Search Strategies for Binary Feature Selection for a Naive Bayes Classifier

Rabenoro, Tsirizo, Lacaille, Jérôme, Cottrell, Marie, Rossi, Fabrice

arXiv.org Machine Learning 

We compare in this paper several feature selection methods for the Naive Bayes Classifier (NBC) when the data under study are described by a large number of redundant binary indicators. Wrapper approaches guided by the NBC estimation of the classification error probability out-perform filter approaches while retaining a reasonable computational cost.

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