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.
翻译:-
潜在图推理的模型空间投影
翻译后的摘要:
Graph Neural Networks利用图的连通性结构作为归纳偏差。潜在图推理着重于学习一个足够的图形结构来扩散信息并提高模型的下游性能。在这项工作中,我们利用双曲和球形模型空间的立体投影,以及黎曼流形的积,用于潜在图的推理。立体投影模型空间实现了与非投影对应物相比可比的性能,同时在曲率趋近于零时提供了避免空间发散的理论保证。我们对同构和异构图进行了实验。