وثيقة

Performance Investigation of Principal Component Analysis for Intrusion Detection System Using Different Support Vector Machine Kernels

وكيل مرتبط
Almomani, Omar , مؤلف مشارك
Alsaaidah, Adeeb, مؤلف مشارك
Al-Otaibi, Shaha, مؤلف مشارك
Bani-Hani, Nabeel, مؤلف مشارك
Al Hwaitat, Ahmad K., مؤلف مشارك
Al-Zahrani, Ali , مؤلف مشارك
Lutfi, Abdalwali, مؤلف مشارك
Bani Awad, Ali , مؤلف مشارك
Aldhyani, Theyazn H. H., مؤلف مشارك
عنوان الدورية
Electronics
العدد
Volume 11 - Issue 21
دولة النشر
Bahrain
مكان النشر
Sakhir, Bahrain
الناشر
University of Bahrain
تاريخ النشر
2022
اللغة
الأنجليزية
الملخص الإنجليزي
Abstract: The growing number of security threats has prompted the use of a variety of security techniques. The most common security tools for identifying and tracking intruders across diverse network domains are intrusion detection systems. Machine Learning classifiers have begun to be used in the detection of threats, thus increasing the intrusion detection systems’ performance. In this paper, the investigation model for an intrusion detection systems model based on the Principal Component Analysis feature selection technique and a different Support Vector Machine kernels classifier is present. The impact of various kernel functions used in Support Vector Machines, namely linear, polynomial, Gaussian radial basis function, and Sigmoid, is investigated. The performance of the investigation model is measured in terms of detection accuracy, True Positive, True Negative, Precision, Sensitivity, and F-measure to choose an appropriate kernel function for the Support Vector Machine. The investigation model was examined and evaluated using the KDD Cup’99 and UNSW-NB15 datasets. The obtained results prove that the Gaussian radial basis function kernel is superior to the linear, polynomial, and sigmoid kernels in both used datasets. Obtained accuracy, Sensitivity, and, F-measure of the Gaussian radial basis function kernel for KDD CUP’99 were 99.11%, 98.97%, and 99.03%. for UNSW-NB15 datasets were 93.94%, 93.23%, and 94.44%.
المجموعة
المعرف
https://digitalrepository.uob.edu.bh/id/ac997236-4083-482a-8dab-6678c3027357
مواد أخرى لنفس الموضوع
مقال دورية
2
Hadjadj, T.E
University of Bahrain
2022
مقال دورية
1
Idrees , M
University of Bahrain
2022