论文标题

从介入数据中的可分因果发现

Differentiable Causal Discovery from Interventional Data

论文作者

Brouillard, Philippe, Lachapelle, Sébastien, Lacoste, Alexandre, Lacoste-Julien, Simon, Drouin, Alexandre

论文摘要

从数据中学习因果定向的无环图是一项具有挑战性的任务,涉及解决解决方案并非总是可识别的组合问题。新的工作线将这个问题重新制定为连续约束的优化,该问题通过增强的拉格朗日方法解决。但是,大多数基于此想法的方法都不利用介入数据,这可能会大大减轻可识别性问题。这项工作构成了朝这个方向迈出的新一步,它提出了一种基于可以利用介入数据的神经网络的理论基础方法。我们通过利用表达性神经体系结构(例如标准化流量)来说明连续约束框架的灵活性。我们表明,在各种环境中,我们的方法比较有利与艺术的状态,包括完美和不完美的干预措施,这些干预措施甚至可能是未知的。

Learning a causal directed acyclic graph from data is a challenging task that involves solving a combinatorial problem for which the solution is not always identifiable. A new line of work reformulates this problem as a continuous constrained optimization one, which is solved via the augmented Lagrangian method. However, most methods based on this idea do not make use of interventional data, which can significantly alleviate identifiability issues. This work constitutes a new step in this direction by proposing a theoretically-grounded method based on neural networks that can leverage interventional data. We illustrate the flexibility of the continuous-constrained framework by taking advantage of expressive neural architectures such as normalizing flows. We show that our approach compares favorably to the state of the art in a variety of settings, including perfect and imperfect interventions for which the targeted nodes may even be unknown.

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