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Unsupervised and supervised data classification via nonsmooth and global optimization

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posted on 2024-07-13, 06:24 authored by A. M. Bagirov, A. M. Rubinov, N. V. Soukhoroukova, J. Yearwood
We examine various methods for data clustering and data classification that are based on the minimization of the so-called cluster function and its modications. These functions are nonsmooth and nonconvex. We use Discrete Gradient methods for their local minimization. We consider also a combination of this method with the cutting angle method for global minimization. We present and discuss results of numerical experiments.

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ISSN

1134-5764

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Volume

11

Issue

1

Pagination

74 pp

Publisher

Springer

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Copyright © 2003. Published by Springer. The accepted manuscript is reproduced in accordance with the copyright policy of the publisher.

Language

eng

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