Methods Inf Med 1994; 33(05): 535-542
DOI: 10.1055/s-0038-1635056
Original Article
Schattauer GmbH

Mixed Bayesian Networks: A Mixture of Gaussian Distributions

J. P. Chevrolat
1   INSERM 194 et Département de Biostatistique et Informatique Médicale, CHU Pitié Salpêtrière, Paris, France
,
F. Rutigliano
1   INSERM 194 et Département de Biostatistique et Informatique Médicale, CHU Pitié Salpêtrière, Paris, France
,
J. L. Golmard
1   INSERM 194 et Département de Biostatistique et Informatique Médicale, CHU Pitié Salpêtrière, Paris, France
› Author Affiliations
Further Information

Publication History

Publication Date:
12 February 2018 (online)

Abstract:

Mixed Bayesian networks are probabilistic models associated with a graphical representation, where the graph is directed and the random variables are discrete or continuous. We propose a comprehensive method for estimating the density functions of continuous variables, using a graph structure and a set of samples. The principle of the method is to learn the shape of densities from a sample of continuous variables. The densities are approximated by a mixture of Gaussian distributions. The estimation algorithm is a stochastic version of the Expectation Maximization algorithm (Stochastic EM algorithm). The inference algorithm corresponding to our model is a variant of junction three method, adapted to our specific case. The approach is illustrated by a simulated example from the domain of pharmacokinetics. Tests show that the true distributions seem sufficiently fitted for practical application.

 
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