Amplitude estimation via maximum likelihood on noisy quantum computer

被引:0
作者
Tomoki Tanaka
Yohichi Suzuki
Shumpei Uno
Rudy Raymond
Tamiya Onodera
Naoki Yamamoto
机构
[1] Keio University,Quantum Computing Center
[2] Mitsubishi UFJ Financial Group,Graduate School of Science and Technology
[3] Inc. and MUFG Bank,Department of Applied Physics and Physico
[4] Ltd.,Informatics
[5] Keio University,undefined
[6] Mizuho Research & Technologies,undefined
[7] Ltd.,undefined
[8] IBM Quantum,undefined
[9] IBM Research - Tokyo,undefined
[10] Keio University,undefined
来源
Quantum Information Processing | 2021年 / 20卷
关键词
Quantum computing; Amplitude estimation; Maximum likelihood estimation; Depolarizing noise; IBM quantum systems;
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中图分类号
学科分类号
摘要
Recently we find several candidates of quantum algorithms that may be implementable in near-term devices for estimating the amplitude of a given quantum state, which is a core subroutine in various computing tasks such as the Monte Carlo methods. One of those algorithms is based on the maximum likelihood estimate with parallelized quantum circuits. In this paper, we extend this method so that it incorporates the realistic noise effect, and then give an experimental demonstration on a superconducting IBM Quantum device. The maximum likelihood estimator is constructed based on the model assuming the depolarization noise. We then formulate the problem as a two-parameters estimation problem with respect to the target amplitude parameter and the noise parameter. In particular we show that there exist anomalous target values, where the Fisher information matrix becomes degenerate and consequently the estimation error cannot be improved even by increasing the number of amplitude amplifications. The experimental demonstration shows that the proposed maximum likelihood estimator achieves quantum speedup in the number of queries, though the estimation error saturates due to the noise. This saturated value of estimation error is consistent to the theory, which implies the validity of the depolarization noise model and thereby enables us to predict the basic requirement on the hardware components (particularly the gate error) in quantum computers to realize the quantum speedup in the amplitude estimation task.
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