Causal structure learning from observational data remains a non-trivial task due to various factors such as finite sampling, unobserved confounding factors, and measurement errors. Constraint-based and score-based methods tend to suffer from high computational complexity due to the combinatorial nature of estimating the directed acyclic graph (DAG). Motivated by the `Cause-Effect Pair' NIPS 2013 Workshop on Causality Challenge, in this paper, we take a different approach and generate a probability distribution over all possible graphs informed by the cause-effect pair features proposed in response to the workshop challenge. The goal of the paper is to propose new methods based on this probabilistic information and compare their performance with traditional and state-of-the-art approaches. Our experiments, on both synthetic and real datasets, show that our proposed methods not only have statistically similar or better performances than some traditional approaches but also are computationally faster.
翻译:从观测数据中学习成因结构,由于诸如有限取样、未观察到的混杂因素和测量错误等各种因素,仍是一项非边际任务。基于限制和分数的方法往往由于估算定向环形图的组合性质而具有很高的计算复杂性。我们受“Cause-Effect Pair” NIPS 2013年关于因果关系挑战的研讨会的驱动,在本文件中,我们采取了不同的做法,在根据讲习班挑战提出的成因-效果组合特征而了解的所有可能的图表中产生概率分布。本文的目标是根据这种概率性信息提出新方法,并将这些方法的性能与传统和最新方法进行比较。我们在合成和真实数据集方面的实验表明,我们拟议的方法不仅在统计上与某些传统方法相似或更好的性能,而且在计算上也更快。