Nearest centroid classification on a trapped ion quantum computer
Quantum machine learning has seen considerable theoretical and practical developments in recent years and has become a promising area for finding real world applications of quantum computers. In pursuit of this goal, here we combine state-of-the-art algorithms and quantum hardware to provide an experimental demonstration of a quantum machine learning application with provable guarantees for its performance and efficiency. In particular, we design a quantum Nearest Centroid classifier, using techniques for efficiently loading classical data into quantum states and performing distance estimations, and experimentally demonstrate it on a 11-qubit trapped-ion quantum machine, matching the accuracy of classical nearest centroid classifiers for the MNIST handwritten digits dataset and achieving up to 100% accuracy for 8-dimensional synthetic data.
Duke Scholars
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- 5108 Quantum physics
- 4902 Mathematical physics
- 4613 Theory of computation
Citation
Published In
DOI
EISSN
Publication Date
Volume
Issue
Related Subject Headings
- 5108 Quantum physics
- 4902 Mathematical physics
- 4613 Theory of computation