Authors
Aritz Pérez, Pedro Larrañaga, Iñaki Inza
Publication date
2009/2/1
Journal
International Journal of Approximate Reasoning
Volume
50
Issue
2
Pages
341-362
Publisher
Elsevier
Description
When learning Bayesian network based classifiers continuous variables are usually handled by discretization, or assumed that they follow a Gaussian distribution. This work introduces the kernel based Bayesian network paradigm for supervised classification. This paradigm is a Bayesian network which estimates the true density of the continuous variables using kernels. Besides, tree-augmented naive Bayes, k-dependence Bayesian classifier and complete graph classifier are adapted to the novel kernel based Bayesian network paradigm. Moreover, the strong consistency properties of the presented classifiers are proved and an estimator of the mutual information based on kernels is presented. The classifiers presented in this work can be seen as the natural extension of the flexible naive Bayes classifier proposed by John and Langley [G.H. John, P. Langley, Estimating continuous distributions in Bayesian …
Total citations
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Scholar articles
A Pérez, P Larrañaga, I Inza - International Journal of Approximate Reasoning, 2009