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Heterophily-Agnostic Hypergraph Neural Networks with Riemannian Local Exchanger

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Hypergraphs are the natural description of higher-order interactions among objects, widely applied in social network analysis, cross-modal retrieval, etc. Hypergraph Neural Networks (HGNNs) have become the dominant solution for learning on hypergraphs. Traditional HGNNs are extended from message passing graph neural networks, following the homophily assumption, and thus struggle with the prevalent heterophilic hypergraphs that call for long-range dependence modeling. In this paper, we achieve heterophily-agnostic message passing through the lens of Riemannian geometry. The key insight lies in the connection between oversquashing and hypergraph bottleneck within the framework of Riemannian manifold heat flow. Building on this, we propose the novel idea of locally adapting the bottlenecks of different subhypergraphs. The core innovation of the proposed mechanism is the design of an adaptive local (heat) exchanger. Specifically, it captures the rich long-range dependencies via the Robin condition, and preserves the representation distinguishability via source terms, thereby enabling heterophily-agnostic message passing with theoretical guarantees. Based on this theoretical foundation, we present a novel Heat-Exchanger with Adaptive Locality for Hypergraph Neural Network (HealHGNN), designed as a node-hyperedge bidirectional systems with linear complexity in the number of nodes and hyperedges. Extensive experiments on both homophilic and heterophilic cases show that HealHGNN achieves the state-of-the-art performance.

Li Sun, Ming Zhang, Wenxin Jin, Zhongtian Sun, Zhenhao Huang, Hao Peng, Sen Su, Philip Yu• 2026

Related benchmarks

TaskDatasetResultRank
Node ClassificationCiteseer
Accuracy75.06
1037
Node ClassificationPubmed
Accuracy88.8
865
Node ClassificationDBLP CA
Accuracy91.98
62
Node ClassificationWalmart
Accuracy68.22
37
Node ClassificationHouse
Accuracy77.18
32
Node ClassificationSenate
Accuracy76.06
28
Hypergraph Node ClassificationCiteseer 50/25/25 (test)
Test Accuracy75.1
16
Hypergraph Node ClassificationHouse 50/25/25 (test)
Test Accuracy77.2
16
Hypergraph Node ClassificationPubmed 50/25/25 (test)
Test Accuracy88.8
16
Hypergraph Node ClassificationDBLP-CA 50/25/25 (test)
Test Accuracy92
15
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