In this review, we discuss approaches for learning causal structure from data, also called causal discovery. In particular, we focus on approaches for learning directed acyclic graphs (DAGs) and various generalizations which allow for some variables to be unobserved in the available data. We devote special attention to two fundamental combinatorial aspects of causal structure learning. First, we discuss the structure of the search space over causal graphs. Second, we discuss the structure of equivalence classes over causal graphs, i.e., sets of graphs which represent what can be learned from observational data alone, and how these equivalence classes can be refined by adding interventional data.
翻译:在本次审查中,我们讨论了从数据中学习因果结构的方法,也称为因果发现。特别是,我们侧重于学习定向循环图(DAGs)和各种概括性方法,这些方法使得现有数据中无法看到某些变量。我们特别关注因果结构学习的两个基本组合方面。首先,我们讨论了因果图的搜索空间结构。第二,我们讨论了因果图的等同类结构,即代表仅从观测数据中可以学到的图集,以及如何通过增加干预数据来完善这些等值类。