Implementasi Algoritma Naive Bayes Classifier (NBC) Dan Information Gain Untuk Mendeteksi DDoS
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Authors:
Ida Bagus Gagananta Amartya, I Made Widiartha, I Gusti Agung Gede Arya Kadyanan, I Gusti Agung Gede Arya Kadyanan, I Gusti Ngurah Anom Cahyadi Putra, I Putu Gede Hendra Suputra, Cokorda Rai Adi Pramartha
Abstract:
“In this study, feature selection was also carried out using the information gain method, the result of feature selection improve the performance of DDoS attack detection against the Naive Bayes Classifier classification algorithm. The results obtained in this study are system testing on the results of the comparison of data performance that has been selected using 17 features and without the application of information gain feature selection using 43 features of course different, there are superior results from the application of Information Gain feature selection with an average accuracy value of 75.81 %, while the results obtained without the application of feature selection are 75.57%. The average precision level system performance using 17 features is 91.61%, while average precision result using 43 features is 92.20%. For the average recall value using 17 features, it is 57.63%, and results recall uses 43 features by 57.31%. In terms of execution time, the time required to execute the program using 17 features is faster and more effective, namely 89.17 seconds, while the program execution time using 43 features is longer, namely 205.34 seconds.”
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https://jurnal.harianregional.com/jlk/full-87912
Published
2022-07-08
How To Cite
GAGANANTA AMARTYA, Ida Bagus et al. Implementasi Algoritma Naive Bayes Classifier (NBC) Dan Information Gain Untuk Mendeteksi DDoS.JELIKU (Jurnal Elektronik Ilmu Komputer Udayana), [S.l.], v. 11, n. 2, p. 273-282, july 2022. ISSN 2654-5101. Available at: https://ojs.unud.ac.id/index.php/JLK/article/view/87912. Date accessed: 28 Aug. 2025. doi:https://doi.org/10.24843/JLK.2022.v11.i02.p06.
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Issue
Vol 11 No 2 (2022): JELIKU Volume 11 No 2, November 2022
Section
Articles
Copyright
This work is licensed under a Creative Commons Attribution 4.0 International License
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