Researchers are often interested in learning not only the effect of treatments on outcomes, but also the pathways through which these effects operate. 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 derive the asymptotic properties of our estimator and establish the oracle property under certain 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 post-selection inference for the mediated effects of interest. The performance of these methods will be discussed and demonstrated through simulation studies.
翻译:研究者往往不仅有兴趣了解治疗对结果的影响,而且有兴趣了解这些影响运作的路径。调解人是受治疗影响的变数,并随后影响结果。现有的惩罚性调解分析方法可能导致忽视重要的调解人,或者假设有限维线性模型足以消除令人困惑的偏见,或者完全不产生混乱的控制。在实践中,这些假设可能无法维持。我们建议一种方法,将混杂的功能视为使用数据适应方法估计的骚扰参数。然后,我们使用适用于这个目标功能的新颖的正规化方法来确定一套重要的调解人。我们根据某些假设,得出我们的估测器的无约束性特性,并确立其属性。在将建议与标准适应拉索作对比的地方环境中也呈现出非抽象的结果。我们还提议一种扰动性诱导器技术,以提供对调解效应的无干扰性有效的选后推断。这些方法的绩效将通过模拟研究加以讨论和演示。