Nonlinear Causal Discovery in Time Series

Tianhao Wu, Xingyu Wu, Xin Wang, Shikang Liu, Huanhuan Chen
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引用次数: 4

Abstract

Recent years have witnessed the proliferation of the Functional Causal Model (FCM) for causal learning due to its intuitive representation and accurate learning results. However, existing FCM-based algorithms suffer from the ubiquitous nonlinear relations in time-series data, mainly because these algorithms either assume linear relationships, or nonlinear relationships with additive noise, or do not introduce additional assumptions but can only identify nonlinear causality between two variables. This paper contributes in particular to a practical FCM-based causal learning approach, which can maintain effectiveness for real-world nonstationary data with general nonlinear relationships and unlimited variable scale.Specifically, the non-stationarity of time series data is first exploited with the nonlinear independent component analysis, to discover the underlying components or latent disturbances. Then, the conditional independence between variables and these components is studied to obtain a relation matrix, which guides the algorithm to recover the underlying causal graph. The correctness of the proposal is theoretically proved, and extensive experiments further verify its effectiveness. To the best of our knowledge, the proposal is the first so far that can fully identify causal relationships under general nonlinear conditions.
时间序列中的非线性因果发现
近年来,功能因果模型(Functional Causal Model, FCM)因其直观的表征和准确的学习结果而得到广泛应用。然而,现有的基于fcm的算法在时间序列数据中普遍存在非线性关系,这主要是因为这些算法要么假设线性关系,要么假设非线性关系与加性噪声,或者不引入额外的假设,而只能识别两个变量之间的非线性因果关系。本文特别提出了一种实用的基于fcm的因果学习方法,该方法可以对具有一般非线性关系和无限变量尺度的现实世界非平稳数据保持有效性。具体而言,首先利用时间序列数据的非平稳性与非线性独立分量分析,以发现潜在的成分或潜在的干扰。然后,研究变量与这些成分之间的条件独立性,得到关系矩阵,该关系矩阵指导算法恢复潜在的因果图。理论证明了该方案的正确性,大量的实验进一步验证了其有效性。据我们所知,该建议是迄今为止第一个能够在一般非线性条件下完全识别因果关系的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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