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Sample-optimal classical shadows for pure states

21 November 2022
Daniel Grier
Hakop Pashayan
Luke Schaeffer
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Abstract

We consider the classical shadows task for pure states in the setting of both joint and independent measurements. The task is to measure few copies of an unknown pure state ρ\rhoρ in order to learn a classical description which suffices to later estimate expectation values of observables. Specifically, the goal is to approximate Tr(Oρ)\mathrm{Tr}(O \rho)Tr(Oρ) for any Hermitian observable OOO to within additive error ϵ\epsilonϵ provided Tr(O2)≤B\mathrm{Tr}(O^2)\leq BTr(O2)≤B and ∥O∥=1\lVert O \rVert = 1∥O∥=1. Our main result applies to the joint measurement setting, where we show Θ~(Bϵ−1+ϵ−2)\tilde{\Theta}(\sqrt{B}\epsilon^{-1} + \epsilon^{-2})Θ~(B​ϵ−1+ϵ−2) samples of ρ\rhoρ are necessary and sufficient to succeed with high probability. The upper bound is a quadratic improvement on the previous best sample complexity known for this problem. For the lower bound, we see that the bottleneck is not how fast we can learn the state but rather how much any classical description of ρ\rhoρ can be compressed for observable estimation. In the independent measurement setting, we show that O(Bdϵ−1+ϵ−2)\mathcal O(\sqrt{Bd} \epsilon^{-1} + \epsilon^{-2})O(Bd​ϵ−1+ϵ−2) samples suffice. Notably, this implies that the random Clifford measurements algorithm of Huang, Kueng, and Preskill, which is sample-optimal for mixed states, is not optimal for pure states. Interestingly, our result also uses the same random Clifford measurements but employs a different estimator.

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