Abstract In this paper, we deal with the problem of curves clustering. We propose a nonparametric method which partitions the curves into clusters and discretizes the dimensions of the curve points into intervals. The cross-product of these partitions forms a data-grid which is obtained using a Bayesian model selection approach while making no assumptions regarding the curves. Finally, a post-processing technique, aiming at reducing the number of clusters in order to improve the interpretability of the clustering, is proposed. It consists in optimally merging the clusters step by step, which corresponds to an agglomerative hierarchical classification whose dissimilarity measure is the variation of the criterion. Interestingly this measure i...
A BSTRACT. We are interested in clustering data whose support is “curved”. Recently we have ad- dres...
"In this paper we propose a dynamic clustering algorithm for partitioning a set of geostatistical. f...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
Abstract In this paper, we deal with the problem of curves clustering. We propose a nonparametric me...
Classification is a very common task in information processing and important problem in many sectors...
One of the major objectives of unsupervised clustering is to find similarity groups in a dataset. Wi...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
ABSTRACT. Data in many different fields come to practitioners through a process naturally described ...
In this paper we propose a novel clustering method for functional data based on the principal curve ...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
We present a new framework for clustering functional data along with a new paradigm for performing m...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
Un des objectifs les plus importants en classification non supervisée est d'extraire des groupes de ...
We are interested in clustering data whose support is “curved”. Recently we have addressed this prob...
A BSTRACT. We are interested in clustering data whose support is “curved”. Recently we have ad- dres...
"In this paper we propose a dynamic clustering algorithm for partitioning a set of geostatistical. f...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
Abstract In this paper, we deal with the problem of curves clustering. We propose a nonparametric me...
Classification is a very common task in information processing and important problem in many sectors...
One of the major objectives of unsupervised clustering is to find similarity groups in a dataset. Wi...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
ABSTRACT. Data in many different fields come to practitioners through a process naturally described ...
In this paper we propose a novel clustering method for functional data based on the principal curve ...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
We present a new framework for clustering functional data along with a new paradigm for performing m...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
Un des objectifs les plus importants en classification non supervisée est d'extraire des groupes de ...
We are interested in clustering data whose support is “curved”. Recently we have addressed this prob...
A BSTRACT. We are interested in clustering data whose support is “curved”. Recently we have ad- dres...
"In this paper we propose a dynamic clustering algorithm for partitioning a set of geostatistical. f...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...