Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clustering multivariate continuous data. However, the practical usefulness of these models is jeopardized in high-dimensional spaces, where they tend to be over-parameterized. As a consequence, different solutions have been proposed, often relying on matrix decompositions or variable selection strategies. Recently, a methodological link between Gaussian graphical models and finite mixtures has been established, paving the way for penalized model-based clustering in the presence of large precision matrices. Notwithstanding, current methodologies implicitly assume similar levels of sparsity across the classes, not accounting for different degrees ...
Recently, there has been an increasing interest in developing statistical methods able to find grou...
In the framework of Bayesian model-based clustering based on a finite mixture of Gaussian distributi...
In the companion paper [C. Maugis and B. Michel, A non asymptotic penalized criterion for Gaussian m...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
In recent years we are witnessing to an increased attention towards methods for clustering matrix-v...
In recent years we are witnessing to an increased attention towards methods for clustering matrix-v...
Recently, there has been an increasing interest in developing statistical methods able to find grou...
Recently, there has been an increasing interest in developing statistical methods able to find grou...
In the framework of Bayesian model-based clustering based on a finite mixture of Gaussian distributi...
In the companion paper [C. Maugis and B. Michel, A non asymptotic penalized criterion for Gaussian m...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
Gaussian mixture models (GMM) are the most-widely employed approach to perform model-based clusterin...
In recent years we are witnessing to an increased attention towards methods for clustering matrix-v...
In recent years we are witnessing to an increased attention towards methods for clustering matrix-v...
Recently, there has been an increasing interest in developing statistical methods able to find grou...
Recently, there has been an increasing interest in developing statistical methods able to find grou...
In the framework of Bayesian model-based clustering based on a finite mixture of Gaussian distributi...
In the companion paper [C. Maugis and B. Michel, A non asymptotic penalized criterion for Gaussian m...