The Pursuit of Efficiency versus Robustness: A Learning Experience from Analyzing a Semiparametric Nonignorable Propensity Score Model

Samidha Shetty, Yanyuan Ma, Jiwei Zhao
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Abstract

Abstract:Rosenbaum and Rubin’s pioneering work on “The Central Role of the Propensity Score in Observational Studies for Causal Effects” has shaped the landscape of the literature in causal inference and missing data analysis. In the past decades, the concept of propensity score has been used not only under ignorability assumption, but also under nonignorability assumption. The nice properties of double robustness and semiparametric efficiency are well known under ignorability; however, the situation is a lot more sophisticated under nonignorability. In this paper, we summarize what we have learnt from analyzing a semi-parametric nonignorable propensity score model. It turns out that, under nonignorability, the efficient estimator for the quantity of interest might be too complicated to be practically implemented. On the other hand, by sacrificing the efficiency to some extent, one type of robust estimators is much easier to derive and implement; hence is recommended. This is a general tradeoff between efficiency and robustness in a typical semiparametric model.
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追求效率与稳健性:一个半参数不可忽略倾向评分模型的学习经验分析
摘要:Rosenbaum和Rubin在“因果效应观察研究中倾向得分的核心作用”方面的开创性工作塑造了因果推理和缺失数据分析的文献景观。在过去的几十年里,倾向分数的概念不仅在可忽略性假设下使用,而且在不可忽略性假设下使用。在可忽略性条件下,双鲁棒性和半参数效率的良好性质是众所周知的;然而,在不可忽略性下,情况要复杂得多。在本文中,我们总结了我们从分析半参数不可忽略倾向得分模型中学到的东西。结果表明,在不可忽略性条件下,对兴趣量的有效估计可能过于复杂而难以实际实现。另一方面,在一定程度上牺牲效率的前提下,一类鲁棒估计器更容易推导和实现;因此被推荐。在典型的半参数模型中,这是效率和鲁棒性之间的一般权衡。
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