PAKDD 2003: Advances in Knowledge Discovery and Data Mining pp 265-270 | Cite as
A New Restricted Bayesian Network Classifier
Conference paper
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Abstract
On the basis of examining the existing restricted Bayesian network classifiers, a new Bayes-theorem-based and more strictly restricted Bayesian-network-based classification model DLBAN is proposed, which can be viewed as a double-level Bayesian network augmented naive Bayes classification. The experimental results show that the DLBAN classifier is better than the TAN classifier in the most cases.
Keywords
Naive Bayes Bayesian Network ClassificationPreview
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