Clustering to find subgroups with common features is often a necessary first step in the statistical modelling and analysis of large and complex datasets. Although follow-up analyses often make use of complex statistical models that are appropriate for the specific application, most popular clustering approaches are either nonparametric, or based on Gaussian mixture models and their variants, often for reasons of computational efficiency. Certain characteristics in the data, such as the presence of outliers, or non-ellipsoidal cluster shapes, that are common in modern scientific datasets, often lead these methods to fail to detect the cluster components accurately. In this article, we present two efficient and robust Bayesian clustering app...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
Finite mixture models are being commonly used in a wide range of applications in practice concernin...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
Clustering to find subgroups with common features is often a necessary first step in the statistical...
Clustering to find subgroups with common features is often a necessary first step in the statistical...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Model-based clustering approaches generally assume that the observations to be clustered are generat...
Model-based clustering approaches generally assume that the observations to be clustered are generat...
The use of a finite mixture of normal distributions in model-based clustering allows to capture non...
Clustering analysis is an important tool in studying gene expression data. The Bayesian hierarchical...
One of the most important goals of unsupervised learning is to discover meaningful clusters in data....
Clustering analysis is an important tool in studying gene expression data. The Bayesian hierarchical...
Identifying similarity patterns in heterogeneous observations is a very common problem in many branc...
Model-based clustering approaches generally assume that the observations to be clustered are generat...
Although the use of clustering methods has rapidly become one of the standard computational approach...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
Finite mixture models are being commonly used in a wide range of applications in practice concernin...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
Clustering to find subgroups with common features is often a necessary first step in the statistical...
Clustering to find subgroups with common features is often a necessary first step in the statistical...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Model-based clustering approaches generally assume that the observations to be clustered are generat...
Model-based clustering approaches generally assume that the observations to be clustered are generat...
The use of a finite mixture of normal distributions in model-based clustering allows to capture non...
Clustering analysis is an important tool in studying gene expression data. The Bayesian hierarchical...
One of the most important goals of unsupervised learning is to discover meaningful clusters in data....
Clustering analysis is an important tool in studying gene expression data. The Bayesian hierarchical...
Identifying similarity patterns in heterogeneous observations is a very common problem in many branc...
Model-based clustering approaches generally assume that the observations to be clustered are generat...
Although the use of clustering methods has rapidly become one of the standard computational approach...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
Finite mixture models are being commonly used in a wide range of applications in practice concernin...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...