LSTM deep learning method for network intrusion detection system

The security of the network has become a primary concern for organizations. Attackers use different means to disrupt services or steal information, these various attacks push to think of a new way to block them all in one manner. In addition, these intrusions can change and penetrate the devices of...

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Veröffentlicht in:International journal of electrical and computer engineering (Malacca, Malacca) Malacca), 2020-06, Vol.10 (3), p.3315
Hauptverfasser: Boukhalfa, Alaeddine, Abdellaoui, Abderrahim, Hmina, Nabil, Chaoui, Habiba
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container_title International journal of electrical and computer engineering (Malacca, Malacca)
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creator Boukhalfa, Alaeddine
Abdellaoui, Abderrahim
Hmina, Nabil
Chaoui, Habiba
description The security of the network has become a primary concern for organizations. Attackers use different means to disrupt services or steal information, these various attacks push to think of a new way to block them all in one manner. In addition, these intrusions can change and penetrate the devices of security. To solve these issues, we suggest, in this paper, a new idea for Network Intrusion Detection System (NIDS) based on Long Short-TermMemory (LSTM) to recognize menaces and to obtain a long-term memory on them, inorder to stop the new attacks that are like the existing ones, and at the sametime, to have a single mean to block intrusions. According to the results of the experiments of detections that we have carried out, the Accuracy reaches upto 99.98 % and 99.93 % for respectively the classification of two classes and several classes, Also the False Positive Rate (FPR) reaches up to only 0,068 % and 0,023 % for respectively the classification of two classes and several classes, which proves that the proposed model is very effective, it has a great ability to memorize and differentiate between normal traffic and attack traffic and its identification is more accurate than other Machine Learning classifiers.
doi_str_mv 10.11591/ijece.v10i3.pp3315-3322
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subjects Classification
Deep learning
Intrusion detection systems
Machine learning
title LSTM deep learning method for network intrusion detection system
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