Approximate Majorization
Abstract
Although an input distribution may not majorize a target distribution, it may majorize a distribution which is close to the target. Here we introduce a notion of approximate majorization. For any distribution, and given a distance , we find the approximate distributions which majorize (are majorized by) all other distributions within the distance . We call these the steepest and flattest approximation. This enables one to compute how close one can get to a given target distribution under a process governed by majorization. We show that the flattest and steepest approximations preserve ordering under majorization. Furthermore, we give a notion of majorization distance. This has applications ranging from thermodynamics, entanglement theory, and economics.
Cite
@article{arxiv.1706.05264,
title = {Approximate Majorization},
author = {Michał Horodecki and Jonathan Oppenheim and Carlo Sparaciari},
journal= {arXiv preprint arXiv:1706.05264},
year = {2018}
}
Comments
4 pages main text + 6 pages appendix. 2 figure