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Estimation of low rank density matrices by Pauli measurements

机译:通过Pauli测量估计低秩密度矩阵

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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 $1leq pleq+infty$ for low rank density matrices estimation by Pauli measurements. In our previous paper [14], 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 [14] and [25], 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 $1leq pleq2$ and, under a stronger condition, the optimal convergence rates for the projection estimator in Schatten $p$-norms with $1leq pleq+infty$. 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 [14] and [25]. When the objective function of DE is replaced by the negative von Neumann entropy, we obtain sharp convergence rate in Kullback-Leibler divergence.
机译:密度矩阵是具有单位迹线的正半定Hermitian矩阵,用于描述量子系统的状态。许多对物理感兴趣的量子系统可以表示为高维低秩密度矩阵。量子状态层析成像(QST)中的一个普遍问题是通过进行Pauli测量来估计量子系统的未知低秩密度矩阵。我们的主要贡献是双重的。首先,我们通过Pauli测量在低秩密度矩阵估计中使用$ 1 leq p leq + infty $建立Schatten $ p $-范数的minimax下界。在我们以前的论文[14]中,这些最小极大下界在高斯噪声的迹线回归模型下得到证明,并且假定噪声具有共同方差。在本文中,我们在满足QST实际模型的二项式观测模型下证明了这些界限。其次,我们研究了使用Pauli量测的Dantzig估计量(DE)估计二项式观测模型下的未知低秩密度矩阵。在我们先前的论文[14]和[25]中,我们研究了最小二乘估计和投影估计,在此我们证明了在Schaten $ p $-范数为$ 1 leq p leq2 $的情况下,最小二乘估计的最优收敛速度。在更强的条件下,Schatten $ p $-范数中的投影估计器的最优收敛速度为$ 1 leq p leq + infty $。在本文中,我们证明了Dantzig估计器可以同时获得这两个不同估计器的结果。此外,在比[14]和[25]中所要求的条件更弱的条件下,对于Dantzig估计量,可以证明Schatten范数距离中的收敛速度更好。当DE的目标函数由负von Neumann熵代替时,我们在Kullback-Leibler发散中获得尖锐的收敛速度。

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