Author:
Date Prasanna,Smith Wyatt
Abstract
AbstractQuantum computers have the unique ability to operate relatively quickly in high-dimensional spaces—this is sought to give them a competitive advantage over classical computers. In this work, we propose a novel quantum machine learning model called the Quantum Discriminator, which leverages the ability of quantum computers to operate in the high-dimensional spaces. The quantum discriminator is trained using a quantum-classical hybrid algorithm in $$\mathcal {O}(N\log N)$$
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log
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time, and inferencing is performed on a universal quantum computer in $$\mathcal {O}(N)$$
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time. The quantum discriminator takes as input the binary features extracted from a given datum along with a prediction qubit, and outputs the predicted label. We analyze its performance on the Iris and Bars and Stripes data sets, and show that it can attain 99% accuracy in simulation.
Funder
U.S. Department of Energy
Publisher
Springer Science and Business Media LLC
Cited by
2 articles.
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