Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System
The detection of network attacks on computer systems remains an attractive but challenging research scope. As network attackers keep changing their methods of attack execution to evade the deployed intrusion-detection systems (IDS), machine learning (ML) algorithms have been introduced to boost the...
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my.ump.umpir.307802021-02-24T01:56:21Z http://umpir.ump.edu.my/id/eprint/30780/ Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System Ali, Mohammed Hasan Mohamed Fadli, Zolkipli QA75 Electronic computers. Computer science The detection of network attacks on computer systems remains an attractive but challenging research scope. As network attackers keep changing their methods of attack execution to evade the deployed intrusion-detection systems (IDS), machine learning (ML) algorithms have been introduced to boost the performance of the IDS. The incorporation of a single parallel hidden layer feed-forward neural network to the Fast Learning Network (FLN) architecture gave rise to the improved Extreme Learning Machine (ELM). The input weights and hidden layer biases are randomly generated. In this paper, the particle swan optimization algorithm (PSO) was used to obtain an optimal set of initial parameters for Reduce Kernel FLN (RK-FLN), thus, creating an optimal RKFLN classifier named PSO-RKELM. The derived model was rigorously compared to four models, including basic ELM, basic FLN, Reduce Kernel ELM (RK-ELM), and RK-FLN. The approach was tested on the KDD Cup99 intrusion detection dataset and the results proved the proposed PSO-RKFLN as an accurate, reliable, and effective classification algorithm. Springer 2019 Conference or Workshop Item PeerReviewed Ali, Mohammed Hasan and Mohamed Fadli, Zolkipli (2019) Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System. In: Intelligent Computing & Optimization. International Conference on Intelligent Computing & Optimization: ICO 2018, 4-5 October 2018 , Pattaya, Thailand. pp. 146-157., 866. ISBN 978-3-030-00979-3 https://doi.org/10.1007/978-3-030-00979-3_15 |
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QA75 Electronic computers. Computer science Ali, Mohammed Hasan Mohamed Fadli, Zolkipli Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System |
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The detection of network attacks on computer systems remains an attractive but challenging research scope. As network attackers keep changing their methods of attack execution to evade the deployed intrusion-detection systems (IDS), machine learning (ML) algorithms have been introduced to boost the performance of the IDS. The incorporation of a single parallel hidden layer feed-forward neural network to the Fast Learning Network (FLN) architecture gave rise to the improved Extreme Learning Machine (ELM). The input weights and hidden layer biases are randomly generated. In this paper, the particle swan optimization algorithm (PSO) was used to obtain an optimal set of initial parameters for Reduce Kernel FLN (RK-FLN), thus, creating an optimal RKFLN classifier named PSO-RKELM. The derived model was rigorously compared to four models, including basic ELM, basic FLN, Reduce Kernel ELM (RK-ELM), and RK-FLN. The approach was tested on the KDD Cup99 intrusion detection dataset and the results proved the proposed PSO-RKFLN as an accurate, reliable, and effective classification algorithm. |
format |
Conference or Workshop Item |
author |
Ali, Mohammed Hasan Mohamed Fadli, Zolkipli |
author_facet |
Ali, Mohammed Hasan Mohamed Fadli, Zolkipli |
author_sort |
Ali, Mohammed Hasan |
title |
Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System |
title_short |
Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System |
title_full |
Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System |
title_fullStr |
Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System |
title_full_unstemmed |
Model of Improved a Kernel Fast Learning Network Based on Intrusion Detection System |
title_sort |
model of improved a kernel fast learning network based on intrusion detection system |
publisher |
Springer |
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2019 |
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http://umpir.ump.edu.my/id/eprint/30780/ https://doi.org/10.1007/978-3-030-00979-3_15 |
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1822921925400199168 |