Bridging the Gap Between Approximation and Learning via Optimal Approximation by ReLU MLPs of Maximal Regularity
Ruiyang Hong, Anastasis Kratsios

TL;DR
This paper constructs a structured class of ReLU MLPs that are both universal approximators and statistically reliable, bridging the gap between approximation theory and learning theory in deep neural networks.
Contribution
It introduces a new class of ReLU MLPs with optimal approximation properties and good generalization, using a novel construction based on Kuhn triangulations.
Findings
ReLU MLPs can approximate Hölder functions with error $ ext{O}(1/n)$.
The proposed MLPs have near-optimal sample complexity of $ ext{O}(rac{ ext{log}(N)}{ extsqrt{N}})$.
The construction preserves regularity for Hölder and uniformly continuous functions.
Abstract
The foundations of deep learning are supported by the seemingly opposing perspectives of approximation or learning theory. The former advocates for large/expressive models that need not generalize, while the latter considers classes that generalize but may be too small/constrained to be universal approximators. Motivated by real-world deep learning implementations that are both expressive and statistically reliable, we ask: "Is there a class of neural networks that is both large enough to be universal but structured enough to generalize?" This paper constructively provides a positive answer to this question by identifying a highly structured class of ReLU multilayer perceptions (MLPs), which are optimal function approximators and are statistically well-behaved. We show that any -H\"{o}lder function from to can be approximated to a uniform…
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Taxonomy
TopicsNeural Networks and Applications
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