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Convergence of sparse grid Gaussian convolution approximation for multi-dimensional periodic function

Numerical Analysis 2022-02-28 v1 Numerical Analysis

Abstract

We consider the problem of approximating [0,1]d[0,1]^{d}-periodic functions by convolution with a scaled Gaussian kernel. We start by establishing convergence rates to functions from periodic Sobolev spaces and we show that the saturation rate is O(h2),O(h^{2}), where hh is the scale of the Gaussian kernel. Taken from a discrete point of view, this result can be interpreted as the accuracy that can be achieved on the uniform grid with spacing h.h. In the discrete setting, the curse of dimensionality would place severe restrictions on the computation of the approximation. For instance, a spacing of 2n2^{-n} would provide an approximation converging at a rate of O(22n)O(2^{-2n}) but would require (2n+1)d(2^{n}+1)^{d} grid points. To overcome this we introduce a sparse grid version of Gaussian convolution approximation, where substantially fewer grid points are required, and show that the sparse grid version delivers a saturation rate of O(nd122n).O(n^{d-1}2^{-2n}). This rate is in line with what one would expect in the sparse grid setting (where the full grid error only deteriorates by a factor of order nd1n^{d-1}) however the analysis that leads to the result is novel in that it draws on results from the theory of special functions and key observations regarding the form of certain weighted geometric sums.

Keywords

Cite

@article{arxiv.2202.12658,
  title  = {Convergence of sparse grid Gaussian convolution approximation for multi-dimensional periodic function},
  author = {Simon Hubbert and Janin Jäger and Jeremy Levesley},
  journal= {arXiv preprint arXiv:2202.12658},
  year   = {2022}
}
R2 v1 2026-06-24T09:53:48.043Z