Ensemble Doubly Robust Bayesian Inference via Regression Synthesis

Kaoru Babasaki, Shonosuke Sugasawa, Kosaku Takanashi, Kenichiro McAlinn
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Abstract

The doubly robust estimator, which models both the propensity score and outcomes, is a popular approach to estimate the average treatment effect in the potential outcome setting. The primary appeal of this estimator is its theoretical property, wherein the estimator achieves consistency as long as either the propensity score or outcomes is correctly specified. In most applications, however, both are misspecified, leading to considerable bias that cannot be checked. In this paper, we propose a Bayesian ensemble approach that synthesizes multiple models for both the propensity score and outcomes, which we call doubly robust Bayesian regression synthesis. Our approach applies Bayesian updating to the ensemble model weights that adapt at the unit level, incorporating data heterogeneity, to significantly mitigate misspecification bias. Theoretically, we show that our proposed approach is consistent regarding the estimation of both the propensity score and outcomes, ensuring that the doubly robust estimator is consistent, even if no single model is correctly specified. An efficient algorithm for posterior computation facilitates the characterization of uncertainty regarding the treatment effect. Our proposed approach is compared against standard and state-of-the-art methods through two comprehensive simulation studies, where we find that our approach is superior in all cases. An empirical study on the impact of maternal smoking on birth weight highlights the practical applicability of our proposed method.
通过回归合成进行集合双稳健贝叶斯推理
双重稳健估计法同时对倾向得分和结果进行建模,是估计潜在结果环境下平均治疗效果的常用方法。这种估计方法的主要吸引力在于它的理论特性,即只要正确指定倾向得分或结果,估计方法就能实现一致性。然而,在大多数应用中,两者都被错误地指定,从而导致无法检查的巨大偏差。在本文中,我们提出了一种贝叶斯集合方法,它可以同时合成倾向得分和结果的多个模型,我们称之为双重稳健贝叶斯回归综合法。我们的方法将贝叶斯更新应用于集合模型权重,该权重在单位水平上进行调整,并结合了数据异质性,从而显著减轻了误规范偏差。从理论上讲,我们证明了我们提出的方法对倾向评分和结果的估计都是一致的,确保了双重稳健估计器的一致性,即使没有一个模型被正确地指定。后验计算的高效算法有助于描述治疗效果的不确定性。我们通过两项综合模拟研究,将我们提出的方法与标准方法和最先进的方法进行了比较,发现我们的方法在所有情况下都更胜一筹。关于产妇吸烟对出生体重影响的实证研究突出了我们提出的方法的实际应用性。
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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