Fast Fourier Sparsity Testing
Loading...
Can’t use the file because of accessibility barriers? Contact us
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Permanent Link
Abstract
A function $f : \mathbb{F}_2^n \to \mathbb{R}$ is $s$-sparse if it has at most $s$ non-zero Fourier coefficients. Motivated by applications to fast sparse Fourier transforms over $\mathbb{F}_2^n$, we study efficient algorithms for the problem of approximating the $\ell_2$-distance from a given function to the closest $s$-sparse function. While previous works (e.g., Gopalan et al. SICOMP 2011) study the problem of distinguishing $s$-sparse functions from those that are far from $s$-sparse under Hamming distance, to the best of our knowledge no prior work has explicitly focused on the more general problem of distance estimation in the $\ell_2$ setting, which is particularly well-motivated for noisy Fourier spectra. Given the focus on efficiency, our main result is an algorithm that solves this problem with query complexity $\mathcal{O}(s)$ for constant accuracy and error parameters, which is only quadratically worse than applicable lower bounds.
Series and Number:
EducationalLevel:
Is Based On:
Target Name:
Teaches:
Table of Contents
Description
Keywords
Citation
Yaroslavtsev, Grigory, and Zhou, Samson. "Fast Fourier Sparsity Testing." 2019-10-13.