Contents Online
Communications in Mathematical Sciences
Volume 21 (2023)
Number 3
The Fourier Discrepancy Function
Pages: 627 – 639
DOI: https://dx.doi.org/10.4310/CMS.2023.v21.n3.a2
Authors
Abstract
In this paper, we introduce the $p$-Fourier Discrepancy Functions, a new family of metrics for comparing discrete probability measures, inspired by the $\chi_r$-metrics. Unlike the $\chi_r$-metrics, the $p$-Fourier Discrepancies are well-defined for any pair of measures. We prove that the $p$-Fourier Discrepancies are convex, twice differentiable, and that their gradient has an explicit formula. Moreover, we study the lower and upper tight bounds for the $p$-Fourier Discrepancies in terms of the Total Variation distance.
Keywords
Fourier metrics, discrete discrepancy, tight bounds
2010 Mathematics Subject Classification
60A10, 60E10, 60E15, 94A17
Received 5 January 2022
Received revised 2 June 2022
Accepted 4 July 2022
Published 27 February 2023