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Dimension lower bounds for linear approaches to function approximation

18 August 2025
Daniel Hsu
ArXiv (abs)PDFHTML
Main:3 Pages
Bibliography:2 Pages
Abstract

This short note presents a linear algebraic approach to proving dimension lower bounds for linear methods that solve L2L^2L2 function approximation problems. The basic argument has appeared in the literature before (e.g., Barron, 1993) for establishing lower bounds on Kolmogorov nnn-widths. The argument is applied to give sample size lower bounds for kernel methods.

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