Comparison of Naive Bayes and Decision Tree on Feature Selection Using Genetic Algorithm for Classification Problem

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Abstract

This paper discusses the problem of feature selection using genetic algorithms on a dataset for classification problems. The classification model used is the decicion tree (DT), and Naive Bayes. In this paper we will discuss how the Naive Bayes and Decision Tree models to overcome the classification problem in the dataset, where the dataset feature is selectively selected using GA. Then both models compared their performance, whether there is an increase in accuracy or not. From the results obtained shows an increase in accuracy if the feature selection using GA. The proposed model is referred to as GADT (GA-Decision Tree) and GANB (GA-Naive Bayes). The data sets tested in this paper are taken from the UCI Machine Learning repository.

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Rahmadani, S., Dongoran, A., Zarlis, M., & Zakarias. (2018). Comparison of Naive Bayes and Decision Tree on Feature Selection Using Genetic Algorithm for Classification Problem. In Journal of Physics: Conference Series (Vol. 978). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/978/1/012087

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