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Causal Attention for Interpretable and Generalizable Graph Classification

Yongduo Sui, Xiang Wang, Jiancan Wu, Min Lin, Xiangnan He, Tat‐Seng Chua

2022Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining168 citationsDOIOpen Access PDF

Abstract

In graph classification, attention- and pooling-based graph neural networks (GNNs) prevail to extract the critical features from the input graph and support the prediction. They mostly follow the paradigm of learning to attend, which maximizes the mutual information between the attended graph and the ground-truth label. However, this paradigm makes GNN classifiers recklessly absorb all the statistical correlations between input features and labels in the training data, without distinguishing the causal and noncausal effects of features. Instead of underscoring the causal features, the attended graphs are prone to visit the noncausal features as the shortcut to predictions. Such shortcut features might easily change outside the training distribution, thereby making the GNN classifiers suffer from poor generalization.

Topics & Concepts

Computer scienceArtificial intelligenceGraphMachine learningNatural language processingTheoretical computer scienceAdvanced Graph Neural NetworksExplainable Artificial Intelligence (XAI)Bayesian Modeling and Causal Inference