Estimation of low rank density matrices by Pauli measurements

10/16/2016
by   Dong Xia, et al.
0

Density matrices are positively semi-definite Hermitian matrices with unit trace that describe the states of quantum systems. Many quantum systems of physical interest can be represented as high-dimensional low rank density matrices. A popular problem in quantum state tomography (QST) is to estimate the unknown low rank density matrix of a quantum system by conducting Pauli measurements. Our main contribution is twofold. First, we establish the minimax lower bounds in Schatten p-norms with 1≤ p≤ +∞ for low rank density matrices estimation by Pauli measurements. In our previous paper, these minimax lower bounds are proved under the trace regression model with Gaussian noise and the noise is assumed to have common variance. In this paper, we prove these bounds under the Binomial observation model which meets the actual model in QST. Second, we study the Dantzig estimator (DE) for estimating the unknown low rank density matrix under the Binomial observation model by using Pauli measurements. In our previous papers, we studied the least squares estimator and the projection estimator, where we proved the optimal convergence rates for the least squares estimator in Schatten p-norms with 1≤ p≤ 2 and, under a stronger condition, the optimal convergence rates for the projection estimator in Schatten p-norms with 1≤ p≤ +∞. In this paper, we show that the results of these two distinct estimators can be simultaneously obtained by the Dantzig estimator. Moreover, better convergence rates in Schatten norm distances can be proved for Dantzig estimator under conditions weaker than those needed in previous papers. When the objective function of DE is replaced by the negative von Neumann entropy, we obtain sharp convergence rate in Kullback-Leibler divergence.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/15/2016

Estimation of low rank density matrices: bounds in Schatten norms and other distances

Let S_m be the set of all m× m density matrices (Hermitian positively s...
research
03/25/2014

Optimal Schatten-q and Ky-Fan-k Norm Rate of Low Rank Matrix Estimation

In this paper, we consider low rank matrix estimation using either matri...
research
11/05/2021

Local Asymptotic Normality and Optimal Estimation of low-rank Quantum Systems

In classical statistics, a statistical experiment consisting of n i.i.d ...
research
09/28/2018

Fast state tomography with optimal error bounds

Projected least squares (PLS) is an intuitive and numerically cheap tech...
research
02/08/2018

State Compression of Markov Processes via Empirical Low-Rank Estimation

Model reduction is a central problem in analyzing complex systems and hi...
research
04/05/2019

Estimation of Monge Matrices

Monge matrices and their permuted versions known as pre-Monge matrices n...
research
12/27/2017

Minimax Estimation of Large Precision Matrices with Bandable Cholesky Factor

This paper considers the estimation of large precision matrices. We focu...

Please sign up or login with your details

Forgot password? Click here to reset