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An improved robust ADMM algorithm for quantum state tomography

机译:一种改进的鲁棒ADMM算法,用于量子状态层析成像

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In this paper, an improved adaptive weights alternating direction method of multipliers algorithm is developed to implement the optimization scheme for recovering the quantum state in nearly pure states. The proposed approach is superior to many existing methods because it exploits the low-rank property of density matrices, and it can deal with unexpected sparse outliers as well. The numerical experiments are provided to verify our statements by comparing the results to three different optimization algorithms, using both adaptive and fixed weights in the algorithm, in the cases of with and without external noise, respectively. The results indicate that the improved algorithm has better performances in both estimation accuracy and robustness to external noise. The further simulation results show that the successful recovery rate increases when more qubits are estimated, which in fact satisfies the compressive sensing theory and makes the proposed approach more promising.
机译:本文提出了一种改进的乘数自适应权重交替方向算法,以实现在接近纯态时恢复量子态的优化方案。所提出的方法优于许多现有方法,因为它利用了密度矩阵的低秩性质,并且还可以处理意外的稀疏离群值。通过在三种情况下分别使用自适应权重和固定权重,分别将结果与三种不同的优化算法进行比较,以提供数值实验,以验证我们的陈述。结果表明,改进算法在估计精度和对外部噪声的鲁棒性方面都有较好的表现。进一步的仿真结果表明,当估计更多的量子比特时,成功的恢复率会增加,这实际上满足了压缩感测理论,并使所提出​​的方法更具前景。

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