AbstractIn this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result of the algorithm is a network where the conditional distribution for each variable is a mixture of truncated exponentials (MTE), so that no restrictions on the network topology are imposed. The structure of the network is obtained by searching over the space of candidate networks using optimisation methods. The conditional densities are estimated by means of Gaussian kernel densities that afterwards are approximated by MTEs, so that the resulting network is appropriate for using standard algorithms for probabilistic reasoning. The behaviour of the proposed algorithm is tested using a set of real-world and artificially generated databa...
Bayesian networks with mixtures of truncated exponentials (MTEs) support efficient inference algorit...
AbstractThe main goal of this paper is to describe inference in hybrid Bayesian networks (BNs) using...
Hybrid Bayesian networks efficiently encode a joint probability distribution over a set of continuou...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
In this paper we introduce a hill-climbing algorithm for structural learning of Bayesian networks fr...
AbstractMixtures of truncated exponentials (MTE) potentials are an alternative to discretization for...
The main goal of this paper is to describe a method for exact inference in general hybrid Bayesian n...
The MTE (Mixture of Truncated Exponentials) model allows to deal with Bayesian networks containing d...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization and Monte C...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for solving...
In this paper we investigate methods for learning hybrid Bayesian networks from data. First we utili...
Has been accepted for publication in the International Journal of Approximate Reasoning, Elsevier Sc...
In this paper, the first algorithm for learning hybrid Bayesian Networks with Gaussian mixture and D...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization and Monte C...
Bayesian networks with mixtures of truncated exponentials (MTEs) support efficient in-ference algori...
Bayesian networks with mixtures of truncated exponentials (MTEs) support efficient inference algorit...
AbstractThe main goal of this paper is to describe inference in hybrid Bayesian networks (BNs) using...
Hybrid Bayesian networks efficiently encode a joint probability distribution over a set of continuou...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
In this paper we introduce a hill-climbing algorithm for structural learning of Bayesian networks fr...
AbstractMixtures of truncated exponentials (MTE) potentials are an alternative to discretization for...
The main goal of this paper is to describe a method for exact inference in general hybrid Bayesian n...
The MTE (Mixture of Truncated Exponentials) model allows to deal with Bayesian networks containing d...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization and Monte C...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for solving...
In this paper we investigate methods for learning hybrid Bayesian networks from data. First we utili...
Has been accepted for publication in the International Journal of Approximate Reasoning, Elsevier Sc...
In this paper, the first algorithm for learning hybrid Bayesian Networks with Gaussian mixture and D...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization and Monte C...
Bayesian networks with mixtures of truncated exponentials (MTEs) support efficient in-ference algori...
Bayesian networks with mixtures of truncated exponentials (MTEs) support efficient inference algorit...
AbstractThe main goal of this paper is to describe inference in hybrid Bayesian networks (BNs) using...
Hybrid Bayesian networks efficiently encode a joint probability distribution over a set of continuou...