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Quantum Machine Learning
Quantum algorithm and quantum circuit for A-Optimal Projection: dimensionality reduction
arXiv
Authors: Bojia Duan, Jiabin Yuan, Juan Xu, Dan Li
Year
2018
Paper ID
39416
Status
Preprint
Abstract Read
~2 min
Abstract Words
164
Citations
N/A
Abstract
Learning low dimensional representation is a crucial issue for many machine learning tasks such as pattern recognition and image retrieval. In this article, we present a quantum algorithm and a quantum circuit to efficiently perform A-Optimal Projection for dimensionality reduction. Compared with the best-know classical algorithms, the quantum A-Optimal Projection (QAOP) algorithm shows an exponential speedup in both the original feature space dimension n and the reduced feature space dimension k. We show that the space and time complexity of the QAOP circuit are Oleft\[{{{log }2}left\({nk} /ε right\)} right\] and O\[{log2(nk)} {poly}left\({{log }2}ε-1 right\)\] respectively, with fidelity at least 1-ε. Firstly, a reformation of the original QAOP algorithm is proposed to help omit the quantum-classical interactions during the QAOP algorithm. Then the quantum algorithm and quantum circuit with performance guarantees are proposed. Specifically, the quantum circuit modules for preparing the initial quantum state and implementing the controlled rotation can be also used for other quantum machine learning algorithms.
Why This Paper Matters
- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
- It adds a 2018 reference point for readers tracking recent quantum research.
- Learning low dimensional representation is a crucial issue for many machine learning tasks such as pattern recognition and image retrieval.
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