Simplicial Convolutional Neural Networks
- URL: http://arxiv.org/abs/2110.02585v1
- Date: Wed, 6 Oct 2021 08:52:55 GMT
- Title: Simplicial Convolutional Neural Networks
- Authors: Maosheng Yang, Elvin Isufi and Geert Leus
- Abstract summary: Recently, signal processing and neural networks have been extended to process and learn from data on graphs.
We propose a simplicial convolutional neural network (SCNN) architecture to learn from data defined on simplices.
- Score: 36.078200422283835
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Graphs can model networked data by representing them as nodes and their
pairwise relationships as edges. Recently, signal processing and neural
networks have been extended to process and learn from data on graphs, with
achievements in tasks like graph signal reconstruction, graph or node
classifications, and link prediction. However, these methods are only suitable
for data defined on the nodes of a graph. In this paper, we propose a
simplicial convolutional neural network (SCNN) architecture to learn from data
defined on simplices, e.g., nodes, edges, triangles, etc. We study the SCNN
permutation and orientation equivariance, complexity, and spectral analysis.
Finally, we test the SCNN performance for imputing citations on a coauthorship
complex.
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