NC algorithms for minimum sum of diameters clustering

Given a set of n entities to be classified, and a matric of dissimilarities between pairs of them. This article considers the problem called Minimum Sum of Diameters Clustering Problem, where a partition of the set of entities into κ clusters such that the sum of the diameters of these clusters is m...

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Main Authors: Nopadon Juneam, Sanpawat Kantabutra
Format: Journal
Published: 2018
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http://cmuir.cmu.ac.th/jspui/handle/6653943832/46717
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Institution: Chiang Mai University
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spelling th-cmuir.6653943832-467172018-04-25T07:29:02Z NC algorithms for minimum sum of diameters clustering Nopadon Juneam Sanpawat Kantabutra Agricultural and Biological Sciences Given a set of n entities to be classified, and a matric of dissimilarities between pairs of them. This article considers the problem called Minimum Sum of Diameters Clustering Problem, where a partition of the set of entities into κ clusters such that the sum of the diameters of these clusters is minimized. In sequential, Brucker showed that the problem is NP-hard, when κ ≥ 3 [1]. For the case of κ = 2, Hansen and Jaumard gave an O(n 3 logn) algorithm [2], which Ramnath later improved the running time to O(n 3 ) [3]. In this article, we discuss parallel algorithms for the Minimum Sum of Diameters Clustering Problem, for the case of κ = 2. In particular, we present an NC algorithm that runs in O(logn) parallel time and n 7 processors on the Common CRCW PRAM model. Additionally, we propose the parallel algorithmic technique which can be applied to improve the processor bound by a factor of n. As a result, our algorithm can be implemented in O(logn) parallel time using n 6 processors on the Common CRCW PRAM model. In addition, regarding the issue of high processor complexity, we also propose a more practical NC algorithm which can be implemented in O(log 3 n) parallel time using n 3.376 processors on the EREW PRAM model. 2018-04-25T06:59:49Z 2018-04-25T06:59:49Z 2017-01-01 Journal 20794029 16079264 2-s2.0-85028464135 10.6138/JIT.2017.18.4.20170429a https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85028464135&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/46717
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
topic Agricultural and Biological Sciences
spellingShingle Agricultural and Biological Sciences
Nopadon Juneam
Sanpawat Kantabutra
NC algorithms for minimum sum of diameters clustering
description Given a set of n entities to be classified, and a matric of dissimilarities between pairs of them. This article considers the problem called Minimum Sum of Diameters Clustering Problem, where a partition of the set of entities into κ clusters such that the sum of the diameters of these clusters is minimized. In sequential, Brucker showed that the problem is NP-hard, when κ ≥ 3 [1]. For the case of κ = 2, Hansen and Jaumard gave an O(n 3 logn) algorithm [2], which Ramnath later improved the running time to O(n 3 ) [3]. In this article, we discuss parallel algorithms for the Minimum Sum of Diameters Clustering Problem, for the case of κ = 2. In particular, we present an NC algorithm that runs in O(logn) parallel time and n 7 processors on the Common CRCW PRAM model. Additionally, we propose the parallel algorithmic technique which can be applied to improve the processor bound by a factor of n. As a result, our algorithm can be implemented in O(logn) parallel time using n 6 processors on the Common CRCW PRAM model. In addition, regarding the issue of high processor complexity, we also propose a more practical NC algorithm which can be implemented in O(log 3 n) parallel time using n 3.376 processors on the EREW PRAM model.
format Journal
author Nopadon Juneam
Sanpawat Kantabutra
author_facet Nopadon Juneam
Sanpawat Kantabutra
author_sort Nopadon Juneam
title NC algorithms for minimum sum of diameters clustering
title_short NC algorithms for minimum sum of diameters clustering
title_full NC algorithms for minimum sum of diameters clustering
title_fullStr NC algorithms for minimum sum of diameters clustering
title_full_unstemmed NC algorithms for minimum sum of diameters clustering
title_sort nc algorithms for minimum sum of diameters clustering
publishDate 2018
url https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85028464135&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/46717
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