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首页> 外文期刊>The Annals of applied statistics >BAYESIAN METHODS FOR MULTIPLE MEDIATORS: RELATING PRINCIPAL STRATIFICATION AND CAUSAL MEDIATION IN THE ANALYSIS OF POWER PLANT EMISSION CONTROLS
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BAYESIAN METHODS FOR MULTIPLE MEDIATORS: RELATING PRINCIPAL STRATIFICATION AND CAUSAL MEDIATION IN THE ANALYSIS OF POWER PLANT EMISSION CONTROLS

机译:多个调解器的贝叶斯方法:在发电厂排放控制分析中有关主分层和因果调解

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摘要

Emission control technologies installed on power plants are a key feature of many air pollution regulations in the US. While such regulations are predicated on the presumed relationships between emissions, ambient air pollution and human health, many of these relationships have never been empirically verified. The goal of this paper is to develop new statistical methods to quantify these relationships. We frame this problem as one of mediation analysis to evaluate the extent to which the effect of a particular control technology on ambient pollution is mediated through causal effects on power plant emissions. Since power plants emit various compounds that contribute to ambient pollution, we develop new methods for multiple intermediate variables that are measured contemporaneously, may interact with one another, and may exhibit joint mediating effects. Specifically, we propose new methods lever-aging two related frameworks for causal inference in the presence of mediating variables: principal stratification and causal mediation analysis. We define principal effects based on multiple mediators, and also introduce a new decomposition of the total effect of an intervention on ambient pollution into the natural direct effect and natural indirect effects for all combinations of mediators. Both approaches are anchored to the same observed-data models, which we specify with Bayesian nonparametric techniques. We provide assumptions for estimating principal causal effects, then augment these with an additional assumption required for causal mediation analysis. The two analyses, interpreted in tandem, provide the first empirical investigation of the presumed causal pathways that motivate important air quality regulatory policies.
机译:电厂安装的排放控制技术是美国许多空气污染法规的关键特征。虽然这些法规在排放,环境空气污染和人类健康之间的假定关系中,但这些关系从未经验过经验证明。本文的目标是开发新的统计方法来量化这些关系。我们将该问题置于中介分析之一,以评估特定控制技术对环境污染对环境污染的影响的程度是通过对发电厂排放的因果影响来介导的。由于发电厂发射有助于环境污染的各种化合物,因此我们为同时测量的多种中间变量开发新方法,可以彼此相互作用,并且可以表现出联合调解效果。具体而言,我们提出了新的方法在介导变量存在下的两个相关框架的两个相关框架:主要分层和因果调解分析。我们根据多个调解员定义主要效果,并引入了对环境污染干预介入的总效应的新分解,进入了对介质的所有组合的自然直接效应和自然间接影响。这两种方法都锚定到相同的观察数据模型,我们用贝叶斯非参数技术指定。我们提供了估计主因果效应的假设,然后使用因果调解分析所需的额外假设来增加这些。两次分析解释在串联中,提供了激励重要空气质量监管政策的推定因果途径的首次实证调查。

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