Shadow tomography of quantum states

S. Aaronson
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引用次数: 280

Abstract

We introduce the problem of *shadow tomography*: given an unknown D-dimensional quantum mixed state ρ, as well as known two-outcome measurements E1,…,EM, estimate the probability that Ei accepts ρ, to within additive error ε, for each of the M measurements. How many copies of ρ are needed to achieve this, with high probability? Surprisingly, we give a procedure that solves the problem by measuring only O( ε−5·log4 M·logD) copies. This means, for example, that we can learn the behavior of an arbitrary n-qubit state, on *all* accepting/rejecting circuits of some fixed polynomial size, by measuring only nO( 1) copies of the state. This resolves an open problem of the author, which arose from his work on private-key quantum money schemes, but which also has applications to quantum copy-protected software, quantum advice, and quantum one-way communication. Recently, building on this work, Brandão et al. have given a different approach to shadow tomography using semidefinite programming, which achieves a savings in computation time.
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量子态的影层析成像
我们引入了阴影层析成像的问题:给定一个未知的d维量子混合态ρ,以及已知的双结果测量E1,…,EM,估计Ei接受ρ的概率,在加性误差ε范围内,对于每一个M测量。高概率地,需要多少个ρ的拷贝?令人惊讶的是,我们给出了一个仅通过测量O(ε−5·log4 M·logD)拷贝来解决问题的程序。这意味着,例如,我们可以通过测量状态的nO(1)个拷贝来学习任意n-量子比特状态的行为,在某个固定多项式大小的*所有*接受/拒绝电路上。这解决了作者的一个开放性问题,这个问题来自于他对私钥量子货币方案的研究,但它也适用于量子复制保护软件、量子建议和量子单向通信。最近,在这项工作的基础上,brand等人使用半定规划给出了一种不同的阴影层析成像方法,从而节省了计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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