Geometrically Equivariant Graph Neural Networks: A Survey
- URL: http://arxiv.org/abs/2202.07230v2
- Date: Wed, 16 Feb 2022 11:37:56 GMT
- Title: Geometrically Equivariant Graph Neural Networks: A Survey
- Authors: Jiaqi Han, Yu Rong, Tingyang Xu, Wenbing Huang
- Abstract summary: We analyze and classify existing methods into three groups regarding how the message passing and aggregation in GNNs are represented.
We also summarize the benchmarks as well as the related datasets to facilitate later researches for methodology development and experimental evaluation.
- Score: 44.73146997637709
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Many scientific problems require to process data in the form of geometric
graphs. Unlike generic graph data, geometric graphs exhibit symmetries of
translations, rotations, and/or reflections. Researchers have leveraged such
inductive bias and developed geometrically equivariant Graph Neural Networks
(GNNs) to better characterize the geometry and topology of geometric graphs.
Despite fruitful achievements, it still lacks a survey to depict how
equivariant GNNs are progressed, which in turn hinders the further development
of equivariant GNNs. To this end, based on the necessary but concise
mathematical preliminaries, we analyze and classify existing methods into three
groups regarding how the message passing and aggregation in GNNs are
represented. We also summarize the benchmarks as well as the related datasets
to facilitate later researches for methodology development and experimental
evaluation. The prospect for future potential directions is also provided.
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