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Uncertainty in Propensity Score Estimation: Bayesian Methods for Variable Selection and Model Averaged Causal Effects

机译:倾向评分估计的不确定性:变量选择和模型平均因果效应的贝叶斯方法

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摘要

Causal inference with observational data frequently relies on the notion of the propensity score (PS) to adjust treatment comparisons for observed confounding factors. As decisions in the era of “big data” are increasingly reliant on large and complex collections of digital data, researchers are frequently confronted with decisions regarding which of a high-dimensional covariate set to include in the PS model in order to satisfy the assumptions necessary for estimating average causal effects. Typically, simple or ad-hoc methods are employed to arrive at a single PS model, without acknowledging the uncertainty associated with the model selection. We propose three Bayesian methods for PS variable selection and model averaging that 1) select relevant variables from a set of candidate variables to include in the PS model and 2) estimate causal treatment effects as weighted averages of estimates under different PS models. The associated weight for each PS model reflects the data-driven support for that model’s ability to adjust for the necessary variables. We illustrate features of our proposed approaches with a simulation study, and ultimately use our methods to compare the effectiveness of surgical vs. nonsurgical treatment for brain tumors among 2,606 Medicare beneficiaries. .
机译:对观察数据的因果推断通常依赖于倾向评分(PS)的概念,以针对观察到的混杂因素调整治疗比较。随着“大数据”时代的决策越来越依赖于庞大而复杂的数字数据集合,研究人员经常面临着关于将哪个高维协变量集合包括在PS模型中的决策,以便满足必要的假设。用于估计平均因果效应。通常,采用简单或临时方法得出单个PS模型,而无需确认与模型选择相关的不确定性。我们提出了三种用于PS变量选择和模型平均的贝叶斯方法:1)从一组候选变量中选择相关变量以包括在PS模型中,以及2)将因果处理效果估计为不同PS模型下估计的加权平均值。每个PS模型的相关权重反映了该模型调整必要变量的能力的数据驱动支持。我们通过模拟研究说明了我们提出的方法的特征,并最终使用我们的方法在2606名Medicare受益人中比较了脑肿瘤的手术和非手术治疗的有效性。 。

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