The R package BiDAG implements Markov chain Monte Carlo (MCMC) methods for structure learning and sampling of Bayesian networks. The package includes tools to search for a maximum a posteriori (MAP) graph and to sample graphs from the posterior distribution given the data. A new hybrid approach to structure learning enables inference in large graphs. In the first step, we define a reduced search space by means of the PC algorithm or based on prior knowledge. In the second step, an iterative order MCMC scheme proceeds to optimize the restricted search space and estimate the MAP graph. Sampling from the posterior distribution is implemented using either order or partition MCMC. The models and algorithms can handle both discrete and continuous...
Bayesian networks are powerful models for probabilistic inference that compactly encode in their str...
bnlearn is an R package (R Development Core Team 2010) which includes several algorithms for learnin...
International audienceWe present a novel hybrid algorithm for Bayesian network structure learning, c...
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...
We present a new Markov chain Monte Carlo method for estimating posterior probabilities of structura...
Acyclic digraphs are the underlying representation of Bayesian networks, a widely used class of prob...
Bayesian inference of the Bayesian network structure requires averaging over all possible directed a...
We introduce an R package BDgraph which performs Bayesian structure learning in high-dimensional gra...
We present methods based on Metropolis-coupled Markov chain Monte Carlo (MC3) and annealed importanc...
Bayesian Networks are increasingly used to represent conditional independence relations among variab...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
This work aims to describe, implement and apply to real data some of the existing structure search m...
In the modern age of social media and networks, graph representations of real-world phenomena have b...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
Bayesian networks are powerful models for probabilistic inference that compactly encode in their str...
bnlearn is an R package (R Development Core Team 2010) which includes several algorithms for learnin...
International audienceWe present a novel hybrid algorithm for Bayesian network structure learning, c...
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...
We present a new Markov chain Monte Carlo method for estimating posterior probabilities of structura...
Acyclic digraphs are the underlying representation of Bayesian networks, a widely used class of prob...
Bayesian inference of the Bayesian network structure requires averaging over all possible directed a...
We introduce an R package BDgraph which performs Bayesian structure learning in high-dimensional gra...
We present methods based on Metropolis-coupled Markov chain Monte Carlo (MC3) and annealed importanc...
Bayesian Networks are increasingly used to represent conditional independence relations among variab...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
This work aims to describe, implement and apply to real data some of the existing structure search m...
In the modern age of social media and networks, graph representations of real-world phenomena have b...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
Bayesian networks are powerful models for probabilistic inference that compactly encode in their str...
bnlearn is an R package (R Development Core Team 2010) which includes several algorithms for learnin...
International audienceWe present a novel hybrid algorithm for Bayesian network structure learning, c...