Projection Methods for Operator Learning and Universal Approximation
Abstract
We obtain a new universal approximation theorem for continuous (possibly nonlinear) operators on arbitrary Banach spaces using the Leray-Schauder mapping. Moreover, we introduce and study a method for operator learning in Banach spaces of functions with multiple variables, based on orthogonal projections on polynomial bases. We derive a universal approximation result for operators where we learn a linear projection and a finite dimensional mapping under some additional assumptions. For the case of , we give some sufficient conditions for the approximation results to hold. This article serves as the theoretical framework for a deep learning methodology in operator learning.
Cite
@article{arxiv.2406.12264,
title = {Projection Methods for Operator Learning and Universal Approximation},
author = {Emanuele Zappala},
journal= {arXiv preprint arXiv:2406.12264},
year = {2026}
}
Comments
16 pages. Comments are welcome! v4: Further typos and issues have been fixed. Some parts have been reorganized