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Causal Structure Discovery from Distributions Arising from Mixtures of DAGs

机译:来自DAG混合物产生的分布的因果结构发现

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We consider distributions arising from a mixture of causal models, where each model is represented by a directed acyclic graph (DAG). We provide a graphical representation of such mixture distributions and prove that this representation encodes the conditional independence relations of the mixture distribution. We then consider the problem of structure learning based on samples from such distributions. Since the mixing variable is latent, we consider causal structure discovery algorithms such as FCI that can deal with latent variables. We show that such algorithms recover a "union" of the component DAGs and can identify variables whose conditional distribution across the component DAGs vary. We demonstrate our results on synthetic and real data showing that the inferred graph identifies nodes that vary between the different mixture components. As an immediate application, we demonstrate how retrieval of this causal information can be used to cluster samples according to each mixture component.
机译:我们考虑由因果模型的混合物产生的分布,其中每个模型由指向的非循环图(DAG)表示。我们提供了这种混合分布的图形表示,并证明了该表示编码了混合分布的条件独立关系。然后,我们考虑基于来自这种分布的样本的结构学习问题。由于混合变量是潜伏的,因此考虑因果结构发现算法,例如可以处理潜在变量的FCI。我们表明这种算法恢复了组件DAG的“联合”,并且可以识别其对组件DAG的条件分布的变量变化。我们展示了我们对合成和实际数据的结果,显示推断图识别不同混合组件之间变化的节点。作为即时应用,我们展示了如何根据每个混合组分使用该因果信息的检索来纳入样本。

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