Operator scaling with specified marginals

Cole Franks
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引用次数: 17

Abstract

The completely positive maps, a generalization of the nonnegative matrices, are a well-studied class of maps from n× n matrices to m× m matrices. The existence of the operator analogues of doubly stochastic scalings of matrices, the study of which is known as operator scaling, is equivalent to a multitude of problems in computer science and mathematics such rational identity testing in non-commuting variables, noncommutative rank of symbolic matrices, and a basic problem in invariant theory (Garg et. al., 2016). We study operator scaling with specified marginals, which is the operator analogue of scaling matrices to specified row and column sums (or marginals). We characterize the operators which can be scaled to given marginals, much in the spirit of the Gurvits’ algorithmic characterization of the operators that can be scaled to doubly stochastic (Gurvits, 2004). Our algorithm, which is a modified version of Gurvits’ algorithm, produces approximate scalings in time poly(n,m) whenever scalings exist. A central ingredient in our analysis is a reduction from operator scaling with specified marginals to operator scaling in the doubly stochastic setting. Instances of operator scaling with specified marginals arise in diverse areas of study such as the Brascamp-Lieb inequalities, communication complexity, eigenvalues of sums of Hermitian matrices, and quantum information theory. Some of the known theorems in these areas, several of which had no algorithmic proof, are straightforward consequences of our characterization theorem. For instance, we obtain a simple algorithm to find, when it exists, a tuple of Hermitian matrices with given spectra whose sum has a given spectrum. We also prove new theorems such as a generalization of Forster’s theorem (Forster, 2002) concerning radial isotropic position.
具有指定边际的算子缩放
完全正映射是对非负矩阵的推广,是一类从n× n矩阵到m× m矩阵的映射。矩阵的双随机缩放算子类似物的存在,其研究被称为算子缩放,相当于计算机科学和数学中的许多问题,如非交换变量的有理恒等检验,符号矩阵的非交换秩,以及不变理论中的一个基本问题(Garg et. al., 2016)。我们研究了具有指定边际的算子缩放,这是将矩阵缩放到指定行和和(或边际)的算子模拟。我们描述了可以缩放到给定边缘的算子,这与Gurvits的算法描述可以缩放到双重随机的算子的精神非常相似(Gurvits, 2004)。我们的算法是Gurvits算法的改进版本,只要存在标量,就会在时间多边形(n,m)中产生近似的标量。在我们的分析中,一个中心成分是从具有指定边际的算子标度到双随机设置中的算子标度的减少。具有特定边际的算子缩放实例出现在不同的研究领域,如Brascamp-Lieb不等式、通信复杂性、厄米矩阵和的特征值和量子信息论。这些领域的一些已知定理,其中一些没有算法证明,是我们的表征定理的直接结果。例如,我们得到了一个简单的算法,当它存在时,求出具有给定谱的厄米矩阵元组,其和具有给定谱。我们还证明了一些新的定理,如关于径向各向同性位置的Forster定理的推广(Forster, 2002)。
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