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Feedback and Mediation in Causal Inference Illustrated by Stochastic Process Models

机译:随机过程模型说明因果推理中的反馈和中介

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The concept of causality is naturally related to processes developing over time. Central ideas of causal inference like time-dependent confounding (feedback) and mediation should be viewed as dynamic concepts. We shall study these concepts in the context of simple dynamic systems. Time-dependent confounding and its implications are illustrated in a Markov model. We emphasize the distinction between average treatment effect, ATE, and treatment effect of the treated, ATT. These effects could be quite different, and we discuss the relationship between them. Mediation is studied in a stochastic differential equation model. A type of natural direct and indirect effects is considered for this model. Mediation analysis of discrete measurements from such processes may give misleading results, and one needs to consider the underlying continuous process. The dynamic and time-continuous view of causality and mediation is an essential feature, and more attention should be payed to the time aspect in causal inference.
机译:因果关系的概念自然与随着时间推移而发展的过程有关。因果推理的中心思想,例如与时间有关的混杂(反馈)和中介,应被视为动态概念。我们将在简单动态系统的背景下研究这些概念。时间相关的混淆及其含义在马尔可夫模型中进行了说明。我们强调平均治疗效果ATE与治疗后的治疗效果ATT之间的区别。这些影响可能会大不相同,我们将讨论它们之间的关系。在随机微分方程模型中研究调解。该模型考虑了一种自然的直接和间接影响。来自此类过程的离散测量的中介分析可能会产生误导性的结果,因此需要考虑潜在的连续过程。因果关系和调解的动态且时间连续的观点是必不可少的特征,因果推理中应更加注意时间方面。

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