因果中介分析:从简单到更稳健的边际自然(内)直接效应估算策略。

IF 11 Q1 STATISTICS & PROBABILITY Statistics Surveys Pub Date : 2023-01-01 Epub Date: 2023-01-17 DOI:10.1214/22-SS140
Trang Quynh Nguyen, Elizabeth L Ogburn, Ian Schmid, Elizabeth B Sarker, Noah Greifer, Ina M Koning, Elizabeth A Stuart
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引用次数: 0

摘要

本文旨在让因果中介分析从业者更好地了解估算选项。我们将两种熟悉的策略(加权和基于模型的预测)和一种简单的组合方法(加权模型)作为输入,并展示了如何根据不同的建模要求和稳健性属性生成一系列估计器。主要目标是帮助建立对稳健估算的直观认识,以利于合理实践。为此,我们将目标估计值和估计策略可视化。第二个目标是提供一个估算器 "菜单",供实践者在估算边际自然(内)直接效应时选择。从这项工作中产生的估算器包括一些与现有估算器相吻合或相似的估算器,以及一些以前未在文献中出现过的估算器。我们指出了几种基于加权函数三种表达式的不同方法来估计跨世界加权的权重,其中包括一种新颖的方法;并展示了如何检查所得到的协变量和中介变量的平衡。我们使用随机连续权重引导法获得置信区间,并推导出估计器的一般渐近方差公式。我们使用一项青少年酒精使用预防研究的数据对估计器进行了说明。提供 R 代码。
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Causal mediation analysis: From simple to more robust strategies for estimation of marginal natural (in)direct effects.

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. We do this by visualizing the target estimand and the estimation strategies. 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. R-code is provided.

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来源期刊
Statistics Surveys
Statistics Surveys STATISTICS & PROBABILITY-
CiteScore
11.70
自引率
0.00%
发文量
5
期刊介绍: Statistics Surveys publishes survey articles in theoretical, computational, and applied statistics. The style of articles may range from reviews of recent research to graduate textbook exposition. Articles may be broad or narrow in scope. The essential requirements are a well specified topic and target audience, together with clear exposition. Statistics Surveys is sponsored by the American Statistical Association, the Bernoulli Society, the Institute of Mathematical Statistics, and by the Statistical Society of Canada.
期刊最新文献
Bayesian dual systems population estimation for small domains Mixture cure model methodology in survival analysis: Some recent results for the one-sample case Causal mediation analysis: From simple to more robust strategies for estimation of marginal natural (in)direct effects. White noise testing for functional time series Spline local basis methods for nonparametric density estimation
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