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Инд. авторы: Tatarnikov V., Berikov V., Pestunov I.
Заглавие: Cluster ensemble construction with the algorithm of averaged centroids
Библ. ссылка: Tatarnikov V., Berikov V., Pestunov I. Cluster ensemble construction with the algorithm of averaged centroids // Proceedings of 2017 International Multi-Conference on Engineering, Computer and Information Sciences (SIBIRCON): Novosibirsk, 18-22 Sep 2017. - 2017. - P.342-345.
Внешние системы: DOI: 10.1109/SIBIRCON.2017.8109902; РИНЦ: 34872558; SCOPUS: 2-s2.0-85040532588; WoS: 000426816500078;
Реферат: eng: The task of finding consensus solution of cluster analysis problem is considered in the paper. A heuristic algorithm for constructing consensus clustering partition using any centroid-based algorithm is proposed. It is theoretically proved that the algorithm is statistically stable. The novelty of the algorithm is that it is implemented and optimized for running in parallel and distributed environment. The paper includes the results of testing the algorithm on artificial and real data. © 2017 IEEE.
Ключевые слова: Clustering algorithms; Running-in; K-means; Distributed environments; Consensus solutions; Consensus clustering; Cluster ensembles; Centroid; Hyperspectral imaging; Heuristic algorithms; Cluster analysis; K-means; Hyperspectral image analysis; Cluster ensemble; Centroid; Spectroscopy;
Издано: 2017
Физ. характеристика: с.342-345
Конференция: Название: 2017 International Multi-Conference on Engineering, Computer and Information Sciences
Аббревиатура: SIBIRCON
Город: Novosibirsk
Страна: Russia
Даты проведения: 2017-09-18 - 2017-09-22
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