When Hypergraph Meets Heterophily: New Benchmark Datasets and Baseline

Authors

  • Ming Li Zhejiang Key Laboratory of Intelligent Education Technology and Application, Zhejiang Normal University Zhejiang Institute of Optoelectronics
  • Yongchun Gu Zhejiang Key Laboratory of Intelligent Education Technology and Application, Zhejiang Normal University
  • Yi Wang School of Computer Science and Technology, Zhejiang Normal University Zhejiang Key Laboratory of Intelligent Education Technology and Application, Zhejiang Normal University
  • Yujie Fang School of Computer Science and Technology, Zhejiang Normal University Zhejiang Key Laboratory of Intelligent Education Technology and Application, Zhejiang Normal University
  • Lu Bai School of Artificial Intelligence, and Engineering Research Center of Intelligent Technology and Educational Application, Ministry of Education, Beijing Normal University
  • Xiaosheng Zhuang Department of Mathematics, City University of Hong Kong
  • Pietro Liò Department of Computer Science and Technology, Cambridge University

DOI:

https://doi.org/10.1609/aaai.v39i17.34022

Abstract

Hypergraph neural networks (HNNs) have shown promise in handling tasks characterized by high-order correlations, achieving notable success across various applications. However, there has been limited focus on heterophilic hypergraph learning (HHL), in contrast to the increasing attention given to graph neural networks designed for graphs exhibiting heterophily. This paper aims to pave the way for HHL by addressing key gaps from multiple perspectives: measurement, dataset diversity, and baseline model development. First, we introduce metrics to quantify heterophily in hypergraphs, providing a numerical basis for assessing the homophily/heterophily ratio. Second, we develop diverse benchmark datasets across various real-world scenarios, facilitating comprehensive evaluations of existing HNNs and advancing research in HHL. Additionally, as a novel baseline model, we propose HyperUFG, a framelet-based HNN integrating both low-pass and high-pass filters. Extensive experiments conducted on synthetic and benchmark datasets highlight the challenges current HNNs face with heterophilic hypergraphs, while showcasing that HyperUFG performs competitively and often outperforms many existing models in such scenarios. Overall, our study underscores the urgent need for further exploration and development in this emerging field, with the potential to inspire and guide future research in HHL.

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Published

2025-04-11

How to Cite

Li, M., Gu, Y., Wang, Y., Fang, Y., Bai, L., Zhuang, X., & Liò, P. (2025). When Hypergraph Meets Heterophily: New Benchmark Datasets and Baseline. Proceedings of the AAAI Conference on Artificial Intelligence, 39(17), 18377–18384. https://doi.org/10.1609/aaai.v39i17.34022

Issue

Section

AAAI Technical Track on Machine Learning III