G-Networks Can Detect Different Types of Cyberattacks

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Date

2022

Authors

Erol Gelenbe
Mert Nakıp

Journal Title

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Volume Title

Publisher

IEEE Computer Society

Open Access Color

Green Open Access

No

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No
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Top 10%
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Average
Popularity
Top 10%

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Abstract

Malicious network attacks are a serious source of concern and machine learning techniques are widely used to build Attack Detectors with off-line training with real attack and non-attack data and used online to monitor system entry points connected to networks. Many machine learning based Attack Detectors are typically trained to identify specific types attacks and the training of such algorithms to cover several types of attacks may be excessively time consuming. This paper shows that G-Networks which are queueing networks with product form solution and special customers such as negative customers and triggers can be trained just with 'non-attack' traffic can accurately detect several different attack types. This is established with a special case of G-Networks with triggerred customer movement. A DARPA attack and non-attack traffic repository is used to train and test the the G-Network yielding comparable or clearly better accuracy than most known attack detection techniques. © 2023 Elsevier B.V. All rights reserved.

Description

Keywords

Auto-associative Deep Random Neural Network, Gelenbe-networks (g-networks), Multiple Attack Detection, Queueing Networks With Negative And Positive Customers, Random Neural Networks, 5g Mobile Communication Systems, Computer Crime, Deep Neural Networks, Learning Systems, Sales, Attack Detection, Attack Traffic, Auto-associative Deep Random Neural Network, Cyber-attacks, Gelenbe-network, Multiple Attack Detection, Network Attack, Queueing Network With Negative And Positive Customer, Random Neural Network, Queueing Networks, 5G mobile communication systems, Computer crime, Deep neural networks, Learning systems, Sales, Attack detection, Attack traffic, Auto-associative deep random neural network, Cyber-attacks, Gelenbe-network, Multiple attack detection, Network attack, Queueing network with negative and positive customer, Random neural network, Queueing networks

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OpenCitations Citation Count
6

Source

30th International Symposium on Modeling Analysis and Simulation of Computer and Telecommunication Systems MASCOTS 2022

Volume

Issue

Start Page

9

End Page

16
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CrossRef : 4

Scopus : 10

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Mendeley Readers : 3

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