We consider mixtures of longitudinal trajectories, where one trajectory contains measurements over time of the variable of interest for one individual and each individual belongs to one cluster. The number of clusters as well as individual cluster memberships are unknown and must be inferred. We propose an original Bayesian clustering framework that allows us to obtain an exact finite-sample model selection criterion. Our approach is more flexible and parsimonious than asymptotic alternatives such as Bayesian Information Criterion (BIC) or Integrated Classification Likelihood (ICL) criterion in the choice of the number of clusters. Moreover, our approach has other desirable qualities: i) it keeps the computational effort of the clustering ...
20 pagesInternational audienceWe consider a finite mixture of Gaussian regression model for high- di...
The Bayesian approach to cluster analysis is presented. We assume that all data stem from a finite m...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
The clustering of longitudinal data from a Bayesian perspective is considered , with particular atte...
In the framework of Bayesian model-based clustering based on a finite mixture of Gaussian distributi...
The use of a finite mixture of normal distributions in model-based clustering allows to capture non...
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items o...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items or...
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items or...
This article is concerned with variable selection for cluster analysis. The problem is regarded as a...
R package mixAK originally implemented routines primarily for Bayesian estimation of finite normal m...
Traditional cluster analysis methods used in ordinal data, for instance k-means and hierarchical clu...
A model-based approach is developed for clustering categorical data with no natural ordering. The pr...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
20 pagesInternational audienceWe consider a finite mixture of Gaussian regression model for high- di...
The Bayesian approach to cluster analysis is presented. We assume that all data stem from a finite m...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
The clustering of longitudinal data from a Bayesian perspective is considered , with particular atte...
In the framework of Bayesian model-based clustering based on a finite mixture of Gaussian distributi...
The use of a finite mixture of normal distributions in model-based clustering allows to capture non...
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items o...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items or...
In cluster analysis interest lies in probabilistically capturing partitions of individuals, items or...
This article is concerned with variable selection for cluster analysis. The problem is regarded as a...
R package mixAK originally implemented routines primarily for Bayesian estimation of finite normal m...
Traditional cluster analysis methods used in ordinal data, for instance k-means and hierarchical clu...
A model-based approach is developed for clustering categorical data with no natural ordering. The pr...
Cluster analysis seeks to identify homogeneous subgroups of cases in a population. This article prov...
20 pagesInternational audienceWe consider a finite mixture of Gaussian regression model for high- di...
The Bayesian approach to cluster analysis is presented. We assume that all data stem from a finite m...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...