International audienceContemporary computers collect databases that can be too large for classical methods to handle. The present work takes data whose observations are distribution functions (rather than the single numerical point value of classical data) and presents a computational statistical approach of a new methodology to group the distributions into classes. The clustering method links the searched partition to the decomposition of mixture densities, through the notions of a function of distributions and of multi-dimensional copulas. The new clustering technique is illustrated by ascertaining distinct temperature and humidity regions for a global climate dataset and shows that the results compare favorably with those obtained from t...
The majority of model-based clustering techniques is based on multivariate normal models and their v...
A mixture model of Gaussian copulas is presented to cluster mixed data (different kinds of variables...
We review some recent clustering methods based on copulas. Specifically, in the dissimilarity\u2013b...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
Contemporary computers collect databases that can be too large for classical methods to handle. The ...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
The majority of model-based clustering techniques is based on multivariate Normal models and their v...
Abstract. A symbolic variable is often described by a histogram. More gener-ally, it can be provided...
This work investigates the situation in which each unit from a given set is described by some vector...
International audienceClustering task of mixed data is a challenging problem. In a probabilistic fra...
The majority of model-based clustering techniques is based on multivariate normal models and their v...
A mixture model of Gaussian copulas is presented to cluster mixed data (different kinds of variables...
We review some recent clustering methods based on copulas. Specifically, in the dissimilarity\u2013b...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
Contemporary computers collect databases that can be too large for classical methods to handle. The ...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
International audienceContemporary computers collect databases that can be too large for classical m...
The majority of model-based clustering techniques is based on multivariate Normal models and their v...
Abstract. A symbolic variable is often described by a histogram. More gener-ally, it can be provided...
This work investigates the situation in which each unit from a given set is described by some vector...
International audienceClustering task of mixed data is a challenging problem. In a probabilistic fra...
The majority of model-based clustering techniques is based on multivariate normal models and their v...
A mixture model of Gaussian copulas is presented to cluster mixed data (different kinds of variables...
We review some recent clustering methods based on copulas. Specifically, in the dissimilarity\u2013b...