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Autors principals: Liu, Jiaxu, Yi, Xinping, Huang, Xiaowei
Format: Preprint
Publicat: 2023
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Accés en línia:https://arxiv.org/abs/2310.02027
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author Liu, Jiaxu
Yi, Xinping
Huang, Xiaowei
author_facet Liu, Jiaxu
Yi, Xinping
Huang, Xiaowei
contents Hyperbolic graph convolutional networks (HGCNs) have demonstrated significant potential in extracting information from hierarchical graphs. However, existing HGCNs are limited to shallow architectures due to the computational expense of hyperbolic operations and the issue of over-smoothing as depth increases. Although treatments have been applied to alleviate over-smoothing in GCNs, developing a hyperbolic solution presents distinct challenges since operations must be carefully designed to fit the hyperbolic nature. Addressing these challenges, we propose DeepHGCN, the first deep multi-layer HGCN architecture with dramatically improved computational efficiency and substantially reduced over-smoothing. DeepHGCN features two key innovations: (1) a novel hyperbolic feature transformation layer that enables fast and accurate linear mappings, and (2) techniques such as hyperbolic residual connections and regularization for both weights and features, facilitated by an efficient hyperbolic midpoint method. Extensive experiments demonstrate that DeepHGCN achieves significant improvements in link prediction and node classification tasks compared to both Euclidean and shallow hyperbolic GCN variants.
format Preprint
id arxiv_https___arxiv_org_abs_2310_02027
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle DeepHGCN: Toward Deeper Hyperbolic Graph Convolutional Networks
Liu, Jiaxu
Yi, Xinping
Huang, Xiaowei
Machine Learning
Hyperbolic graph convolutional networks (HGCNs) have demonstrated significant potential in extracting information from hierarchical graphs. However, existing HGCNs are limited to shallow architectures due to the computational expense of hyperbolic operations and the issue of over-smoothing as depth increases. Although treatments have been applied to alleviate over-smoothing in GCNs, developing a hyperbolic solution presents distinct challenges since operations must be carefully designed to fit the hyperbolic nature. Addressing these challenges, we propose DeepHGCN, the first deep multi-layer HGCN architecture with dramatically improved computational efficiency and substantially reduced over-smoothing. DeepHGCN features two key innovations: (1) a novel hyperbolic feature transformation layer that enables fast and accurate linear mappings, and (2) techniques such as hyperbolic residual connections and regularization for both weights and features, facilitated by an efficient hyperbolic midpoint method. Extensive experiments demonstrate that DeepHGCN achieves significant improvements in link prediction and node classification tasks compared to both Euclidean and shallow hyperbolic GCN variants.
title DeepHGCN: Toward Deeper Hyperbolic Graph Convolutional Networks
topic Machine Learning
url https://arxiv.org/abs/2310.02027