English

Positive Maps and Separable Matrices

Optimization and Control 2016-03-29 v2

Abstract

A linear map between real symmetric matrix spaces is positive if all positive semidefinite matrices are mapped to positive semidefinite ones. A real symmetric matrix is separable if it can be written as a summation of Kronecker products of positive semidefinite matrices. This paper studies how to check if a linear map is positive or not and how to check if a matrix is separable or not. We propose numerical algorithms, based on Lasserre type semidefinite relaxations, for solving such questions. To check the positivity of a linear map, we construct a hierarchy of semidefinite relaxations for minimizing the associated bi-quadratic forms over the unit spheres. We show that the positivity can be detected by solving a finite number of such semidefinite relaxations. To check the separability of a matrix, we construct a hierarchy of semidefinite relaxations. If it is not separable, we can get a mathematical certificate for that; if it is, we can get a decomposition for the separability.

Keywords

Cite

@article{arxiv.1504.06595,
  title  = {Positive Maps and Separable Matrices},
  author = {Jiawang Nie and Xinzhen Zhang},
  journal= {arXiv preprint arXiv:1504.06595},
  year   = {2016}
}

Comments

19 pages

R2 v1 2026-06-22T09:22:19.249Z