Higher Order Cumulants-Based Method for Direct and Efficient Causal Discovery

Wei Chen, Linjun Peng, Zhiyi Huang, Ruichu Cai, Zhifeng Hao, Kun Zhang

Published: 01 Jan 2025, Last Modified: 04 Nov 2025IEEE Transactions on Neural Networks and Learning SystemsEveryoneRevisionsCC BY-SA 4.0
Abstract: Causal discovery plays a pivotal role in scientific inquiry and subsequent applications in prediction or decision-making. While many methods have been proposed, many of them rely on independence tests. However, these tests are difficult to implement and computationally intensive. In this article, we aim to propose a direct and computationally efficient method to determine the causal relationship between two observed variables in the linear non-Gaussian case. Building on the insight that cumulants provide information about the shape of a probability distribution, we show that interestingly, the (in)dependence between two observed variables can be directly inferred from the difference in the product of certain joint cumulants of these variables. This concept is named the cause difference criterion. Based on this criterion, we introduce two practical methods, high-order cumulant (HC) and HC-linear non-Gaussian acyclic model (LiNGAM), for causal discovery in the high-dimensional case. Theoretical analyses ensure the identifiability of the proposed criteria and methods. Experimental results indicate that our methods outperform most existing methods.
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