Contextual Structure Knowledge Transfer for Graph Neural Networks

Authors

  • Zhiyuan Yu Nanjing University
  • Wenzhong Li Nanjing University
  • Zhangyue Yin Fudan University
  • Xiaobin Hong Nanjing University
  • Shijian Xiao Nanjing University
  • Sanglu Lu Nanjing University

DOI:

https://doi.org/10.1609/aaai.v39i21.34381

Abstract

Graph transfer learning endeavors to develop a Graph Neural Network (GNN) model in a fully-labeled source domain, with the intention of deploying it on a target domain that has limited labeled data for inference. We reveal that prevalent graph transfer learning methods are susceptible to the homophily shift problem. This issue arises from the divergence in homophily structures between the source and target graphs, leading to a notable deterioration in the performance of GNN models. In this paper, we introduce a novel Contextual Structural Graph Neural Network (CS-GNN) method, leveraging a tailored attention mechanism to apprehend a variety of local structural cues, facilitating structural knowledge transfer across domains. It features an ego-network module to distill local structural diversity and a moment-based approach to gauge structural patterns without needing ground-truth labels. CS-GNN crafts a feature smoothness matrix from node attributes, guiding a customized attention mechanism for feature aggregation. A group-wise fairness loss is employed to balance learning across various structural patterns, enhancing the model's ability to transfer knowledge across domains. Comprehensive experiments conducted on six benchmark datasets substantiate the superiority of CS-GNN over the state-of-the-art methods, demonstrating significant improvements in accuracy and robustness against homophily shifts.

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Published

2025-04-11

How to Cite

Yu, Z., Li, W., Yin, Z., Hong, X., Xiao, S., & Lu, S. (2025). Contextual Structure Knowledge Transfer for Graph Neural Networks. Proceedings of the AAAI Conference on Artificial Intelligence, 39(21), 22263–22271. https://doi.org/10.1609/aaai.v39i21.34381

Issue

Section

AAAI Technical Track on Machine Learning VII