论文标题

在低等级的无环图和因果结构学习上

On Low Rank Directed Acyclic Graphs and Causal Structure Learning

论文作者

Fang, Zhuangyan, Zhu, Shengyu, Zhang, Jiji, Liu, Yue, Chen, Zhitang, He, Yangbo

论文摘要

尽管近年来有几个进步,但在高维度设置中,以指示的无环图(DAG)代表的学习因果结构仍然是一项具有挑战性的任务。在本文中,我们建议利用DAG因果模型(加权)邻接矩阵的低级假设,以帮助解决此问题。我们利用现有的低级技术来调整因果结构学习方法来利用这一假设,并建立了几个有用的结果,将可解释的图形条件与低级假设相关联。具体而言,我们表明最高等级与集线器高度相关,这表明在实践中经常遇到的无标度网络往往是低级的。我们的实验证明了各种数据模型的低等级适应性的实用性,尤其是具有相对较大且密集的图。此外,通过验证过程,即使图形不限于低等级,改编也保持了卓越或可比的性能。

Despite several advances in recent years, learning causal structures represented by directed acyclic graphs (DAGs) remains a challenging task in high dimensional settings when the graphs to be learned are not sparse. In this paper, we propose to exploit a low rank assumption regarding the (weighted) adjacency matrix of a DAG causal model to help address this problem. We utilize existing low rank techniques to adapt causal structure learning methods to take advantage of this assumption and establish several useful results relating interpretable graphical conditions to the low rank assumption. Specifically, we show that the maximum rank is highly related to hubs, suggesting that scale-free networks, which are frequently encountered in practice, tend to be low rank. Our experiments demonstrate the utility of the low rank adaptations for a variety of data models, especially with relatively large and dense graphs. Moreover, with a validation procedure, the adaptations maintain a superior or comparable performance even when graphs are not restricted to be low rank.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源