AbstractMixtures of truncated exponentials (MTEs) are a powerful alternative to discretisation when working with hybrid Bayesian networks. One of the features of the MTE model is that standard propagation algorithms can be used. However, the complexity of the process is too high and therefore approximate methods, which tradeoff complexity for accuracy, become necessary. In this paper we propose an approximate propagation algorithm for MTE networks which is based on the Penniless propagation method already known for discrete variables. We also consider how to use Markov Chain Monte Carlo to carry out the probability propagation. The performance of the proposed methods is analysed in a series of experiments with random networks
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for approxi...
Bayesian networks with mixtures of truncated exponentials (MTEs) are gaining popularity as a flexibl...
Has been accepted for publication in the International Journal of Approximate Reasoning, Elsevier Sc...
Mixtures of truncated exponentials (MTEs) are a powerful alternative to discretisation when working ...
AbstractMixtures of truncated exponentials (MTEs) are a powerful alternative to discretisation when ...
The MTE (mixture of truncated exponentials) model allows to deal with Bayesian networks containing d...
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 and Monte C...
AbstractMixtures of truncated exponentials (MTE) potentials are an alternative to discretization for...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
AbstractIn this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for solving...
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...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for approxi...
Bayesian networks with mixtures of truncated exponentials (MTEs) are gaining popularity as a flexibl...
Has been accepted for publication in the International Journal of Approximate Reasoning, Elsevier Sc...
Mixtures of truncated exponentials (MTEs) are a powerful alternative to discretisation when working ...
AbstractMixtures of truncated exponentials (MTEs) are a powerful alternative to discretisation when ...
The MTE (mixture of truncated exponentials) model allows to deal with Bayesian networks containing d...
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 and Monte C...
AbstractMixtures of truncated exponentials (MTE) potentials are an alternative to discretization for...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
AbstractIn this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for solving...
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...
Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for approxi...
Bayesian networks with mixtures of truncated exponentials (MTEs) are gaining popularity as a flexibl...
Has been accepted for publication in the International Journal of Approximate Reasoning, Elsevier Sc...