离散和连续可变系统二元测量的最佳保真度估计

Omar Fawzi, Aadil Oufkir, Robert Salzmann
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引用次数: 0

摘要

估算理想目标量子态与实际制备态之间的保真度对于评估实验成功与否至关重要。对于纯目标态,我们使用可以直接测量的函数表示法,并确定保真度估算所需的制备态副本数量。在连续变量(CV)系统中,我们利用维格纳函数,该函数可通过位移奇偶性测量进行测量。考虑到所有可能的准备状态的最坏情况,我们提供了保真度估计所需的采样复杂度的上下限。对于我们特别感兴趣的目标态,例如福克态和高斯态,我们发现这种采样复杂度的特征是维格纳函数的 $L^1$负性,维格纳负性是文献中广泛研究的一种度量,特别是在量子计算的资源理论中。针对由 n 个量子比特组成的离散变量系统,我们探索了使用保利弦测量的保真度估计协议。与 CV 方法类似,对于哈尔随机态和稳定态,样本复杂度都是由目标态特征函数的 $L^1$-norm 来表征的。此外,在一般黑盒模型中,我们证明了对于任何目标状态,保真度估计的最佳样本复杂度都是由目标状态的平滑 $L^1$ 正态所表征的。据我们所知,这是 Wigner 函数的 $L^1$ 正态首次为某些信息处理任务的成本提供了下限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Fidelity Estimation from Binary Measurements for Discrete and Continuous Variable Systems
Estimating the fidelity between a desired target quantum state and an actual prepared state is essential for assessing the success of experiments. For pure target states, we use functional representations that can be measured directly and determine the number of copies of the prepared state needed for fidelity estimation. In continuous variable (CV) systems, we utilise the Wigner function, which can be measured via displaced parity measurements. We provide upper and lower bounds on the sample complexity required for fidelity estimation, considering the worst-case scenario across all possible prepared states. For target states of particular interest, such as Fock and Gaussian states, we find that this sample complexity is characterised by the $L^1$-norm of the Wigner function, a measure of Wigner negativity widely studied in the literature, in particular in resource theories of quantum computation. For discrete variable systems consisting of $n$ qubits, we explore fidelity estimation protocols using Pauli string measurements. Similarly to the CV approach, the sample complexity is shown to be characterised by the $L^1$-norm of the characteristic function of the target state for both Haar random states and stabiliser states. Furthermore, in a general black box model, we prove that, for any target state, the optimal sample complexity for fidelity estimation is characterised by the smoothed $L^1$-norm of the target state. To the best of our knowledge, this is the first time the $L^1$-norm of the Wigner function provides a lower bound on the cost of some information processing task.
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