AI RESEARCH
The WidthWall: A Strict Expressivity Hierarchy for Hypergraph Neural Networks
arXiv CS.AI
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ArXi:2605.13690v1 Announce Type: cross Hypergraphs provide a natural framework to model higher-order interactions in scientific, social, and biological systems. Hypergraph neural networks (HGNNs) aim to learn from such data, yet it remains unclear which higher-order structures these models can represent. We show that hypergraph expressivity is governed by which small patterns an architecture can detect and count. We formalize this via homomorphism densities, which measure how often a structural motif appears in a hypergraph.