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EquiHGNN: Scalable Rotationally Equivariant Hypergraph Neural Networks

An equivariant hypergraph neural network framework captures complex molecular interactions by enforcing symmetry and incorporating geometric features, leading to improved performance on large molecular datasets compared to traditional graph-based models.

Year
2025
Venue
arXiv 2025
Authors
2
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arxiv.org/abs/2505.05650ARXIV-DEFAULT
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Abstract

Molecular interactions often involve high-order relationships that cannot be fully captured by traditional graph-based models limited to pairwise connections. Hypergraphs naturally extend graphs by enabling multi-way interactions, making them well-suited for modeling complex molecular systems. In this work, we introduce EquiHGNN, an Equivariant HyperGraph Neural Network framework that integrates symmetry-aware representations to improve molecular modeling. By enforcing the equivariance under relevant transformation groups, our approach preserves geometric and topological properties, leading to more robust and physically meaningful representations. We examine a range of equivariant architectures and demonstrate that integrating symmetry constraints leads to notable performance gains on large-scale molecular datasets. Experiments on both small and large molecules show that high-order interactions offer limited benefits for small molecules but consistently outperform 2D graphs on larger ones. Adding geometric features to these high-order structures further improves the performance, emphasizing the value of spatial information in molecular learning. Our source code is available at https://github.com/HySonLab/EquiHGNN/

Authors

2