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Reseach Article

Anomaly Intrusion Detection based on a Hybrid Classification Algorithm (GSVM)

by Salima Benqdara
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 181 - Number 36
Year of Publication: 2019
Authors: Salima Benqdara
10.5120/ijca2019918324

Salima Benqdara . Anomaly Intrusion Detection based on a Hybrid Classification Algorithm (GSVM). International Journal of Computer Applications. 181, 36 ( Jan 2019), 10-15. DOI=10.5120/ijca2019918324

@article{ 10.5120/ijca2019918324,
author = { Salima Benqdara },
title = { Anomaly Intrusion Detection based on a Hybrid Classification Algorithm (GSVM) },
journal = { International Journal of Computer Applications },
issue_date = { Jan 2019 },
volume = { 181 },
number = { 36 },
month = { Jan },
year = { 2019 },
issn = { 0975-8887 },
pages = { 10-15 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume181/number36/30265-2019918324/ },
doi = { 10.5120/ijca2019918324 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-07T01:08:19.034962+05:30
%A Salima Benqdara
%T Anomaly Intrusion Detection based on a Hybrid Classification Algorithm (GSVM)
%J International Journal of Computer Applications
%@ 0975-8887
%V 181
%N 36
%P 10-15
%D 2019
%I Foundation of Computer Science (FCS), NY, USA
Abstract

One of the major problems in support vector machines (SVM) is the selection of optimal parameters that can establish an efficient SVM to achieve better output with an acceptable level of accuracy. In this paper, proposed a hybrid classification algorithm (GSVM) based Gravitational Search Algorithm (GSA) and support vector machines (SVM) to optimize the accuracy of the SVM classifier by detecting the subset of the best values of the kernel parameters for the SVM classifier. In the GSVM classifier, the GSA is introduced as an optimization technique to optimize the SVM parameters. The GSVM algorithm evaluated using KDD CUP 99 data set and compared to the outperformance of the original SVM algorithms. The results show that the performance of GSVM algorithm has a higher detection rate with lower false positive rate.

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Index Terms

Computer Science
Information Sciences

Keywords

Network Intrusion Detection ensemble clusters unlabeled data.