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Direct Fidelity Estimation of Quantum States Using Machine Learning

Xiaoqian Zhang, Maolin Luo, Zhaodi Wen, Qin Feng, Shengshi Pang, Weiqi Luo, Xiaoqi Zhou

2021Physical Review Letters47 citationsDOIOpen Access PDF

Abstract

In almost all quantum applications, one of the key steps is to verify that the fidelity of the prepared quantum state meets expectations. In this Letter, we propose a new approach solving this problem using machine-learning techniques. Compared to other fidelity estimation methods, our method is applicable to arbitrary quantum states, the number of required measurement settings is small, and this number does not increase with the size of the system. For example, for a general five-qubit quantum state, only four measurement settings are required to predict its fidelity with ±1% precision in a nonadversarial scenario. This machine-learning-based approach for estimating quantum state fidelity has the potential to be widely used in the field of quantum information.

Topics & Concepts

FidelityQubitQuantum machine learningComputer scienceQuantum stateQuantumQuantum informationQuantum algorithmKey (lock)Field (mathematics)Quantum computerHigh fidelityState (computer science)AlgorithmPhysicsQuantum mechanicsMathematicsAcousticsTelecommunicationsComputer securityPure mathematicsQuantum Information and CryptographyQuantum Computing Algorithms and ArchitectureQuantum Mechanics and Applications
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