Bayesian inference of the Bayesian network structure requires averaging over all possible directed acyclic graphs, DAGs, each weighted by its posterior probability. For approximate averaging, the most popular method has been Markov chain Monte Carlo, MCMC. It was recently shown that collapsing the sampling space from DAGs to suitably defined ordered partitions of the nodes substantially expedites the chain's convergence; this partition-MCMC is similar to order-MCMC on node orderings, but it avoids biasing the sampling distribution. Here, we further collapse the state space by merging some number of adjacent members of a partition into layers. This renders the computation of the (unnormalized) posterior probability of a state, called layerin...
Bayesian networks and their variants are widely used for modelling gene regulatory and protein signa...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
Bayesian inference of the Bayesian network structure requires averaging over all possible directed a...
Algorithms for inferring the structure of Bayesian networks from data have become an increasingly po...
Bayesian networks are probabilistic graphical models widely employed to understand dependencies in h...
Acyclic digraphs are the underlying representation of Bayesian networks, a widely used class of prob...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
We present methods based on Metropolis-coupled Markov chain Monte Carlo (MC3) and annealed importanc...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...
We present a new Markov chain Monte Carlo method for estimating posterior probabilities of structura...
The R package BiDAG implements Markov chain Monte Carlo (MCMC) methods for structure learning and sa...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...
Applications of Bayesian networks in systems biology are computationally demanding due to the large ...
Bayesian networks and their variants are widely used for modelling gene regulatory and protein signa...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
Bayesian inference of the Bayesian network structure requires averaging over all possible directed a...
Algorithms for inferring the structure of Bayesian networks from data have become an increasingly po...
Bayesian networks are probabilistic graphical models widely employed to understand dependencies in h...
Acyclic digraphs are the underlying representation of Bayesian networks, a widely used class of prob...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
We present methods based on Metropolis-coupled Markov chain Monte Carlo (MC3) and annealed importanc...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...
We present a new Markov chain Monte Carlo method for estimating posterior probabilities of structura...
The R package BiDAG implements Markov chain Monte Carlo (MCMC) methods for structure learning and sa...
In many domains, we are interested in analyzing the structure of the underlying distribution, e.g., ...
Applications of Bayesian networks in systems biology are computationally demanding due to the large ...
Bayesian networks and their variants are widely used for modelling gene regulatory and protein signa...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...