Experts has a new look! Let us know what you think of the updates.

Provide feedback
Home
Scholarly Works
Universal Approximation Theorems for...
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

Labels

Fields of Research (FoR)