Tighter Sparse Approximation Bounds for ReLU Neural Networks
Carles Domingo-Enrich, Youssef Mroueh

TL;DR
This paper introduces new Radon-based semi-norms to analyze finite and infinite-width ReLU neural networks, providing tighter approximation bounds and insights into their structure and connectivity.
Contribution
It extends Radon transform analysis to bounded sets, derives improved approximation bounds, and explores the non-uniqueness and structure of infinite-width network representations.
Findings
Derived Radon-based semi-norms for bounded sets.
Established tighter sparse approximation bounds.
Analyzed the non-uniqueness and structure of infinite-width networks.
Abstract
A well-known line of work (Barron, 1993; Breiman, 1993; Klusowski & Barron, 2018) provides bounds on the width of a ReLU two-layer neural network needed to approximate a function over the ball up to error , when the Fourier based quantity is finite. More recently Ongie et al. (2019) used the Radon transform as a tool for analysis of infinite-width ReLU two-layer networks. In particular, they introduce the concept of Radon-based -norms and show that a function defined on can be represented as an infinite-width two-layer neural network if and only if its -norm is finite. In this work, we extend the framework of Ongie et al. (2019) and define similar Radon-based semi-norms (-norms) such that a…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Machine Learning and Algorithms · Neural Networks and Applications
