Negative as Positive: Enhancing Out-of-distribution Generalization for Graph Contrastive Learning


연구 분야: Verification



학회: SIGIR '24: Proceedings of the 47th International ACM SIGIR Conference on Research and Development in Information Retrieval


초록

Graph contrastive learning (GCL), standing as the dominant paradigm in the realm of graph pre-training, has yielded considerable progress. Nonetheless, its capacity for out-of-distribution (OOD) generalization has been relatively underexplored. In this work, we point out that the traditional optimization of InfoNCE in GCL restricts the cross-domain pairs only to be negative samples, which inevitably enlarges the distribution gap between different domains. This violates the requirement of domain invariance under OOD scenario and consequently impairs the model's OOD generalization performance. To address this issue, we propose a novel strategy ''Negative as Positive'', where the most semantically similar cross-domain negative pairs are treated as positive during GCL. Our experimental results, spanning a wide array of datasets, confirm that this method substantially improves the OOD generalization performance of GCL.


Author Profile
Zixu Wang

CAS Key Laboratory of AI Safety Institute of Computing Technology Chinese Academy of Sciences

Anguilla
Author Profile
Bingbing Xu

University of Chinese Academy of Sciences Beijing China

China
Author Profile
Yige Yuan

CAS Key Laboratory of AI Safety Institute of Computing Technology Chinese Academy of Sciences Beijing China

Anguilla

📄 논문 정보

발행 연도 2024년
인용수 2
출판 국가 China, Anguilla
사이트 ACM
좋아요 수 0

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