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Quantum
Information and Computation
ISSN: 1533-7146
published since 2001
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Vol.15 No.3&4 February 2015 |
Quantum algorithms for nearest-neighbor methods for supervised and
unsupervised learning
(pp0316-0356)
Nathan
Wiebe, Ashish Kapoor, and Krysta M. Svore
doi:
https://doi.org/10.26421/QIC15.3-4-7
Abstracts:
We present quantum algorithms for performing
nearest-neighbor learning and k�means clustering. At the core of our
algorithms are fast and coherent quantum methods for computing the
Euclidean distance both directly and via the inner product which we
couple with methods for performing amplitude estimation that do not
require measurement. We prove upper bounds on the number of queries to
the input data required to compute such distances and find the nearest
vector to a given test example. In the worst case, our quantum
algorithms lead to polynomial reductions in query complexity relative to
Monte Carlo algorithms. We also study the performance of our quantum
nearest-neighbor algorithms on several real-world binary classification
tasks and find that the classification accuracy is competitive with
classical methods.
Key words:
Quantum Computing, Quantum Algorithms, Machine Learning |
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