<p>Mixture modeling of continuous data is an extremely effective and popular method for density estimation and clustering. However as the size of the data grows, both in terms of dimension and number of observations, many modeling and computational problems arise. In the Bayesian setting, computational methods for posterior inference become intractable as the number of observations and/or possible clusters gets large. Furthermore, relabeling in sampling methods is increasingly difficult to address as the data gets large. This thesis addresses computational and methodolog- ical solutions to these problems by utilizing modern computational hardware and new methodology. Novel approaches for parsimonious covariance modeling and information shar...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
A useful step in data analysis is clustering, in which observations are grouped together in a hopefu...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
Bayesian nonparametric mixture models based on the Dirichlet process (DP) have been widely used for ...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Bayesian nonparametric mixture models are common for modeling complex data. While these models are w...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...
<p>The use of a finite mixture of normal distributions in model-based clustering allows to capture n...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
In this article we propose an improvement on the sequential updating and greedy search (SUGS) algori...
Bayesian nonparametric mixture models are often employed for modelling complex data. While these mod...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
The parsimonious Gaussian mixture models, which exploit an eigenvalue decomposition of the group cov...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
A useful step in data analysis is clustering, in which observations are grouped together in a hopefu...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
Bayesian nonparametric mixture models based on the Dirichlet process (DP) have been widely used for ...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Bayesian nonparametric mixture models are common for modeling complex data. While these models are w...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...
<p>The use of a finite mixture of normal distributions in model-based clustering allows to capture n...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
In this article we propose an improvement on the sequential updating and greedy search (SUGS) algori...
Bayesian nonparametric mixture models are often employed for modelling complex data. While these mod...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
The parsimonious Gaussian mixture models, which exploit an eigenvalue decomposition of the group cov...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
A useful step in data analysis is clustering, in which observations are grouped together in a hopefu...