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Characterizing and Learning Equivalence Classes of Causal DAGs under Interventions

机译:干预下因果DAG的表征和学习等价类

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We consider the problem of learning causal DAGs in the setting where both observational and interventional data is available. This setting is common in biology, where gene regulatory networks can be intervened on using chemical reagents or gene deletions. Hauser & Buhlmann (2012) previously characterized the identifiability of causal DAGs under perfect interventions, which eliminate dependencies between targeted variables and their direct causes. In this paper, we extend these identifiability results to general interventions, which may modify the dependencies between targeted variables and their causes without eliminating them. We define and characterize the interventional Markov equivalence class that can be identified from general (not necessarily perfect) intervention experiments. We also propose the first provably consistent algorithm for learning DAGs in this setting and evaluate our algorithm on simulated and biological datasets.
机译:我们考虑在有观察数据和介入数据的情况下学习因果DAG的问题。此设置在生物学中很常见,在生物学中,可以使用化学试剂或基因缺失干预基因调控网络。 Hauser&Buhlmann(2012)以前在完善的干预措施下表征了因果DAG的可识别性,从而消除了目标变量与其直接原因之间的依赖性。在本文中,我们将这些可识别性结果扩展到一般干预措施,这些措施可以修改目标变量及其原因之间的依赖性,而不会消除它们。我们定义并描述了可以从一般(不一定是完美的)干预实验中确定的干预性马尔可夫等效类。我们还提出了在这种情况下学习DAG的第一个可证明是一致的算法,并在模拟和生物学数据集上评估了我们的算法。

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