D2-GCN: a graph convolutional network with dynamic disentanglement for node classification

Shangwei Wu, Yingtong Xiong, Hui Liang, Chuliang Weng

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Classic Graph Convolutional Networks (GCNs) often learn node representation holistically, which ignores the distinct impacts from different neighbors when aggregating their features to update a node’s representation. Disentangled GCNs have been proposed to divide each node’s representation into several feature units. However, current disentangling methods do not try to figure out how many inherent factors the model should assign to help extract the best representation of each node. This paper then proposes D2-GCN to provide dynamic disentanglement in GCNs and present the most appropriate factorization of each node’s mixed features. The convergence of the proposed method is proved both theoretically and experimentally. Experiments on real-world datasets show that D2-GCN outperforms the baseline models concerning node classification results in both single- and multi-label tasks.

Original languageEnglish
Article number191305
JournalFrontiers of Computer Science
Volume19
Issue number1
DOIs
StatePublished - Jan 2025

Keywords

  • dynamic disentanglement
  • graph convolutional networks
  • label entropy
  • node classification

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