The paper formalizes constraint-based structure learning of the "true" causal graph from observed data when unobserved variables are also existent. We define a "generic" structure learning algorithm, which provides conditions that, under the faithfulness assumption, the output of all known exact algorithms in the literature must satisfy, and which outputs graphs that are Markov equivalent to the causal graph. More importantly, we provide clear assumptions, weaker than faithfulness, under which the same generic algorithm outputs Markov equivalent graphs to the causal graph. We provide the theory for the general class of models under the assumption that the distribution is Markovian to the true causal graph, and we specialize the definitions and results for structural causal models.
翻译:本文将“ 真正的” 因果图从观察的数据中学习的制约性结构正式化。 当未观察到的变量也存在时, 我们定义了“ generic” 结构学习算法, 它提供的条件是,根据忠诚的假设, 文献中所有已知精确算法的输出必须满足, 以及哪些产出图与因果图相当。 更重要的是, 我们提供了明确的假设, 其弱于忠诚性, 根据这些假设, 与因果图相同的通用算法输出 Markov 等值图。 我们为假设分布为真实因果图的模型提供了一般类别的理论, 我们专门为结构性因果模型定义和结果。