HNHN: Hypergraph Networks with Hyperedge Neurons
- URL: http://arxiv.org/abs/2006.12278v1
- Date: Mon, 22 Jun 2020 14:08:32 GMT
- Title: HNHN: Hypergraph Networks with Hyperedge Neurons
- Authors: Yihe Dong, Will Sawin, Yoshua Bengio
- Abstract summary: HNHN is a hypergraph convolution network with nonlinear activation functions applied to both hypernodes and hyperedges.
We demonstrate improved performance of HNHN in both classification accuracy and speed on real world datasets when compared to state of the art methods.
- Score: 90.15253035487314
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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