Gaussian graphical models are useful tools for exploring network structures in multivariate normal data. In this paper we are interested in situations where data show departures from Gaussianity, therefore requiring alternative modeling distributions. The multivariate t-distribution, obtained by dividing each component of the data vector by a gamma random variable, is a straightforward generalization to accommodate deviations from normality such as heavy tails. Since different groups of variables may be contaminated to a different extent, Finegold and Drton (2014) introduced the Dirichlet t-distribution, where the divisors are clustered using a Dirichlet process. In this work, we consider a more general class of nonparametric distributions ...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Thesis (Ph.D.)--University of Washington, 2020Graphical models specify conditional independence rela...
The paper we discuss provides both theoretical and computational results for robust structure estima...
Abstract. Gaussian graphical models are useful tools for exploring network structures in multivariat...
Bayesian graphical modeling provides an appealing way to obtain uncertainty esti-mates when inferrin...
This paper presents theory for Normalized Random Measures (NRMs), Normalized Generalized Gammas (NGG...
In this article, we propose a Bayesian nonparametric model for clustering grouped data. We adopt a h...
Graphical Gaussian models have proven to be useful tools for exploring network structures based on m...
A generalized linear mixed model with a nonparametric distribution for the random effect is proposed...
In this paper we propose two constructions of dependent normalized random measures, a class of nonpa...
The Dirichlet process mixture model and more general mixtures based on discrete random probability m...
A graphical model captures conditional relationships among a set of random variables via a graph. Un...
The Dirichlet process mixture model and more general mixtures based on discrete random probability m...
The generalization of the classical multivariate t-distribution to the Dirichlet t-distribution prop...
Graphical models have established themselves as fundamental tools through which to understand comple...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Thesis (Ph.D.)--University of Washington, 2020Graphical models specify conditional independence rela...
The paper we discuss provides both theoretical and computational results for robust structure estima...
Abstract. Gaussian graphical models are useful tools for exploring network structures in multivariat...
Bayesian graphical modeling provides an appealing way to obtain uncertainty esti-mates when inferrin...
This paper presents theory for Normalized Random Measures (NRMs), Normalized Generalized Gammas (NGG...
In this article, we propose a Bayesian nonparametric model for clustering grouped data. We adopt a h...
Graphical Gaussian models have proven to be useful tools for exploring network structures based on m...
A generalized linear mixed model with a nonparametric distribution for the random effect is proposed...
In this paper we propose two constructions of dependent normalized random measures, a class of nonpa...
The Dirichlet process mixture model and more general mixtures based on discrete random probability m...
A graphical model captures conditional relationships among a set of random variables via a graph. Un...
The Dirichlet process mixture model and more general mixtures based on discrete random probability m...
The generalization of the classical multivariate t-distribution to the Dirichlet t-distribution prop...
Graphical models have established themselves as fundamental tools through which to understand comple...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Thesis (Ph.D.)--University of Washington, 2020Graphical models specify conditional independence rela...
The paper we discuss provides both theoretical and computational results for robust structure estima...