Directed Cyclic Graph for Causal Discovery from Multivariate Functional Data.

Advances in neural information processing systems Pub Date : 2023-01-01 Epub Date: 2024-05-30
Saptarshi Roy, Raymond K W Wong, Yang Ni
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Abstract

Discovering causal relationship using multivariate functional data has received a significant amount of attention very recently. In this article, we introduce a functional linear structural equation model for causal structure learning when the underlying graph involving the multivariate functions may have cycles. To enhance interpretability, our model involves a low-dimensional causal embedded space such that all the relevant causal information in the multivariate functional data is preserved in this lower-dimensional subspace. We prove that the proposed model is causally identifiable under standard assumptions that are often made in the causal discovery literature. To carry out inference of our model, we develop a fully Bayesian framework with suitable prior specifications and uncertainty quantification through posterior summaries. We illustrate the superior performance of our method over existing methods in terms of causal graph estimation through extensive simulation studies. We also demonstrate the proposed method using a brain EEG dataset.

多元函数数据因果发现的有向循环图。
使用多元函数数据发现因果关系最近受到了大量的关注。在本文中,我们引入了一种用于因果结构学习的泛函线性结构方程模型,当涉及多元函数的底层图可能有循环时。为了增强可解释性,我们的模型涉及一个低维因果嵌入空间,以便将多元函数数据中的所有相关因果信息保存在这个低维子空间中。我们证明,在因果发现文献中经常提出的标准假设下,所提出的模型是因果可识别的。为了对我们的模型进行推理,我们开发了一个完全的贝叶斯框架,该框架具有合适的先验规范和通过后验总结进行不确定性量化。我们通过广泛的模拟研究说明了我们的方法在因果图估计方面优于现有方法的性能。我们还使用脑电数据集验证了所提出的方法。
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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