Efficient recovery of non-periodic multivariate functions from few scattered samples

06/12/2023
by   Felix Bartel, et al.
0

It has been observed by several authors that well-known periodization strategies like tent or Chebychev transforms lead to remarkable results for the recovery of multivariate functions from few samples. So far, theoretical guarantees are missing. The goal of this paper is twofold. On the one hand, we give such guarantees and briefly describe the difficulties of the involved proof. On the other hand, we combine these periodization strategies with recent novel constructive methods for the efficient subsampling of finite frames in ℂ. As a result we are able to reconstruct non-periodic multivariate functions from very few samples. The used sampling nodes are the result of a two-step procedure. Firstly, a random draw with respect to the Chebychev measure provides an initial node set. A further sparsification technique selects a significantly smaller subset of these nodes with equal approximation properties. This set of sampling nodes scales linearly in the dimension of the subspace on which we project and works universally for the whole class of functions. The method is based on principles developed by Batson, Spielman, and Srivastava and can be numerically implemented. Samples on these nodes are then used in a (plain) least-squares sampling recovery step on a suitable hyperbolic cross subspace of functions resulting in a near-optimal behavior of the sampling error. Numerical experiments indicate the applicability of our results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/22/2019

Worst case recovery guarantees for least squares approximation using random samples

We consider a least squares regression algorithm for the recovery of com...
research
02/25/2022

Constructive subsampling of finite frames with applications in optimal function recovery

In this paper we present new constructive methods, random and determinis...
research
04/09/2022

Stability and error guarantees for least squares approximation with noisy samples

Given n samples of a function f : D→ℂ in random points drawn with respec...
research
03/20/2021

A note on sampling recovery of multivariate functions in the uniform norm

We study the recovery of multivariate functions from reproducing kernel ...
research
12/06/2019

Efficient multivariate approximation on the cube

For the approximation of multivariate non-periodic functions h on the hi...
research
03/21/2020

A Deterministic Algorithm for Constructing Multiple Rank-1 Lattices of Near-Optimal Size

In this paper we present the first known deterministic algorithm for the...
research
05/24/2023

Random periodic sampling patterns for shift-invariant spaces

We consider multi-variate signals spanned by the integer shifts of a set...

Please sign up or login with your details

Forgot password? Click here to reset