Projections of Model Spaces for Latent Graph Inference
- URL: http://arxiv.org/abs/2303.11754v3
- Date: Wed, 12 Apr 2023 17:19:13 GMT
- Title: Projections of Model Spaces for Latent Graph Inference
- Authors: Haitz S\'aez de Oc\'ariz Borde, \'Alvaro Arroyo, Ingmar Posner
- Abstract summary: Graph Neural Networks leverage the connectivity structure of graphs as an inductive bias.
Latent graph inference focuses on learning an adequate graph structure to diffuse information on and improve the downstream performance of the model.
- Score: 18.219577154655006
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Graph Neural Networks leverage the connectivity structure of graphs as an
inductive bias. Latent graph inference focuses on learning an adequate graph
structure to diffuse information on and improve the downstream performance of
the model. In this work we employ stereographic projections of the hyperbolic
and spherical model spaces, as well as products of Riemannian manifolds, for
the purpose of latent graph inference. Stereographically projected model spaces
achieve comparable performance to their non-projected counterparts, while
providing theoretical guarantees that avoid divergence of the spaces when the
curvature tends to zero. We perform experiments on both homophilic and
heterophilic graphs.
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