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Learning Causally Invariant Representations for Out-of-Distribution Generalization on Graphs

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Despite recent success in using the invariance principle for out-of-distribution (OOD) generalization on Euclidean data (e.g., images), studies on graph data are still limited. Different from images, the complex nature of graphs poses unique challenges to adopting the invariance principle. In particular, distribution shifts on graphs can appear in a variety of forms such as attributes and structures, making it difficult to identify the invariance. Moreover, domain or environment partitions, which are often required by OOD methods on Euclidean data, could be highly expensive to obtain for graphs. To bridge this gap, we propose a new framework, called Causality Inspired Invariant Graph LeArning (CIGA), to capture the invariance of graphs for guaranteed OOD generalization under various distribution shifts. Specifically, we characterize potential distribution shifts on graphs with causal models, concluding that OOD generalization on graphs is achievable when models focus only on subgraphs containing the most information about the causes of labels. Accordingly, we propose an information-theoretic objective to extract the desired subgraphs that maximally preserve the invariant intra-class information. Learning with these subgraphs is immune to distribution shifts. Extensive experiments on 16 synthetic or real-world datasets, including a challenging setting -- DrugOOD, from AI-aided drug discovery, validate the superior OOD performance of CIGA.

Yongqiang Chen, Yonggang Zhang, Yatao Bian, Han Yang, Kaili Ma, Binghui Xie, Tongliang Liu, Bo Han, James Cheng• 2022

Related benchmarks

TaskDatasetResultRank
Graph ClassificationMolHIV
ROC AUC59.55
82
Graph ClassificationTwitter
Accuracy64.45
57
Graph ClassificationDrugOOD EC50 (OOD test)
ROC AUC74.31
52
Graph ClassificationDrugOOD Ki-Sca (Scaffold-based OOD shift)
ROC-AUC73.98
36
Graph ClassificationDrugOOD EC50 (Scaffold-based OOD shift)
ROC AUC65.8
36
Graph ClassificationMolbbbp (scaffold)
ROC-AUC64.92
31
Graph ClassificationMotif base
Accuracy68.87
29
Graph ClassificationMotif (size)
Accuracy51.95
29
Graph ClassificationHIV GraphOOD (test)
ROC-AUC69.4
26
Classificationmolbbbp OGB
ROC-AUC65.98
25
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