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

Provide feedback
Home
Scholarly Works
UNIVERSAL APPROXIMATION UNDER CONSTRAINTS IS...
Conference

UNIVERSAL APPROXIMATION UNDER CONSTRAINTS IS POSSIBLE WITH TRANSFORMERS

Abstract

Many practical problems need the output of a machine learning model to satisfy a set of constraints, K. There are, however, no known guarantees that classical neural networks can exactly encode constraints while simultaneously achieving universality. We provide a quantitative constrained universal approximation theorem which guarantees that for any convex or non-convex compact set K and any continuous function f : Rn ! K, there is a …

Authors

Kratsios A; Liu T; Dokmanić I; Zamanlooy B

Publication Date

January 1, 2022

Conference proceedings

Iclr 2022 10th International Conference on Learning Representations