Edge Self-Adversarial Augmentation Enhances Graph Contrastive Learning Against Neighborhood Inconsistency

Authors

  • Chunchun Chen Shanghai Research Institute for Intelligent Autonomous Systems, Tongji University, China
  • Xing Wei College of Electronic and Information Engineering, Tongji University, China
  • Jiayi Yang College of Electronic and Information Engineering, Tongji University, China
  • Chenrun Wang College of Electronic and Information Engineering, Tongji University, China
  • Yiwei Fu School of Mathematical Sciences, Peking University, China
  • Yuxing Zhang School of Computer Science, Shanghai Jiao Tong University, China
  • Xin Sun Faculty of Data Science, City University of Macau, Taipa, Macau, China
  • Rui Fan Shanghai Research Institute for Intelligent Autonomous Systems, Tongji University, China College of Electronic and Information Engineering, Tongji University, China National Key Laboratory of Human-Machine Hybrid Augmented Intelligence, Xi’an Jiaotong University, China
  • Wei Ye Shanghai Research Institute for Intelligent Autonomous Systems, Tongji University, China College of Electronic and Information Engineering, Tongji University, China

DOI:

https://doi.org/10.1609/aaai.v40i24.39085

Abstract

Recent studies have shown that unsupervised graph contrastive learning (GCL) is vulnerable to adversarial attacks. Automatic adversarial augmentation techniques are proposed to improve both the effectiveness and robustness of GCL. Existing methods typically regard unsupervised contrastive loss as the adversarial goal, essentially aiming to maximize inter-view instance-wise discrepancies between adversarial and original views. However, such attacks overlook intra-view neighborhood inconsistency, which hinders the robustness of GCL models against local neighborhood noises, resulting in performance degradation on low-homophily graphs. To tackle this issue, we propose a novel adversarial contrastive paradigm, named Edge self-aDversarial Augmentation for Graph Contrastive Learning (EDA-GCL). We theoretically establish that the adversarial objective of the intra-view neighborhood is equivalent to maximizing the discrepancy between bidirectional edge features. Hence, we build our adversarial framework based on edge self-adversarial learning. It generates pairwise adversarial augmentations from the original view by learning distinct neighborhood connectivity structures. The learned pairwise adversarial views are utilized for GCL model training in the minimization stage. Notably, this edge-level adversarial approach reduces the computational complexity to the level of the edge number. Experiments on various graph tasks and complex noise scenarios demonstrate the superiority and robustness of our EDA-GCL.

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Published

2026-03-14

How to Cite

Chen, C., Wei, X., Yang, J., Wang, C., Fu, Y., Zhang, Y., … Ye, W. (2026). Edge Self-Adversarial Augmentation Enhances Graph Contrastive Learning Against Neighborhood Inconsistency. Proceedings of the AAAI Conference on Artificial Intelligence, 40(24), 20005–20013. https://doi.org/10.1609/aaai.v40i24.39085

Issue

Section

AAAI Technical Track on Machine Learning I