Error bounds for function approximation using generated sets
Abstract
This paper explores the use of "generated sets" for function approximation in reproducing kernel Hilbert spaces which consist of multi-dimensional functions with an absolutely convergent Fourier series. The algorithm is a least squares algorithm that samples the function at the points of a generated set. We show that there exist for which the worst-case error has the optimal order of convergence if the space has polynomially converging approximation numbers. In fact, this holds for a significant portion of the generators. Additionally we show that a restriction to rational generators is possible with a slight increase of the bound. Furthermore, we specialise the results to the weighted Korobov space, where we derive a bound applicable to low values of sample points, and state tractability results.
Cite
@article{arxiv.2505.00440,
title = {Error bounds for function approximation using generated sets},
author = {Ronald Cools and Dirk Nuyens and Laurence Wilkes},
journal= {arXiv preprint arXiv:2505.00440},
year = {2025}
}