HNHN: Hypergraph Networks with Hyperedge Neurons
About
Hypergraphs provide a natural representation for many real world datasets. We propose a novel framework, HNHN, for hypergraph representation learning. HNHN is a hypergraph convolution network with nonlinear activation functions applied to both hypernodes and hyperedges, combined with a normalization scheme that can flexibly adjust the importance of high-cardinality hyperedges and high-degree vertices depending on the dataset. We demonstrate improved performance of HNHN in both classification accuracy and speed on real world datasets when compared to state of the art methods.
Yihe Dong, Will Sawin, Yoshua Bengio• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Node Classification | Citeseer (test) | Accuracy0.7264 | 729 | |
| Node Classification | Cora (test) | Mean Accuracy76.36 | 687 | |
| Node Classification | PubMed (test) | Accuracy86.9 | 500 | |
| Node Classification | Cora HET. (test) | Accuracy64.69 | 30 | |
| Node Classification | Cora HOMO. (test) | Mean Accuracy72.12 | 30 | |
| Hypergraph Classification | IMDB dir form | Accuracy67.04 | 26 | |
| Node Classification | Yelp (test) | -- | 26 | |
| Vertex Classification | Zoo (test) | Accuracy (%)93.59 | 21 | |
| Node Classification | Senate sigma=1.0 | Mean Accuracy54.71 | 15 | |
| Node Classification | Citeseer HET. (test) | Accuracy66.65 | 15 |
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