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

03/21/2020
by   Craig Gross, et al.
0

In this paper we present the first known deterministic algorithm for the construction of multiple rank-1 lattices for the approximation of periodic functions of many variables. The algorithm works by converting a potentially large reconstructing single rank-1 lattice for some d-dimensional frequency set I ⊂ [N]^d into a collection of much smaller rank-1 lattices which allow for accurate and efficient reconstruction of trigonometric polynomials with coefficients in I (and, therefore, for the approximation of multivariate periodic functions). The total number of sampling points in the resulting multiple rank-1 lattices is theoretically shown to be less than O( |I| log^ 2 (N |I|) ) with constants independent of d, and by performing one-dimensional fast Fourier transforms on samples of trigonometric polynomials with Fourier support in I at these points, we obtain exact reconstruction of all Fourier coefficients in fewer than O(d |I|log^4 (N|I|)) total operations. Additionally, we present a second multiple rank-1 lattice construction algorithm which constructs lattices with even fewer sampling points at the cost of only being able to reconstruct exact trigonometric polynomials rather than having additional theoretical approximation. Both algorithms are tested numerically and surpass the theoretical bounds. Notably, we observe that the oversampling factors #samples/|I| appear to grow only logarithmically in |I| for the first algorithm and appear near-optimally bounded by four in the second algorithm.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/17/2020

Sparse Fourier Transforms on Rank-1 Lattices for the Rapid and Low-Memory Approximation of Functions of Many Variables

We consider fast, provably accurate algorithms for approximating functio...
research
08/29/2022

On the reconstruction of functions from values at subsampled quadrature points

This paper is concerned with function reconstruction from samples. The s...
research
12/06/2019

Efficient multivariate approximation on the cube

For the approximation of multivariate non-periodic functions h on the hi...
research
03/30/2023

Nonlinear Approximation with Subsampled Rank-1 Lattices

In this paper we approximate high-dimensional functions f𝕋^d→ℂ by sparse...
research
08/03/2019

Function integration, reconstruction and approximation using rank-1 lattices

We consider rank-1 lattices for integration and reconstruction of functi...
research
12/28/2020

A fast probabilistic component-by-component construction of exactly integrating rank-1 lattices and applications

Several more and more efficient component–by–component (CBC) constructio...
research
06/12/2023

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

It has been observed by several authors that well-known periodization st...

Please sign up or login with your details

Forgot password? Click here to reset