Nearly Optimal Quantum Algorithm for Estimating Multiple Expectation Values
William J. Huggins, Kianna Wan, Jarrod McClean, Thomas E. O'Brien,, Nathan Wiebe, Ryan Babbush

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Abstract
Many quantum algorithms involve the evaluation of expectation values. Optimal strategies for estimating a single expectation value are known, requiring a number of state preparations that scales with the target error as . In this paper, we address the task of estimating the expectation values of different observables, each to within additive error , with the same dependence. We describe an approach that leverages Gily\'en et al.'s quantum gradient estimation algorithm to achieve scaling up to logarithmic factors, regardless of the commutation properties of the observables. We prove that this scaling is worst-case optimal in the high-precision regime if the state preparation is treated as a black box, even when the operators are mutually commuting. We highlight the…
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