International audienceThis work develops a general procedure for clustering functional data which adapts the efficient clustering method HDDC, originally proposed in the multivariate context. The resulting clustering method, called funHDDC, is based on a functional latent mixture model which fits the functional data in group-specific functional subspaces. By constraining model parameters within and between groups, a family of parsimonious models is exhibited which allow to fit onto various situations. An estimation procedure based on the EM algorithm is proposed for estimating both the model parameters and the group-specific functional subspaces. Experiments on real-world datasets show that the proposed approach performs better or similarly...
International audienceComplex data analysis is a central topic of modern statistics and learning sys...
We propose a new unsupervised learning method for clustering a large number of time series based on ...
International audienceA new model-based clustering algorithm for times series (or more generally fun...
International audienceThis work develops a general procedure for clustering functional data which ad...
This work develops a general procedure for clustering functional data which adapts the efficient clu...
International audienceWith the emergence of numerical sensors in many aspects of every- day life, th...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
International audienceModel-based clustering is considered for Gaussian multivariate functional data...
International audienceHigh dimensional data clustering is an increasingly interesting topic in the s...
We present a new approach to clustering of time series based on a minimization of the averaged clus-...
National audienceThe emergence of numerical sensors in many aspects of everyday life leadsto an incr...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
Classification is a very common task in information processing and important problem in many sectors...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
Functional data, where samples are random func-tions, are increasingly common and important in a var...
International audienceComplex data analysis is a central topic of modern statistics and learning sys...
We propose a new unsupervised learning method for clustering a large number of time series based on ...
International audienceA new model-based clustering algorithm for times series (or more generally fun...
International audienceThis work develops a general procedure for clustering functional data which ad...
This work develops a general procedure for clustering functional data which adapts the efficient clu...
International audienceWith the emergence of numerical sensors in many aspects of every- day life, th...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
International audienceModel-based clustering is considered for Gaussian multivariate functional data...
International audienceHigh dimensional data clustering is an increasingly interesting topic in the s...
We present a new approach to clustering of time series based on a minimization of the averaged clus-...
National audienceThe emergence of numerical sensors in many aspects of everyday life leadsto an incr...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
Classification is a very common task in information processing and important problem in many sectors...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
Functional data, where samples are random func-tions, are increasingly common and important in a var...
International audienceComplex data analysis is a central topic of modern statistics and learning sys...
We propose a new unsupervised learning method for clustering a large number of time series based on ...
International audienceA new model-based clustering algorithm for times series (or more generally fun...