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Optimasi Algoritma Naïve Bayes Classifier untuk Mendeteksi Anomaly dengan Univariate Fitur Selection
Author(s) -
Harianto Harianto,
Andi Sunyoto,
Sudarmawan Sudarmawan
Publication year - 2020
Publication title -
edumatic jurnal pendidikan informatika
Language(s) - English
Resource type - Journals
ISSN - 2549-7472
DOI - 10.29408/edumatic.v4i2.2433
Subject(s) - feature selection , naive bayes classifier , pattern recognition (psychology) , computer science , artificial intelligence , univariate , classifier (uml) , intrusion detection system , selection (genetic algorithm) , training set , data mining , machine learning , support vector machine , multivariate statistics
System and network security from interference from parties who do not have access to the system is the most important in a system. To realize a system, data or network that is safe at unauthorized users or other interference, a system is needed to detect it. Intrusion-Detection System (IDS) is a method that can be used to detect suspicious activity in a system or network. The classification algorithm in artificial intelligence can be applied to this problem. There are many classification algorithms that can be used, one of which is Naïve Bayes. This study aims to optimize Naïve Bayes using Univariate Selection on the UNSW-NB 15 data set. The features used only take 40 features that have the best relevance. Then the data set is divided into two test data and training data, namely 10%: 90%, 20%: 70%, 30%: 70%, 40%: 60% and 50%: 50%. From the experiments carried out, it was found that feature selection had quite an effect on the accuracy value obtained. The highest accuracy value is obtained when the data set is divided into 40%: 60% for both feature selection and non-feature selection. Naïve Bayes with unselected features obtained the highest accuracy value of 91.43%, while with feature selection 91.62%, using feature selection could increase the accuracy value by 0.19%.

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