Journal article
Universal Approximation Theorems for Differentiable Geometric Deep Learning
Abstract
This paper addresses the growing need to process non-Euclidean data, by introducing a geometric deep learning (GDL) framework for building universal feedforward-type models compatible with differentiable manifold geometries. We show that our GDL models can approximate any continuous target function uniformly on compact sets of a controlled maximum diameter. We obtain curvature dependant lower-bounds on this maximum diameter and upper-bounds on …
Authors
Kratsios A; Papon L
Journal
Journal of Machine Learning Research, Vol. 23, ,
Publication Date
July 1, 2022
ISSN
1532-4435