Integrating Global and Local Application of Naive Bayes Classifier
Journal: The International Arab Journal of Information Technology (Vol.11, No. 3)Publication Date: 2014-05-01
Authors : Sotiris Kotsiantis;
Page : 300-307
Keywords : Naive Bayes classifier; data mining; machine learning;
Abstract
Naive Bayes algorithm captures the assumption that every attribute is independent from the rest of the attributes, given the state of the class attribute. In this study, we attempted to increase the prediction accuracy of the simple Bayes model by integrating global and local application of Naive Bayes classifier. We performed a large-scale comparison with other attempts that have tried to improve the accuracy of the Naive Bayes algorithm as well as other state-of-the-art algorithms on 28 standard benchmark datasets and the proposed method gave better accuracy in most cases.
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