PathMLP: Smooth path towards high-order homophily.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Real-world graphs exhibit increasing heterophily, where nodes no longer tend to be connected to nodes with the same label, challenging the homophily assumption of classical graph neural networks (GNNs) and impeding their performance. Intriguingly, from the observation of heterophilous data, we notice that certain high-order information exhibits higher homophily, which motivates us to involve high-order information in node representation learning. However, common practices in GNNs to acquire high-order information mainly through increasing model depth and altering message-passing mechanisms, which, albeit effective to a certain extent, suffer from three shortcomings: (1) over-smoothing due to excessive model depth and propagation times; (2) high-order information is not fully utilized; (3) low computational efficiency. In this regard, we design a similarity-based path sampling strategy to capture smooth paths containing high-order homophily. Then we propose a lightweight model based on multi-layer perceptrons (MLP), named PathMLP, which can encode messages carried by paths via simple transformation and concatenation operations, and effectively learn node representations in heterophilous graphs through adaptive path aggregation. Extensive experiments demonstrate that our method outperforms baselines on 16 out of 20 datasets, underlining its effectiveness and superiority in alleviating the heterophily problem. In addition, our method is immune to over-smoothing and has high computational efficiency. The source code will be available in https://github.com/Graph4Sec-Team/PathMLP.

Authors

  • Jiajun Zhou
    Key Laboratory for Carbonaceous Waste Processing and Process Intensification Research of Zhejiang Province, University of Nottingham Ningbo China, 199 Taikang East Road, Ningbo 315100, China.
  • Chenxuan Xie
    Institute of Cyberspace Security, Zhejiang University of Technology, Hangzhou, 310023, China; Binjiang Institute of Artificial Intelligence, Hangzhou, 310056, China. Electronic address: 221122030330@zjut.edu.cn.
  • Shengbo Gong
    Institute of Cyberspace Security, Zhejiang University of Technology, Hangzhou, 310023, China; Binjiang Institute of Artificial Intelligence, Hangzhou, 310056, China. Electronic address: jshmhsb@zjut.edu.cn.
  • Jiaxu Qian
    Institute of Cyberspace Security, Zhejiang University of Technology, Hangzhou, 310023, China; Binjiang Institute of Artificial Intelligence, Hangzhou, 310056, China. Electronic address: 2112103225@zjut.edu.cn.
  • Shanqing Yu
    Institute of Cyberspace Security, Zhejiang University of Technology, Hangzhou, 310023, China; Binjiang Institute of Artificial Intelligence, Hangzhou, 310056, China. Electronic address: yushanqing@zjut.edu.cn.
  • Qi Xuan
    Institute of Cyberspace Security, Zhejiang University of Technology, Hangzhou, 310023, China; Binjiang Institute of Artificial Intelligence, Hangzhou, 310056, China. Electronic address: xuanqi@zjut.edu.cn.
  • Xiaoniu Yang
    Institute of Cyberspace Security, Zhejiang University of Technology, Hangzhou, 310023, China; Science and Technology on Communication Information Security Control Laboratory, Jiaxing, 314033, China. Electronic address: yxn2117@126.com.