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Can we believe the DAGs? A comment on the relationship between causal DAGs and mechanisms

机译:我们可以相信DAG吗?关于因果DAG与机制之间关系的评论

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摘要

Directed acyclic graphs (DAGs) play a large role in the modern approach to causal inference. DAGs describe the relationship between measurements taken at various discrete times including the effect of interventions. The causal mechanisms, on the other hand, would naturally be assumed to be a continuous process operating over time in a cause–effect fashion. How does such immediate causation, that is causation occurring over very short time intervals, relate to DAGs constructed from discrete observations? We introduce a time-continuous model and simulate discrete observations in order to judge the relationship between the DAG and the immediate causal model. We find that there is no clear relationship; indeed the Bayesian network described by the DAG may not relate to the causal model. Typically, discrete observations of a process will obscure the conditional dependencies that are represented in the underlying mechanistic model of the process. It is therefore doubtful whether DAGs are always suited to describe causal relationships unless time is explicitly considered in the model. We relate the issues to mechanistic modeling by using the concept of local (in)dependence. An example using data from the Swiss HIV Cohort Study is presented.
机译:有向无环图(DAG)在因果推理的现代方法中起着重要作用。 DAG描述了在各个离散时间进行的测量之间的关系,包括干预效果。另一方面,因果机制很自然地被认为是因果关系随时间而变化的连续过程。这种直接因果关系,即在非常短的时间间隔内发生的因果关系如何与由离散观测结果构建的DAG有关?为了介绍DAG与直接因果模型之间的关系,我们引入了时间连续模型并模拟了离散观测值。我们发现没有明确的关系;实际上,DAG描述的贝叶斯网络可能与因果模型无关。通常,对过程的离散观察将掩盖在过程的基础机械模型中表示的条件依赖性。因此,除非模型中明确考虑了时间,否则DAG是否总是适合描述因果关系是令人怀疑的。我们通过使用局部(独立)依赖的概念将这些问题与机械建模联系起来。提供了一个使用瑞士艾滋病毒队列研究数据的示例。

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