Tackling Over-smoothing on Hypergraphs: A Ricci Flow-guided Neural Diffusion Approach
arXiv cs.LG / 3/18/2026
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Key Points
- The paper identifies that hypergraph neural networks suffer from over-smoothing as the number of layers increases and proposes using discrete Ricci flow to regulate node feature evolution.
- It introduces Ricci Flow-guided Hypergraph Neural Diffusion (RFHND), a novel message-passing paradigm for hypergraphs built on a PDE system describing the continuous evolution of node features.
- RFHND adaptively regulates the rate of information diffusion at the geometric level, helping to prevent feature homogenization and producing higher-quality node representations.
- The approach is demonstrated to significantly outperform existing methods on multiple benchmark datasets and shows robustness to over-smoothing.
- The work provides theoretical justification linking discrete Ricci flow to diffusion dynamics on hypergraphs, supporting the method's ability to control feature evolution.
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