Decoding complex relationships among large numbers of variables with relatively few observations is one of the crucial issues in science. One approach to this problem is Gaussian graphical modeling, which describes conditional independence of variables through the presence or absence of edges in the underly- ing graph. In this paper, we introduce a novel and efficient Bayesian framework for Gaussian graphical model determination which is a trans-dimensional Markov Chain Monte Carlo (MCMC) approach based on a continuous-time birth-death process. We cover the theory and computational details of the method. It is easy to implement and computationally feasible for high-dimensional graphs. We show our method outperforms alternative Bayesian appr...
Research into graphical models is a rapidly developing enterprise, garnering significant interest fr...
We introduce an R package BDgraph which performs Bayesian structure learning in high-dimensional gra...
In this paper we propose a method to calculate the posterior probability of a nondecomposable graphi...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
AbstractThe theory of Gaussian graphical models is a powerful tool for independence analysis between...
This thesis contributes to the field of Gaussian Graphical Models by exploring either numerically or...
Despite major methodological developments, Bayesian inference in Gaussian graphical models remains c...
We consider the problem of learning a conditional Gaussian graphical model in the presence of latent...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
<p>We consider the problem of learning a conditional Gaussian graphical model in the presence of lat...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
Graphical models determine associations between variables through the notion of conditional independ...
This thesis shows a novel contribution to computational biology alongside with developed ma-chine le...
Research into graphical models is a rapidly developing enterprise, garnering significant interest fr...
We introduce an R package BDgraph which performs Bayesian structure learning in high-dimensional gra...
In this paper we propose a method to calculate the posterior probability of a nondecomposable graphi...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
AbstractThe theory of Gaussian graphical models is a powerful tool for independence analysis between...
This thesis contributes to the field of Gaussian Graphical Models by exploring either numerically or...
Despite major methodological developments, Bayesian inference in Gaussian graphical models remains c...
We consider the problem of learning a conditional Gaussian graphical model in the presence of latent...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
<p>We consider the problem of learning a conditional Gaussian graphical model in the presence of lat...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
Graphical models determine associations between variables through the notion of conditional independ...
This thesis shows a novel contribution to computational biology alongside with developed ma-chine le...
Research into graphical models is a rapidly developing enterprise, garnering significant interest fr...
We introduce an R package BDgraph which performs Bayesian structure learning in high-dimensional gra...
In this paper we propose a method to calculate the posterior probability of a nondecomposable graphi...