In recent years we are witnessing to an increased attention towards methods for clustering matrix-valued data. In this framework, matrix Gaussian mixture models constitute a natural extension of the model-based clustering strategies. Regrettably, the overparametrization issues, already affecting the vector-valued framework in high-dimensional scenarios, are even more troublesome for matrix mixtures. In this work we introduce a sparse model-based clustering procedure conceived for the matrix-variate context. We introduce a penalized estimation scheme which, by shrinking some of the parameters towards zero, produces parsimonious solutions when the dimensions increase. Moreover it allows cluster-wise sparsity, possibly easing the inter...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Model based clustering assumes that the data come from a finite mixture model with each component co...
In recent years we are witnessing to an increased attention towards methods for clustering matrix-v...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Mixed data refers to a mixture of continuous and categorical variables. The clustering problem with ...
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...
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...
We propose a novel regularized mixture model for clustering matrix-valued data. The proposed method ...
We consider the problem of clustering data points in high dimensions, i.e. when the number of data p...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Model based clustering assumes that the data come from a finite mixture model with each component co...
In recent years we are witnessing to an increased attention towards methods for clustering matrix-v...
Finite Gaussian mixture models provide a powerful and widely employed probabilistic approach for clu...
Mixed data refers to a mixture of continuous and categorical variables. The clustering problem with ...
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...
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...
We propose a novel regularized mixture model for clustering matrix-valued data. The proposed method ...
We consider the problem of clustering data points in high dimensions, i.e. when the number of data p...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Gaussian mixture models provide a probabilistically sound clustering approach. However, their tende...
Dimensionally reduced model-based clustering methods are recently receiving a wide interest in stati...
Model based clustering assumes that the data come from a finite mixture model with each component co...