Author
Listed:
- Ahmed Alshaibi
(Department of Complex Information Security of Computer Systems, Faculty of Security, Tomsk State University of Control Systems And Radioelectronics, 634000 Tomsk, Russia)
- Mustafa Al-Ani
(Department of Complex Information Security of Computer Systems, Faculty of Security, Tomsk State University of Control Systems And Radioelectronics, 634000 Tomsk, Russia)
- Abeer Al-Azzawi
(Department of Complex Information Security of Computer Systems, Faculty of Security, Tomsk State University of Control Systems And Radioelectronics, 634000 Tomsk, Russia)
- Anton Konev
(Department of Complex Information Security of Computer Systems, Faculty of Security, Tomsk State University of Control Systems And Radioelectronics, 634000 Tomsk, Russia)
- Alexander Shelupanov
(Department of Complex Information Security of Computer Systems, Faculty of Security, Tomsk State University of Control Systems And Radioelectronics, 634000 Tomsk, Russia)
Abstract
Almost all industrial internet of things (IIoT) attacks happen at the data transmission layer according to a majority of the sources. In IIoT, different machine learning (ML) and deep learning (DL) techniques are used for building the intrusion detection system (IDS) and models to detect the attacks in any layer of its architecture. In this regard, minimizing the attacks could be the major objective of cybersecurity, while knowing that they cannot be fully avoided. The number of people resisting the attacks and protection system is less than those who prepare the attacks. Well-reasoned and learning-backed problems must be addressed by the cyber machine, using appropriate methods alongside quality datasets. The purpose of this paper is to describe the development of the cybersecurity datasets used to train the algorithms which are used for building IDS detection models, as well as analyzing and summarizing the different and famous internet of things (IoT) attacks. This is carried out by assessing the outlines of various studies presented in the literature and the many problems with IoT threat detection. Hybrid frameworks have shown good performance and high detection rates compared to standalone machine learning methods in a few experiments. It is the researchers’ recommendation to employ hybrid frameworks to identify IoT attacks for the foreseeable future.
Suggested Citation
Ahmed Alshaibi & Mustafa Al-Ani & Abeer Al-Azzawi & Anton Konev & Alexander Shelupanov, 2022.
"The Comparison of Cybersecurity Datasets,"
Data, MDPI, vol. 7(2), pages 1-18, January.
Handle:
RePEc:gam:jdataj:v:7:y:2022:i:2:p:22-:d:737829
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