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The right tool for the job: choosing between covariate balancing and generalized boosted model propensity scores

机译:这项工作的正确工具:在协变量平衡和广义增强模型倾向得分之间进行选择

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摘要

Estimating the causal effect of an exposure (versus some control) on an outcome using observational data often requires addressing the fact that exposed and control groups differ on pre-exposure characteristics that may be related to the outcome (confounders). Propensity score methods have long been used as a tool for adjusting for observed confounders in order to produce more valid causal effect estimates under the strong ignorability assumption. In this article, we compare two promising propensity score estimation methods (for time invariant binary exposures) when assessing the average treatment effect on the treated: the generalized boosted models and covariate-balancing propensity scores, with the main objective to provide analysts with some rules-of-thumb when choosing between these two methods. We compare the methods across different dimensions including the presence of extraneous variables, the complexity of the relationship between exposure or outcome and covariates, and the residual variance in outcome and exposure. We found that when non-complex relationships exist between outcome or exposure and covariates, the covariate-balancing method outperformed the boosted method, but under complex relationships, the boosted method performed better. We lay out criteria for when one method should be expected to outperform the other with no blanket statement on whether one method is always better than the other.
机译:使用观察数据估算暴露(相对于对照)对结果的因果效应通常需要解决以下事实:暴露组和对照组在可能与结果相关的暴露前特征上有所不同(混杂因素)。倾向得分方法长期以来一直用作调整观察到的混杂因素的工具,以便在强烈的可忽略性假设下产生更有效的因果关系估计值。在本文中,当评估对被治疗者的平均治疗效果时,我们比较了两种有前途的倾向性得分估计方法(针对时不变性二元暴露):广义提升模型和协变量平衡倾向性得分,其主要目的是为分析师提供一些规则在这两种方法之间进行选择时,请按一下。我们比较了不同维度上的方法,包括外部变量的存在,暴露或结果与协变量之间关系的复杂性以及结果和暴露中的残留方差。我们发现,当结果或暴露与协变量之间存在非复杂关系时,协变量平衡方法的性能优于增强方法,但在复杂关系下,增强方法的效果更好。我们为何时应该期望一种方法优于另一种方法制定了标准,而没有关于一种方法是否总是比另一种方法更好的明确声明。

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