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📄 Abstract
Abstract: Few-shot node classification on hypergraphs requires models that generalize
from scarce labels while capturing high-order structures. Existing hypergraph
neural networks (HNNs) effectively encode such structures but often suffer from
overfitting and scalability issues due to complex, black-box architectures. In
this work, we propose ZEN (Zero-Parameter Hypergraph Neural Network), a fully
linear and parameter-free model that achieves both expressiveness and
efficiency. Built upon a unified formulation of linearized HNNs, ZEN introduces
a tractable closed-form solution for the weight matrix and a redundancy-aware
propagation scheme to avoid iterative training and to eliminate redundant self
information. On 11 real-world hypergraph benchmarks, ZEN consistently
outperforms eight baseline models in classification accuracy while achieving up
to 696x speedups over the fastest competitor. Moreover, the decision process of
ZEN is fully interpretable, providing insights into the characteristic of a
dataset. Our code and datasets are fully available at
https://github.com/chaewoonbae/ZEN.
Authors (4)
Chaewoon Bae
Doyun Choi
Jaehyun Lee
Jaemin Yoo
Submitted
October 24, 2025
Key Contributions
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