Heuristics for minimizing the maximum within-clusters distance

The clustering problem consists in finding patterns in a data set in order to divide it into clusters with high within-cluster similarity. This paper presents the study of a problem, here called MMD problem, which aims at finding a clustering with a predefined number of clusters that minimizes the l...

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Main Authors: José Augusto Fioruci, Franklina M.B. Toledo, Mariá Cristina V. Nascimento
Format: Article
Language:English
Published: Sociedade Brasileira de Pesquisa Operacional 2012-12-01
Series:Pesquisa Operacional
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0101-74382012000300002
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spelling doaj-ab78138ff0af4092b09a832e48466c592020-11-24T23:46:36ZengSociedade Brasileira de Pesquisa OperacionalPesquisa Operacional0101-74381678-51422012-12-01323497522Heuristics for minimizing the maximum within-clusters distanceJosé Augusto FioruciFranklina M.B. ToledoMariá Cristina V. NascimentoThe clustering problem consists in finding patterns in a data set in order to divide it into clusters with high within-cluster similarity. This paper presents the study of a problem, here called MMD problem, which aims at finding a clustering with a predefined number of clusters that minimizes the largest within-cluster distance (diameter) among all clusters. There are two main objectives in this paper: to propose heuristics for the MMD and to evaluate the suitability of the best proposed heuristic results according to the real classification of some data sets. Regarding the first objective, the results obtained in the experiments indicate a good performance of the best proposed heuristic that outperformed the Complete Linkage algorithm (the most used method from the literature for this problem). Nevertheless, regarding the suitability of the results according to the real classification of the data sets, the proposed heuristic achieved better quality results than C-Means algorithm, but worse than Complete Linkage.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0101-74382012000300002clusteringheuristicsGRASPminimization of the maximum diameter
collection DOAJ
language English
format Article
sources DOAJ
author José Augusto Fioruci
Franklina M.B. Toledo
Mariá Cristina V. Nascimento
spellingShingle José Augusto Fioruci
Franklina M.B. Toledo
Mariá Cristina V. Nascimento
Heuristics for minimizing the maximum within-clusters distance
Pesquisa Operacional
clustering
heuristics
GRASP
minimization of the maximum diameter
author_facet José Augusto Fioruci
Franklina M.B. Toledo
Mariá Cristina V. Nascimento
author_sort José Augusto Fioruci
title Heuristics for minimizing the maximum within-clusters distance
title_short Heuristics for minimizing the maximum within-clusters distance
title_full Heuristics for minimizing the maximum within-clusters distance
title_fullStr Heuristics for minimizing the maximum within-clusters distance
title_full_unstemmed Heuristics for minimizing the maximum within-clusters distance
title_sort heuristics for minimizing the maximum within-clusters distance
publisher Sociedade Brasileira de Pesquisa Operacional
series Pesquisa Operacional
issn 0101-7438
1678-5142
publishDate 2012-12-01
description The clustering problem consists in finding patterns in a data set in order to divide it into clusters with high within-cluster similarity. This paper presents the study of a problem, here called MMD problem, which aims at finding a clustering with a predefined number of clusters that minimizes the largest within-cluster distance (diameter) among all clusters. There are two main objectives in this paper: to propose heuristics for the MMD and to evaluate the suitability of the best proposed heuristic results according to the real classification of some data sets. Regarding the first objective, the results obtained in the experiments indicate a good performance of the best proposed heuristic that outperformed the Complete Linkage algorithm (the most used method from the literature for this problem). Nevertheless, regarding the suitability of the results according to the real classification of the data sets, the proposed heuristic achieved better quality results than C-Means algorithm, but worse than Complete Linkage.
topic clustering
heuristics
GRASP
minimization of the maximum diameter
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0101-74382012000300002
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