Improved quantum data analysis

Abstract

We provide more sample-efficient versions of some basic routines in quantum data analysis, along with simpler proofs. Particularly, we give a quantum "Threshold Search" algorithm that requires only O((2 m)/ε2) samples of a d-dimensional state . That is, given observables 0 A1, A2, ..., Am 1 such that tr( Ai) 1/2 for at least one i, the algorithm finds j with tr( Aj) 1/2-ε. As a consequence, we obtain a Shadow Tomography algorithm requiring only O((2 m)( d)/ε4) samples, which simultaneously achieves the best known dependence on each parameter m, d, ε. This yields the same sample complexity for quantum Hypothesis Selection among m states; we also give an alternative Hypothesis Selection method using O((3 m)/ε2) samples.

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