Implementation of Feature Selection using Information Gain Algorithm and Discretization with NSL-KDD Intrusion Detection System
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Authors:
Dharma Putra, I Gusti Agung Gede Arya Kadyanan
Abstract:
“Feature selection is one of the research on data mining for datasets that have relatively many attributes. Eliminating some attributes that are irrelevant to the label class will be able to improve the performance of the classification algorithm. The Information Gain algorithm is one of the algorithms for searching for features that are irrelevant to the label class. This algorithm uses wrapper techniques to eliminate irrelevant attributes. This research aims to implement feature selection using the Information Gain algorithm against the NSL KDD intrusion detection dataset which has a large number of relative attributes. The dataset of the selected attribute will be performed by a classification algorithm so that an attribute reduction can improve the compute process and improve the accuracy of the algorithm model used.”
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https://jurnal.harianregional.com/jlk/full-64473
Published
2021-02-18
How To Cite
PUTRA, Dharma; KADYANAN, I Gusti Agung Gede Arya. Implementation of Feature Selection using Information Gain Algorithm and Discretization with NSL-KDD Intrusion Detection System.JELIKU (Jurnal Elektronik Ilmu Komputer Udayana), [S.l.], v. 9, n. 3, p. 359-364, feb. 2021. ISSN 2654-5101. Available at: https://ojs.unud.ac.id/index.php/JLK/article/view/64473. Date accessed: 28 Aug. 2025. doi:https://doi.org/10.24843/JLK.2021.v09.i03.p06.
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Issue
Vol 9 No 3 (2021): JELIKU Volume 9 No 3, Februari 2021
Section
Articles
Copyright
This work is licensed under a Creative Commons Attribution 4.0 International License
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