This paper aims to provide practitioners of causal mediation analysis with a better understanding of estimation options. We take as inputs two familiar strategies (weighting and model-based prediction) and a simple way of combining them (weighted models), and show how a range of estimators can be generated, with different modeling requirements and robustness properties. The primary goal is to help build intuitive appreciation for robust estimation that is conducive to sound practice. A second goal is to provide a "menu" of estimators that practitioners can choose from for the estimation of marginal natural (in)direct effects. The estimators generated from this exercise include some that coincide or are similar to existing estimators and others that have not previously appeared in the literature. We note several different ways to estimate the weights for cross-world weighting based on three expressions of the weighting function, including one that is novel; and show how to check the resulting covariate and mediator balance. We use a random continuous weights bootstrap to obtain confidence intervals, and also derive general asymptotic variance formulas for the estimators. The estimators are illustrated using data from an adolescent alcohol use prevention study.
翻译:本文旨在为因果调解分析从业者提供更好的估计方法。我们把两种熟悉的战略(加权和基于模型的预测)和一种简单的合并方法(加权模型)作为投入,并展示如何产生一系列有不同模型要求和稳健性特性的估测员。主要目的是帮助建立直觉评估,以有利于正确做法的稳健估计。第二个目标是提供“菜单”,由从业者从估算边际自然(间接)效应中可以选择的估测员提供“菜单 ” 。这次活动产生的估测员包括一些与现有估测员和以前没有出现在文献中的其他估算员相同或相似的估测员。我们注意到根据加权函数的三个表达式,包括一个新颖的表达式,估算跨世界加权的加权数;并展示如何检查由此产生的变异和调平衡。我们使用随机连续加权测重器来获得信任间隔,并为估测测算员得出一般的调差公式。我们用青少年酒精预防研究的数据来演示。