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Adaptive Procedures for Discriminating Between Arbitrary Tensor-Product Quantum States

机译:区分任意张量积量子态的自适应过程

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Discriminating between quantum states is a fundamental task in quantum information theory. Given two quantum states, ρ+ and ρ, the Helstrom measurement distinguishes between them with minimal probability of error. However, finding and experimentally implementing the Helstrom measurement can be challenging for quantum states on many qubits. Due to this difficulty, there is a great interest in identifying local measurement schemes which are close to optimal. In the first part of this work, we generalize previous work by Acin et al. (Phys. Rev. A 71, 032338) and show that a locally greedy (LG) scheme using Bayesian updating can optimally distinguish between any two states that can be written as a tensor product of arbitrary pure states. We then show that the same algorithm cannot distinguish tensor products of mixed states with vanishing error probability (even in a large subsystem limit), and introduce a modified locally-greedy (MLG) scheme with strictly better performance. In the second part of this work, we compare these simple local schemes with a general dynamic programming (DP) approach. The DP approach finds the optimal series of local measurements and optimal order of subsystem measurement to distinguish between the two tensor-product states.1
机译:区分量子态是量子信息理论中的一项基本任务。给定两个量子态ρ + 和ρ - ,赫尔斯特罗姆(Helstrom)测量以最小的错误概率将它们区分开。然而,对于许多量子位上的量子态,发现并实验性地执行赫尔斯特龙测量可能是具有挑战性的。由于这个困难,人们对识别接近最佳的本地测量方案非常感兴趣。在这项工作的第一部分中,我们概括了Acin等人以前的工作。 (Phys.Rev.A 71,032338)并显示了使用贝叶斯更新的局部贪婪(LG)方案可以最佳地区分可以写为任意纯状态的张量积的任何两个状态。然后,我们证明了相同的算法无法区分具有消失误差概率(甚至在较大的子系统范围内)的混合状态的张量积,并且引入了一种具有严格更好性能的改进的局部贪婪(MLG)方案。在本文的第二部分,我们将这些简单的本地方案与通用动态编程(DP)方法进行了比较。 DP方法找到最佳的本地测量序列和子系统测量的最佳顺序,以区分两个张量积状态。 1

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