DocumentCode :
2611816
Title :
Learning an Optimal Naive Bayes Classifier
Author :
Martinez-Arroyo, Miriam ; Sucar, L. Enrique
Author_Institution :
Inst. Tecnologico de Acapulco
Volume :
4
fYear :
0
fDate :
0-0 0
Firstpage :
958
Lastpage :
958
Abstract :
The naive Bayes classifier is an efficient classification model that is easy to learn and has a high accuracy in many domains. However, it has two main drawbacks: (i) its classification accuracy decreases when the attributes are not independent, and (ii) it can not deal with nonparametric continuous attributes. In this work we propose a method that deals with both problems, and learns an optimal naive Bayes classifier. The method includes two phases, discretization and structural improvement, which are repeated alternately until the classification accuracy can not be improved. Discretization is based on the minimum description length principle. To deal with dependent and irrelevant attributes, we apply a structural improvement method that eliminates and/or joins attributes, based on mutual and conditional information measures. The method has been tested in two different domains with good results
Keywords :
Bayes methods; learning (artificial intelligence); nonparametric statistics; pattern classification; discretization; learning; minimum description length; nonparametric continuous attributes; optimal naive Bayes classifier; structural improvement; Bayesian methods; Cancer detection; Cervical cancer; Iterative methods; Niobium compounds; Pattern recognition; Robustness; Search problems; Skin; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pattern Recognition, 2006. ICPR 2006. 18th International Conference on
Conference_Location :
Hong Kong
ISSN :
1051-4651
Print_ISBN :
0-7695-2521-0
Type :
conf
DOI :
10.1109/ICPR.2006.749
Filename :
1700004
Link To Document :
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