Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy

Clustering functional data is mostly based on the projection of the curves onto an adequate basis and building random effects models of the basis coefficients. The parameters can be fitted with an EM algorithm. Alternatively, distance models based on the coefficients are used in the literature. Simi...

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Main Authors: Christina Yassouridis, Dominik Ernst, Friedrich Leisch
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2018-07-01
Series:Journal of Statistical Software
Subjects:
R
Online Access:https://www.jstatsoft.org/index.php/jss/article/view/2403
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spelling doaj-93b4265323d445d78c0ef5644c9c17f42020-11-24T22:07:58ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602018-07-0185112510.18637/jss.v085.i091228Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcyChristina YassouridisDominik ErnstFriedrich LeischClustering functional data is mostly based on the projection of the curves onto an adequate basis and building random effects models of the basis coefficients. The parameters can be fitted with an EM algorithm. Alternatively, distance models based on the coefficients are used in the literature. Similar to the case of clustering multidimensional data, a variety of derivations of different models has been published. Although their calculation procedure is similar, their implementations are very different including distinct hyperparameters and data formats as input. This makes it difficult for the user to apply and particularly to compare them. Furthermore, they are mostly limited to specific basis functions. This paper aims to show the common elements between existing models in highly cited articles, first on a theoretical basis. Later their implementation is analyzed and it is illustrated how they could be improved and extended to a more general level. A special consideration is given to those models designed for sparse measurements. The work resulted in the R package funcy which was built to integrate the modified and extended algorithms into a unique framework.https://www.jstatsoft.org/index.php/jss/article/view/2403Rfunctional mixed modelsfunctional clusteringgeneralizationsparse models
collection DOAJ
language English
format Article
sources DOAJ
author Christina Yassouridis
Dominik Ernst
Friedrich Leisch
spellingShingle Christina Yassouridis
Dominik Ernst
Friedrich Leisch
Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy
Journal of Statistical Software
R
functional mixed models
functional clustering
generalization
sparse models
author_facet Christina Yassouridis
Dominik Ernst
Friedrich Leisch
author_sort Christina Yassouridis
title Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy
title_short Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy
title_full Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy
title_fullStr Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy
title_full_unstemmed Generalization, Combination and Extension of Functional Clustering Algorithms: The R Package funcy
title_sort generalization, combination and extension of functional clustering algorithms: the r package funcy
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2018-07-01
description Clustering functional data is mostly based on the projection of the curves onto an adequate basis and building random effects models of the basis coefficients. The parameters can be fitted with an EM algorithm. Alternatively, distance models based on the coefficients are used in the literature. Similar to the case of clustering multidimensional data, a variety of derivations of different models has been published. Although their calculation procedure is similar, their implementations are very different including distinct hyperparameters and data formats as input. This makes it difficult for the user to apply and particularly to compare them. Furthermore, they are mostly limited to specific basis functions. This paper aims to show the common elements between existing models in highly cited articles, first on a theoretical basis. Later their implementation is analyzed and it is illustrated how they could be improved and extended to a more general level. A special consideration is given to those models designed for sparse measurements. The work resulted in the R package funcy which was built to integrate the modified and extended algorithms into a unique framework.
topic R
functional mixed models
functional clustering
generalization
sparse models
url https://www.jstatsoft.org/index.php/jss/article/view/2403
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AT dominikernst generalizationcombinationandextensionoffunctionalclusteringalgorithmstherpackagefuncy
AT friedrichleisch generalizationcombinationandextensionoffunctionalclusteringalgorithmstherpackagefuncy
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