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Improved Causal Discovery from Longitudinal Data Using a Mixture of DAGs

机译:使用DAG混合从纵向数据改善因果关系发现

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Many causal processes in biomedicine contain cycles and evolve. However, most causal discovery algorithms assume that the underlying causal process follows a single directed acyclic graph (DAG) that does not change over time. The algorithms can therefore infer erroneous causal relations with high confidence when run on real biomedical data. In this paper, I relax the single DAG assumption by modeling causal processes using a mixture of DAGs so that the graph can change over time. I then describe a causal discovery algorithm called Causal Inference over Mixtures (CIM) to infer causal structure from a mixture of DAGs using longitudinal data. CIM improves the accuracy of causal discovery on both real and synthetic clinical datasets even when cycles, non-stationarity, non-linearity, latent variables and selection bias exist simultaneously. Code is available at https://github.com/ericstrobl/CIM.
机译:生物医学中的许多因果过程都包含周期并不断演变。但是,大多数因果发现算法都假定潜在的因果过程遵循不会随时间变化的单个有向无环图(DAG)。因此,当在真实的生物医学数据上运行时,该算法可以高置信度推断错误的因果关系。在本文中,我通过使用DAG的混合对因果过程进行建模来放宽单个DAG假设,以便图形可以随时间变化。然后,我描述了一种因果发现算法,该因果发现算法称为混合物因果推断(CIM),可以使用纵向数据从DAG的混合物中推断因果结构。即使在周期,非平稳性,非线性,潜在变量和选择偏差同时存在的情况下,CIM也可以提高实际和综合临床数据集上因果发现的准确性。可从https://github.com/ericstrobl/CIM获得代码。

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