因果中介分析:具有渐近有效推论的选择。

IF 3.1 1区 数学 Q1 STATISTICS & PROBABILITY
Jeremiah Jones, Ashkan Ertefaie, Robert L Strawderman
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引用次数: 0

摘要

研究人员不仅对治疗对结果的影响感兴趣,而且对传递这些影响的机制也感兴趣。中介是一个受治疗影响并随后影响结果的变量。现有的惩罚中介分析方法可能会导致忽略重要的中介,或者假设有限维线性模型足以消除混淆偏差,或者根本不进行混淆控制。在实践中,这些假设可能并不成立。我们提出了一种方法,将混杂函数作为干扰参数,使用数据自适应方法进行估计。然后,我们使用一种新的正则化方法应用于该目标函数来识别一组重要的中介。我们考虑自然的直接和间接效应作为我们的目标参数。然后,我们推导了我们的估计量的渐近性质,并在特定的假设下建立了oracle性质。给出了局部环境下的渐近结果,并与标准自适应套索进行了比较。我们还提出了一种摄动自举技术,为兴趣介导效应提供渐近有效的后选择推理。这些方法的性能将通过仿真研究进行讨论和论证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal mediation analysis: selection with asymptotically valid inference.

Researchers are often interested in learning not only the effect of treatments on outcomes, but also the mechanisms that transmit these effects. A mediator is a variable that is affected by treatment and subsequently affects outcome. Existing methods for penalized mediation analyses may lead to ignoring important mediators and either assume that finite-dimensional linear models are sufficient to remove confounding bias, or perform no confounding control at all. In practice, these assumptions may not hold. We propose a method that considers the confounding functions as nuisance parameters to be estimated using data-adaptive methods. We then use a novel regularization method applied to this objective function to identify a set of important mediators. We consider natural direct and indirect effects as our target parameters. We then proceed to derive the asymptotic properties of our estimators and establish the oracle property under specific assumptions. Asymptotic results are also presented in a local setting, which contrast the proposal with the standard adaptive lasso. We also propose a perturbation bootstrap technique to provide asymptotically valid postselection inference for the mediated effects of interest. The performance of these methods will be discussed and demonstrated through simulation studies.

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来源期刊
CiteScore
8.80
自引率
0.00%
发文量
83
审稿时长
>12 weeks
期刊介绍: Series B (Statistical Methodology) aims to publish high quality papers on the methodological aspects of statistics and data science more broadly. The objective of papers should be to contribute to the understanding of statistical methodology and/or to develop and improve statistical methods; any mathematical theory should be directed towards these aims. The kinds of contribution considered include descriptions of new methods of collecting or analysing data, with the underlying theory, an indication of the scope of application and preferably a real example. Also considered are comparisons, critical evaluations and new applications of existing methods, contributions to probability theory which have a clear practical bearing (including the formulation and analysis of stochastic models), statistical computation or simulation where original methodology is involved and original contributions to the foundations of statistical science. Reviews of methodological techniques are also considered. A paper, even if correct and well presented, is likely to be rejected if it only presents straightforward special cases of previously published work, if it is of mathematical interest only, if it is too long in relation to the importance of the new material that it contains or if it is dominated by computations or simulations of a routine nature.
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