This thesis consists of four papers studying structure learning and Bayesian inference in probabilistic graphical models for both undirected and directed acyclic graphs (DAGs). Paper A presents a novel algorithm, called the Christmas tree algorithm (CTA), that incrementally construct junction trees for decomposable graphs by adding one node at a time to the underlying graph. We prove that CTA with positive probability is able to generate all junction trees of any given number of underlying nodes. Importantly for practical applications, we show that the transition probability of the CTA kernel has a computationally tractable expression. Applications of the CTA transition kernel are demonstrated in a sequential Monte Carlo (SMC) setting for c...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
In machine-learning, Markov Chain Monte Carlo (MCMC) strategies such as Gibbs sampling are importan...
In Bayesian structure learning, we are interested in inferring a distribution over the directed acyc...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
In this study we present a sequential sampling methodology for Bayesian inference in decomposable gr...
In this study we present a sequential sampling methodology for Bayesian inference in decomposable gr...
Frequentist methods for learning Gaussian graphical model structure are unsuccessful at identifying ...
Full Bayesian computational inference for model determination in undirected graphical models is curr...
Graphical model learning and inference are often performed using Bayesian techniques. In particular,...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
Abstract. Graphical model learning and inference are often performed using Bayesian techniques. In p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
In machine-learning, Markov Chain Monte Carlo (MCMC) strategies such as Gibbs sampling are importan...
In Bayesian structure learning, we are interested in inferring a distribution over the directed acyc...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
In this study we present a sequential sampling methodology for Bayesian inference in decomposable gr...
In this study we present a sequential sampling methodology for Bayesian inference in decomposable gr...
Frequentist methods for learning Gaussian graphical model structure are unsuccessful at identifying ...
Full Bayesian computational inference for model determination in undirected graphical models is curr...
Graphical model learning and inference are often performed using Bayesian techniques. In particular,...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
In this study, we present a multi-class graphical Bayesian predictive classifier that incorporates t...
Abstract. Graphical model learning and inference are often performed using Bayesian techniques. In p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Probabilistic graphical models constitute a fundamental tool for the development of intelligent sys...
In machine-learning, Markov Chain Monte Carlo (MCMC) strategies such as Gibbs sampling are importan...
In Bayesian structure learning, we are interested in inferring a distribution over the directed acyc...