Bayesian network structure learning is often performed in a Bayesian setting, by evaluating candidate structures using their posterior probabilities for a given data set. Score-based algorithms then use those posterior probabilities as an objective function and return the maximum a posteriori network as the learned model. For discrete Bayesian networks, the canonical choice for a posterior score is the Bayesian Dirichlet equivalent uniform (BDeu) marginal likelihood with a uniform (U) graph prior (Heckerman et al., 1995). Its favourable theoretical properties descend from assuming a uniform prior both on the space of the network structures and on the space of the parameters of the network. In this paper, we revisit the limitations of these ...
Most of the approaches developed in the literature to elicit the a-priori distribution on Directed A...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
In this paper, we provide new complexity results for algorithms that learn discretevariable Bayesian...
Abstract. This work presents two new score functions based on the Bayesian Dirichlet equivalent unif...
\u3cp\u3eThis work presents two new score functions based on the Bayesian Dirichlet equivalent unifo...
A classic approach for learning Bayesian networks from data is to identify a maximum a posteriori (M...
A classic approach for learning Bayesian networks from data is to select the maximum a posteriori (M...
This paper addresses exact learning of Bayesian network structure from data based on the Bayesian Di...
This paper addresses exact learning of Bayesian network structure from data based on the Bayesian Di...
The Bayesian Dirichlet equivalent uniform (BDeu) function is a popular score to evaluate the goodnes...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
Many algorithms for score-based Bayesian network structure learning (BNSL) take as input a collectio...
Most of the approaches developed in the literature to elicit the a priori distribution on Directed ...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
In this work, we empirically evaluate the capability of various scoring functions of Bayesian networ...
Most of the approaches developed in the literature to elicit the a-priori distribution on Directed A...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
In this paper, we provide new complexity results for algorithms that learn discretevariable Bayesian...
Abstract. This work presents two new score functions based on the Bayesian Dirichlet equivalent unif...
\u3cp\u3eThis work presents two new score functions based on the Bayesian Dirichlet equivalent unifo...
A classic approach for learning Bayesian networks from data is to identify a maximum a posteriori (M...
A classic approach for learning Bayesian networks from data is to select the maximum a posteriori (M...
This paper addresses exact learning of Bayesian network structure from data based on the Bayesian Di...
This paper addresses exact learning of Bayesian network structure from data based on the Bayesian Di...
The Bayesian Dirichlet equivalent uniform (BDeu) function is a popular score to evaluate the goodnes...
Recently several researchers have investi-gated techniques for using data to learn Bayesian networks...
Many algorithms for score-based Bayesian network structure learning (BNSL) take as input a collectio...
Most of the approaches developed in the literature to elicit the a priori distribution on Directed ...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
In this work, we empirically evaluate the capability of various scoring functions of Bayesian networ...
Most of the approaches developed in the literature to elicit the a-priori distribution on Directed A...
A Bayesian network is a widely used probabilistic graphical model with applications in knowledge dis...
In this paper, we provide new complexity results for algorithms that learn discretevariable Bayesian...