Residual Hyperbolic Graph Convolution Networks

Yangkai Xue, Jindou Dai, Zhipeng Lu*, Yuwei Wu*, Yunde Jia

*此作品的通讯作者

科研成果: 期刊稿件会议文章同行评审

摘要

Hyperbolic graph convolutional networks (HGCNs) have demonstrated representational capabilities of modeling hierarchical-structured graphs. However, as in general GCNs, over-smoothing may occur as the number of model layers increases, limiting the representation capabilities of most current HGCN models. In this paper, we propose residual hyperbolic graph convolutional networks (R-HGCNs) to address the over-smoothing problem. We introduce a hyperbolic residual connection function to overcome the over-smoothing problem, and also theoretically prove the effectiveness of the hyperbolic residual function. Moreover, we use product manifolds and HyperDrop to facilitate the R-HGCNs. The distinctive features of the R-HGCNs are as follows: (1) The hyperbolic residual connection preserves the initial node information in each layer and adds a hyperbolic identity mapping to prevent node features from being indistinguishable. (2) Product manifolds in R-HGCNs have been set up with different origin points in different components to facilitate the extraction of feature information from a wider range of perspectives, which enhances the representing capability of R-HGCNs. (3) HyperDrop adds multiplicative Gaussian noise into hyperbolic representations, such that perturbations can be added to alleviate the over-fitting problem without deconstructing the hyperbolic geometry. Experiment results demonstrate the effectiveness of R-HGCNs under various graph convolution layers and different structures of product manifolds.

源语言英语
页(从-至)16247-16254
页数8
期刊Proceedings of the AAAI Conference on Artificial Intelligence
38
15
DOI
出版状态已出版 - 25 3月 2024
活动38th AAAI Conference on Artificial Intelligence, AAAI 2024 - Vancouver, 加拿大
期限: 20 2月 202427 2月 2024

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引用此

Xue, Y., Dai, J., Lu, Z., Wu, Y., & Jia, Y. (2024). Residual Hyperbolic Graph Convolution Networks. Proceedings of the AAAI Conference on Artificial Intelligence, 38(15), 16247-16254. https://doi.org/10.1609/aaai.v38i15.29559