Optimal estimation of low rank density matrices

V. Koltchinskii, Dong Xia
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引用次数: 39

Abstract

The density matrices are positively semi-definite Hermitian matrices of unit trace that describe the state of a quantum system. The goal of the paper is to develop minimax lower bounds on error rates of estimation of low rank density matrices in trace regression models used in quantum state tomography (in particular, in the case of Pauli measurements) with explicit dependence of the bounds on the rank and other complexity parameters. Such bounds are established for several statistically relevant distances, including quantum versions of Kullback-Leibler divergence (relative entropy distance) and of Hellinger distance (so called Bures distance), and Schatten $p$-norm distances. Sharp upper bounds and oracle inequalities for least squares estimator with von Neumann entropy penalization are obtained showing that minimax lower bounds are attained (up to logarithmic factors) for these distances.
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低秩密度矩阵的最优估计
密度矩阵是描述量子系统状态的单位迹线的正半确定厄米矩阵。本文的目标是开发用于量子态层析(特别是泡利测量的情况下)的迹回归模型中低秩密度矩阵估计错误率的最小最大下界,其边界显式依赖于秩和其他复杂性参数。这样的界限是为几个统计上相关的距离建立的,包括量子版本的Kullback-Leibler散度(相对熵距离)和Hellinger距离(所谓的Bures距离),以及Schatten $p$范数距离。得到了具有冯·诺依曼熵惩罚的最小二乘估计的尖锐上界和oracle不等式,表明对于这些距离获得了极大极小下界(直到对数因子)。
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