Self-supervised heterogeneous graph neural network based on deep and broad neighborhood encoding

文献类型: 外文期刊

第一作者: Song, Qianyu

作者: Song, Qianyu;Li, Chao;Zeng, Qingtian;Fu, Jinhu;Li, Chao;Xie, Nengfu

作者机构:

关键词: Heterogeneous graphs; Self-supervised learning; Heterogeneous graph neural networks; Graph contrastive learning

期刊名称:APPLIED INTELLIGENCE ( 影响因子:3.5; 五年影响因子:3.8 )

ISSN: 0924-669X

年卷期: 2025 年 55 卷 7 期

页码:

收录情况: SCI

摘要: Self-supervised heterogeneous graph neural networks have shown remarkable effectiveness in addressing the challenge of limited labeled data. However, current contrastive learning methods face limitations in leveraging neighborhood information for each node. Some approaches utilize the local information of the target node, ignoring useful signals from deeper neighborhoods. On the other hand, simply stacking convolutional layers to expand the neighborhood inevitably leads to over-smoothing. To address the problems, we propose HGNN-DB, a Self-supervised Heterogeneous Graph Neural Network Based on Deep and Broad Neighborhood Encoding to tackle the over-smoothing problem within heterogeneous graphs. Specifically, HGNN-DB aims to learn informative node representations by incorporating both deep and broad neighborhoods. We introduce a deep neighborhood encoder with a distance-weighted strategy to capture deep features of target nodes. Additionally, a single-layer graph convolutional network is employed for the broad neighborhood encoder to aggregate broad features of target nodes. Furthermore, we introduce a collaborative contrastive mechanism to learn the complementarity and potential invariance between the two views of neighborhood information. Experimental results on four real-world datasets and seven baselines demonstrate that our model significantly outperforms the current state-of-the-art techniques on multiple downstream tasks. The codes and datasets for this work are available at https://github.com/SSQiana/HGNN-DB.

分类号:

  • 相关文献
作者其他论文 更多>>