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Model misspecification and robustness in causal inference: Comparing matching with doubly robust estimation

机译:因果推理中的模型错误指定和鲁棒性:将匹配与双重鲁棒估计进行比较

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In this paper, we compare the robustness properties of a matching estimator with a doubly robust estimator. We describe the robustness properties of matching and subclassification estimators by showing how misspecification of the propensity score model can result in the consistent estimation of an average causal effect. The propensity scores are covariate scores, which are a class of functions that removes bias due to all observed covariates. When matching on a parametric model (e.g., a propensity or a prognostic score), the matching estimator is robust to model misspecifications if the misspecified model belongs to the class of covariate scores. The implication is that there are multiple possibilities for the matching estimator in contrast to the doubly robust estimator in which the researcher has two chances to make reliable inference. In simulations, we compare the finite sample properties of the matching estimator with a simple inverse probability weighting estimator and a doubly robust estimator. For the misspecifications in our study, the mean square error of the matching estimator is smaller than the mean square error of both the simple inverse probability weighting estimator and the doubly robust estimators.
机译:在本文中,我们将匹配估计器的鲁棒性与双重鲁棒估计器进行比较。我们通过显示倾向得分模型的错误指定如何导致对平均因果效应的一致估计,来描述匹配和子分类估计量的鲁棒性。倾向得分是协变量得分,这是一类函数,可消除由于观察到的所有协变量而产生的偏差。当在参数模型(例如倾向或预后分数)上匹配时,如果错误指定的模型属于协变量分数的类别,则匹配估计器对于模型错误指定是健壮的。暗示是,与双重健壮的估计量相比,匹配估计量存在多种可能性,在双重稳定的估计量中,研究人员有两次机会做出可靠的推断。在仿真中,我们将匹配估计器的有限样本属性与简单的逆概率加权估计器和双稳健估计器进行比较。对于我们研究中的误称,匹配估计器的均方误差小于简单逆概率加权估计器和双稳健估计器的均方误差。

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