Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers

Advancements in machine learning and artificial intelligence have been widely utilised in the security domain, including but not limited to intrusion detection techniques. With the large training datasets of modern traffic, intelligent algorithms and powerful machine learning tools, security researc...

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Main Authors: Malek Al-Zewairi, Sufyan Almajali, Moussa Ayyash
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Electronics
Subjects:
IDS
Online Access:https://www.mdpi.com/2079-9292/9/12/2006
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spelling doaj-bcfb15a1f236477ebce1cecf0a910fff2020-11-27T08:08:30ZengMDPI AGElectronics2079-92922020-11-0192006200610.3390/electronics9122006Unknown Security Attack Detection Using Shallow and Deep ANN ClassifiersMalek Al-Zewairi0Sufyan Almajali1Moussa Ayyash2Department of Computer Science, Princess Sumaya University for Technology, Amman 11941, JordanDepartment of Computer Science, Princess Sumaya University for Technology, Amman 11941, JordanDepartment of Computing, Information, and Mathematical Sciences and Technology, Chicago State University, Chicago, IL 60628, USAAdvancements in machine learning and artificial intelligence have been widely utilised in the security domain, including but not limited to intrusion detection techniques. With the large training datasets of modern traffic, intelligent algorithms and powerful machine learning tools, security researchers have been able to greatly improve on the intrusion detection models and enhance their ability to detect malicious traffic more accurately. Nonetheless, the problem of detecting completely unknown security attacks is still an open area of research. The enormous number of newly developed attacks constitutes an eccentric challenge for all types of intrusion detection systems. Additionally, the lack of a standard definition of what constitutes an unknown security attack in the literature and the industry alike adds to the problem. In this paper, the researchers reviewed the studies on detecting unknown attacks over the past 10 years and found that they tended to use inconsistent definitions. This formulates the need for a standard consistent definition to have comparable results. The researchers proposed a new categorisation of two types of unknown attacks, namely Type-A, which represents a completely new category of unknown attacks, and Type-B, which represents unknown attacks within already known categories of attacks. The researchers conducted several experiments and evaluated modern intrusion detection systems based on shallow and deep artificial neural network models and their ability to detect Type-A and Type-B attacks using two well-known benchmark datasets for network intrusion detection. The research problem was studied as both a binary and multi-class classification problem. The results showed that the evaluated models had poor overall generalisation error measures, where the classification error rate in detecting several types of unknown attacks from 92 experiments was 50.09%, which highlights the need for new approaches and techniques to address this problem.https://www.mdpi.com/2079-9292/9/12/2006unknown attacksnetwork anomalyintrusion detectionIDSdeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Malek Al-Zewairi
Sufyan Almajali
Moussa Ayyash
spellingShingle Malek Al-Zewairi
Sufyan Almajali
Moussa Ayyash
Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers
Electronics
unknown attacks
network anomaly
intrusion detection
IDS
deep learning
author_facet Malek Al-Zewairi
Sufyan Almajali
Moussa Ayyash
author_sort Malek Al-Zewairi
title Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers
title_short Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers
title_full Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers
title_fullStr Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers
title_full_unstemmed Unknown Security Attack Detection Using Shallow and Deep ANN Classifiers
title_sort unknown security attack detection using shallow and deep ann classifiers
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2020-11-01
description Advancements in machine learning and artificial intelligence have been widely utilised in the security domain, including but not limited to intrusion detection techniques. With the large training datasets of modern traffic, intelligent algorithms and powerful machine learning tools, security researchers have been able to greatly improve on the intrusion detection models and enhance their ability to detect malicious traffic more accurately. Nonetheless, the problem of detecting completely unknown security attacks is still an open area of research. The enormous number of newly developed attacks constitutes an eccentric challenge for all types of intrusion detection systems. Additionally, the lack of a standard definition of what constitutes an unknown security attack in the literature and the industry alike adds to the problem. In this paper, the researchers reviewed the studies on detecting unknown attacks over the past 10 years and found that they tended to use inconsistent definitions. This formulates the need for a standard consistent definition to have comparable results. The researchers proposed a new categorisation of two types of unknown attacks, namely Type-A, which represents a completely new category of unknown attacks, and Type-B, which represents unknown attacks within already known categories of attacks. The researchers conducted several experiments and evaluated modern intrusion detection systems based on shallow and deep artificial neural network models and their ability to detect Type-A and Type-B attacks using two well-known benchmark datasets for network intrusion detection. The research problem was studied as both a binary and multi-class classification problem. The results showed that the evaluated models had poor overall generalisation error measures, where the classification error rate in detecting several types of unknown attacks from 92 experiments was 50.09%, which highlights the need for new approaches and techniques to address this problem.
topic unknown attacks
network anomaly
intrusion detection
IDS
deep learning
url https://www.mdpi.com/2079-9292/9/12/2006
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AT sufyanalmajali unknownsecurityattackdetectionusingshallowanddeepannclassifiers
AT moussaayyash unknownsecurityattackdetectionusingshallowanddeepannclassifiers
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