NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set

Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a group are more similar to each others than objects in different groups. Most of the clustering algorithms depend on some assumptions in order to define the subgroups present in a data set. As a consequ...

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Main Authors: Malika Charrad, Nadia Ghazzali, Véronique Boiteau, Azam Niknafs
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2014-11-01
Series:Journal of Statistical Software
Online Access:http://www.jstatsoft.org/index.php/jss/article/view/2194
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spelling doaj-c65859c84f1d4ef882cba216b2a342312020-11-25T00:13:30ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602014-11-0161113610.18637/jss.v061.i06798NbClust: An R Package for Determining the Relevant Number of Clusters in a Data SetMalika CharradNadia GhazzaliVéronique BoiteauAzam NiknafsClustering is the partitioning of a set of objects into groups (clusters) so that objects within a group are more similar to each others than objects in different groups. Most of the clustering algorithms depend on some assumptions in order to define the subgroups present in a data set. As a consequence, the resulting clustering scheme requires some sort of evaluation as regards its validity. The evaluation procedure has to tackle difficult problems such as the quality of clusters, the degree with which a clustering scheme fits a specific data set and the optimal number of clusters in a partitioning. In the literature, a wide variety of indices have been proposed to find the optimal number of clusters in a partitioning of a data set during the clustering process. However, for most of indices proposed in the literature, programs are unavailable to test these indices and compare them. The R package NbClust has been developed for that purpose. It provides 30 indices which determine the number of clusters in a data set and it offers also the best clustering scheme from different results to the user. In addition, it provides a function to perform k-means and hierarchical clustering with different distance measures and aggregation methods. Any combination of validation indices and clustering methods can be requested in a single function call. This enables the user to simultaneously evaluate several clustering schemes while varying the number of clusters, to help determining the most appropriate number of clusters for the data set of interest.http://www.jstatsoft.org/index.php/jss/article/view/2194
collection DOAJ
language English
format Article
sources DOAJ
author Malika Charrad
Nadia Ghazzali
Véronique Boiteau
Azam Niknafs
spellingShingle Malika Charrad
Nadia Ghazzali
Véronique Boiteau
Azam Niknafs
NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set
Journal of Statistical Software
author_facet Malika Charrad
Nadia Ghazzali
Véronique Boiteau
Azam Niknafs
author_sort Malika Charrad
title NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set
title_short NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set
title_full NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set
title_fullStr NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set
title_full_unstemmed NbClust: An R Package for Determining the Relevant Number of Clusters in a Data Set
title_sort nbclust: an r package for determining the relevant number of clusters in a data set
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2014-11-01
description Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a group are more similar to each others than objects in different groups. Most of the clustering algorithms depend on some assumptions in order to define the subgroups present in a data set. As a consequence, the resulting clustering scheme requires some sort of evaluation as regards its validity. The evaluation procedure has to tackle difficult problems such as the quality of clusters, the degree with which a clustering scheme fits a specific data set and the optimal number of clusters in a partitioning. In the literature, a wide variety of indices have been proposed to find the optimal number of clusters in a partitioning of a data set during the clustering process. However, for most of indices proposed in the literature, programs are unavailable to test these indices and compare them. The R package NbClust has been developed for that purpose. It provides 30 indices which determine the number of clusters in a data set and it offers also the best clustering scheme from different results to the user. In addition, it provides a function to perform k-means and hierarchical clustering with different distance measures and aggregation methods. Any combination of validation indices and clustering methods can be requested in a single function call. This enables the user to simultaneously evaluate several clustering schemes while varying the number of clusters, to help determining the most appropriate number of clusters for the data set of interest.
url http://www.jstatsoft.org/index.php/jss/article/view/2194
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