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Shallow ReLU$^s$ Networks in $L^p$-Type and Sobolev Spaces: Approximation and Path-Norm Controlled Generalization

Published 18 May 2026 in stat.ML and cs.LG | (2605.18468v1)

Abstract: We study approximation by shallow ReLU$s$ networks, $σs(t)=\max{0,t}s$, and the generalization behavior of such networks under $\ell_1$ path-norm control. For the $Lp$-type integral spaces $\widetilde{\mathcal{F}}{p,τ_d,s}$, $1\le p\le2$, we establish approximation bounds for shallow networks using spherical harmonic analysis. In particular, when the parameter measure is the uniform measure $τ_d$ and $p<p*=(2d+2)/(d+3)$, we obtain the rate $O(m{-1/2-d(2-p)/(2d(2-p)+2p(2s+d+1))}\log{3/2}m)$, which improves the corresponding random-feature rate. We also derive approximation rates for Sobolev spaces $W{α,p}$ in the range $1\le p<2$ by embedding them into spectral Barron spaces. Finally, for nonparametric regression with sub-Gaussian noise, we prove minimax-optimal generalization bounds for path-norm-regularized shallow ReLU$s$ networks over Barron and Sobolev spaces, with matching lower bounds up to logarithmic factors.

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