Posterior Predictive Propensity Scores and p-Values

Peng Ding, Tianyu Guo
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引用次数: 1

Abstract

Abstract:Rosenbaum and Rubin (1983) introduced the notion of the propensity score and discussed its central role in causal inference with observational studies. Their paper, however, caused a fundamental incoherence with an early paper by Rubin (1978), which showed that the propensity score does not play any role in the Bayesian analysis of unconfounded observational studies if the priors on the propensity score and outcome models are independent. Despite the serious efforts made in the literature, it is generally difficult to reconcile these contradicting results. We offer a simple approach to incorporating the propensity score in Bayesian causal inference based on the posterior predictive p-value. To motivate a simple procedure, we focus on the model with the strong null hypothesis of no causal effects for any units whatsoever. Computationally, the proposed posterior predictive p-value equals the classic p-value based on the Fisher randomization test averaged over the posterior predictive distribution of the propensity score. Moreover, using the studentized doubly robust estimator as the test statistic, the proposed p-value inherits the doubly robust property and is also asymptotically valid for testing the weak null hypothesis of zero average causal effect. Perhaps surprisingly, this Bayesianly motivated p-value can have better frequentist’s finite-sample performance than the frequentist’s p-value based on the asymptotic approximation especially when the propensity scores can take extreme values.
后验预测倾向评分和p值
摘要:Rosenbaum和Rubin(1983)引入了倾向得分的概念,并通过观察研究讨论了其在因果推断中的核心作用。然而,他们的论文与Rubin(1978)的早期论文产生了根本性的不一致,该论文表明,如果倾向得分和结果模型的先验是独立的,那么倾向得分在无根据观察性研究的贝叶斯分析中不会起到任何作用。尽管在文献中做出了认真的努力,但通常很难调和这些相互矛盾的结果。我们提供了一种简单的方法,将倾向得分纳入基于后验预测p值的贝叶斯因果推理中。为了激励一个简单的过程,我们将重点放在对任何单位都没有因果影响的强零假设模型上。在计算上,所提出的后验预测p值等于基于Fisher随机化检验的经典p值,该检验在倾向得分的后验估计分布上取平均值。此外,使用学生化的双稳健估计量作为检验统计量,所提出的p值继承了双稳健性质,并且对于检验零平均因果效应的弱零假设也是渐近有效的。也许令人惊讶的是,这种仅受贝叶斯激励的p值可以比基于渐近近似的频率学家的p值具有更好的频率学家有限样本性能,尤其是当倾向得分可以取极值时。
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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CiteScore
0.80
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