Sharp Sobolev Sandwich and Approximation Rates of Radon-Domain $L^p$ Ridge Integral Spaces for ReLU$^k$ Networks
Abstract
We develop the $L^p$ space and approximation theory for shallow neural networks with $\mathrm{ReLU}^k$ activations. The central object is the Radon-domain $L^p$ space $\mathcal{R}L^p_k(Ω)$ containing all functions on a bounded domain $Ω$ that admit a ridge integral representation whose coefficient density belongs to $L^p$ in the Radon domain. In the Hilbert case $p=2$, we prove by elementary Fourier analysis that this space recovers the critical Sobolev space $H^{k+(d+1)/2}(Ω)$. For general $1<p...
Description / Details
We develop the space and approximation theory for shallow neural networks with activations. The central object is the Radon-domain space containing all functions on a bounded domain that admit a ridge integral representation whose coefficient density belongs to in the Radon domain. In the Hilbert case , we prove by elementary Fourier analysis that this space recovers the critical Sobolev space . For general , the identity becomes a Sobolev sandwich. The sharp gap of each side is exactly the Seeger--Sogge--Stein loss for the Radon transform as a Fourier integral operator. This also clarifies how the activation regularity and Radon back-projection jointly produce the regularity. As an application, we discretize the integral representation using a deterministic interpolation skeleton plus uniform sampling. This yields high-probability approximation rates and the optimal Hilbert rate at for linearized neural networks.
Source: arXiv:2606.24795v1 - http://arxiv.org/abs/2606.24795v1 PDF: https://arxiv.org/pdf/2606.24795v1 Original Link: http://arxiv.org/abs/2606.24795v1
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Jun 24, 2026
Mathematics
Mathematics
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