权重修剪单个观测值以及选择调优参数都很重要。从我们的模拟中得出的关键结论是,结合回归的特定半径匹配估计器总体上表现最好,特别是当倾向得分的错误规范的稳健性被认为是一个重要的属性时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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