We introduce a method for learning Bayesian networks that handles the discretization of continuous variables as an integral part of the learning process. The main ingredient in this method is a new metric based on the Minimal Description Length principle for choosing the threshold values for the discretization while learning the Bayesian network structure. This score balances the complexity of the learned discretization and the learned network structure against how well they model the training data. This ensures that the discretization of each variable introduces just enough intervals to capture its interaction with adjacent variables in the network. We formally derive the new metric, study its main properties, and propose an iterative algo...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
We explore the issue of re ning an existent Bayesian network structure using new data which might me...
In this paper we introduce a hill-climbing algorithm for structural learning of Bayesian networks fr...
The performance of many machine learning algorithms can be substantially improved with a proper disc...
Bayesian networks are a type of probabilistic graphic models composed of nodes and directed edges th...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
In previous work we developed a method of learning Bayesian Network models from raw data. This metho...
We consider the problem of learning a Bayesian network structure given n examples and the prior prob...
Bayesian networks are multivariate statistical models using a di- rected acyclic graph to represent...
\u3cp\u3eThis paper addresses the problem of learning Bayesian network structures from data based on...
Abstract. The present paper addresses the issue of learning the underlying structure of a discrete b...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
We compare three approaches to learning numerical parameters of discrete Bayesian networks from cont...
Continuous time Bayesian networks (CTBN) describe structured stochastic processes with finitely many...
Bayesian networks are widely considered as powerful tools for modeling risk assessment, uncertainty,...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
We explore the issue of re ning an existent Bayesian network structure using new data which might me...
In this paper we introduce a hill-climbing algorithm for structural learning of Bayesian networks fr...
The performance of many machine learning algorithms can be substantially improved with a proper disc...
Bayesian networks are a type of probabilistic graphic models composed of nodes and directed edges th...
Abstract. Learning a Bayesian network from data is an important problem in biomedicine for the autom...
In previous work we developed a method of learning Bayesian Network models from raw data. This metho...
We consider the problem of learning a Bayesian network structure given n examples and the prior prob...
Bayesian networks are multivariate statistical models using a di- rected acyclic graph to represent...
\u3cp\u3eThis paper addresses the problem of learning Bayesian network structures from data based on...
Abstract. The present paper addresses the issue of learning the underlying structure of a discrete b...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
We compare three approaches to learning numerical parameters of discrete Bayesian networks from cont...
Continuous time Bayesian networks (CTBN) describe structured stochastic processes with finitely many...
Bayesian networks are widely considered as powerful tools for modeling risk assessment, uncertainty,...
A family of measurements of generalisation is proposed for estimators of continuous distributions. I...
We explore the issue of re ning an existent Bayesian network structure using new data which might me...
In this paper we introduce a hill-climbing algorithm for structural learning of Bayesian networks fr...