Pairwise Causal Discovery is the task of determining causal, anticausal, confounded or independence relationships from pairs of variables. Over the last few years, this challenging task has promoted not only the discovery of novel machine learning models aimed at solving the task, but also discussions on how learning the causal direction of variables may benefit machine learning overall. In this paper, we show that Quantitative Information Flow (QIF), a measure usually employed for measuring leakages of information from a system to an attacker, shows promising results as features for the task. In particular, experiments with real-world datasets indicate that QIF is statistically tied to the state of the art. Our initial results motivate further inquiries on how QIF relates to causality and what are its limitations.
翻译:Pairwith Causal Discovery(QIF)是确定因果、厌食、混杂或独立关系与变数关系的任务。在过去几年里,这项具有挑战性的任务不仅促进了旨在解决任务的新机器学习模式的发现,而且还促进了关于学习变数因果方向如何有利于整个机器学习的讨论。 在本文中,我们展示了量化信息流动(QIF),这是通常用来测量从系统向攻击者泄漏信息的一种措施,它显示了作为任务特征的有希望的结果。 特别是,对真实世界数据集的实验表明,QIF在统计上与最新数据相关。 我们的初步结果激励人们进一步调查QIF与因果关系及其局限性。