TL;DR
This paper introduces a canonical transformation that enhances the local $L^p$ approximation capabilities of machine learning models, ensuring density in a finer topological space and revealing fundamental expressibility gaps, especially for analytic function classes.
Contribution
The paper proposes a canonical transform to improve $L^p$-type universal approximation, establishing density in a strict topology and analyzing the expressibility gap for analytic functions.
Findings
Transformed model class is dense in a finer topological space.
Analytic function classes exhibit a strict gap in expressibility.
Applications demonstrated for neural networks and polynomial bases.
Abstract
Most -type universal approximation theorems guarantee that a given machine learning model class is dense in for any suitable finite Borel measure on . Unfortunately, this means that the model's approximation quality can rapidly degenerate outside some compact subset of , as any such measure is largely concentrated on some bounded subset of . This paper proposes a generic solution to this approximation theoretic problem by introducing a canonical transformation which "upgrades 's approximation property" in the following sense. The transformed model class, denoted by , is shown to be dense in which is a topological space whose elements are locally…
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Taxonomy
MethodsSigmoid Activation
