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The geometry of quantum learning SCIE SCOPUS

Title
The geometry of quantum learning
Authors
Hunziker, MMeyer, DAPark, JPommersheim, JRothstein, M
Date Issued
2010-06
Publisher
Springer
Abstract
Concept learning provides a natural framework in which to place the problems solved by the quantum algorithms of Bernstein-Vazirani and Grover. By combining the tools used in these algorithms-quantum fast transforms and amplitude amplification-with a novel (in this context) tool-a solution method for geometrical optimization problems-we derive a general technique for quantum concept learning. We name this technique "Amplified Impatient Learning" and apply it to construct quantum algorithms solving two new problems: Battleship and Majority, more efficiently than is possible classically.
Keywords
Quantum algorithms; Procrustes problem; ALGORITHMS; BOUNDS
URI
https://oasis.postech.ac.kr/handle/2014.oak/25907
DOI
10.1007/S11128-009-0129-6
ISSN
1570-0755
Article Type
Article
Citation
QUANTUM INFORMATION PROCESSING, vol. 9, no. 3, page. 321 - 341, 2010-06
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박지훈PARK, JIHUN
Dept of Mathematics
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