PLoS ONE (Jan 2024)

A simple and effective convolutional operator for node classification without features by graph convolutional networks.

  • Qingju Jiao,
  • Han Zhang,
  • Jingwen Wu,
  • Nan Wang,
  • Guoying Liu,
  • Yongge Liu

DOI
https://doi.org/10.1371/journal.pone.0301476
Journal volume & issue
Vol. 19, no. 4
p. e0301476

Abstract

Read online

Graph neural networks (GNNs), with their ability to incorporate node features into graph learning, have achieved impressive performance in many graph analysis tasks. However, current GNNs including the popular graph convolutional network (GCN) cannot obtain competitive results on the graphs without node features. In this work, we first introduce path-driven neighborhoods, and then define an extensional adjacency matrix as a convolutional operator. Second, we propose an approach named exopGCN which integrates the simple and effective convolutional operator into GCN to classify the nodes in the graphs without features. Experiments on six real-world graphs without node features indicate that exopGCN achieves better performance than other GNNs on node classification. Furthermore, by adding the simple convolutional operator into 13 GNNs, the accuracy of these methods are improved remarkably, which means that our research can offer a general skill to improve accuracy of GNNs. More importantly, we study the relationship between node classification by GCN without node features and community detection. Extensive experiments including six real-world graphs and nine synthetic graphs demonstrate that the positive relationship between them can provide a new direction on exploring the theories of GCNs.