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Individual and Structural Graph Information Bottlenecks for Out-of-Distribution Generalization
- Source :
- IEEE Transactions on Knowledge and Data Engineering; February 2024, Vol. 36 Issue: 2 p682-693, 12p
- Publication Year :
- 2024
-
Abstract
- Out-of-distribution (OOD) graph generalization are critical for many real-world applications. Existing methods neglect to discard spurious or noisy features of inputs, which are irrelevant to the label. Besides, they mainly conduct instance-level class-invariant graph learning and fail to utilize the structural class relationships between graph instances. In this work, we endeavor to address these issues in a unified framework, dubbed Individual and Structural Graph Information Bottlenecks (IS-GIB). To remove class spurious feature caused by distribution shifts, we propose Individual Graph Information Bottleneck (I-GIB) which discards irrelevant information by minimizing the mutual information between the input graph and its embeddings. To leverage the structural intra- and inter-domain correlations, we propose Structural Graph Information Bottleneck (S-GIB). Specifically for a batch of graphs with multiple domains, S-GIB first computes the pair-wise input-input, embedding-embedding, and label-label correlations. Then it minimizes the mutual information between input graph and embedding pairs while maximizing the mutual information between embedding and label pairs. The critical insight of S-GIB is to simultaneously discard spurious features and learn invariant features from a high-order perspective by maintaining class relationships under multiple distributional shifts. Notably, we unify the proposed I-GIB and S-GIB to form our complementary framework IS-GIB. Extensive experiments conducted on both node- and graph-level tasks consistently demonstrate the superior generalization ability of IS-GIB.
Details
- Language :
- English
- ISSN :
- 10414347 and 15582191
- Volume :
- 36
- Issue :
- 2
- Database :
- Supplemental Index
- Journal :
- IEEE Transactions on Knowledge and Data Engineering
- Publication Type :
- Periodical
- Accession number :
- ejs65157431
- Full Text :
- https://doi.org/10.1109/TKDE.2023.3290792