计算机科学
因果关系(物理学)
人工智能
机器学习
因果结构
领域(数学)
数据科学
因果模型
图形
认知科学
理论计算机科学
心理学
医学
量子力学
物理
病理
数学
纯数学
作者
Simi Job,Xiaohui Tao,Taotao Cai,Haoran Xie,Lin Li,Qing Li,Jianming Yong
摘要
ABSTRACT In machine learning, exploring data correlations to predict outcomes is a fundamental task. Recognizing causal relationships embedded within data is pivotal for a comprehensive understanding of system dynamics, the significance of which is paramount in data‐driven decision‐making processes. Beyond traditional methods, there has been a shift toward using graph neural networks (GNNs) for causal learning, given their capabilities as universal data approximators. Thus, a thorough review of the advancements in causal learning using GNNs is both relevant and timely. To structure this review, we introduce a novel taxonomy that encompasses various state‐of‐the‐art GNN methods used in studying causality. GNNs are further categorized based on their applications in the causality domain. We further provide an exhaustive compilation of datasets integral to causal learning with GNNs to serve as a resource for practical study. This review also touches upon the application of causal learning across diverse sectors. We conclude the review with insights into potential challenges and promising avenues for future exploration in this rapidly evolving field of machine learning.
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