Evaluation of machine learning and deep learning methods for early detection of internet of things botnets
Document Type
Article
Source of Publication
International Journal of Electrical and Computer Engineering
Publication Date
8-1-2024
Abstract
The internet of things (IoT) represents a rapidly expanding sector within computing, facilitating the interconnection of myriad smart devices autonomously. However, the complex interplay of IoT systems and their interdisciplinary nature has presented novel security concerns (e.g. privacy risks, device vulnerabilities, Botnets). In response, there has been a growing reliance on machine learning and deep learning methodologies to transition from conventional connectivity-centric IoT security paradigms to intelligence-driven security frameworks. This paper undertakes a comprehensive comparative analysis of recent advancements in the creation of IoT botnets. It introduces a novel taxonomy of attacks structured around the attack life-cycle, aiming to enhance the understanding and mitigation of IoT botnet threats. Furthermore, the paper surveys contemporary techniques employed for early-stage detection of IoT botnets, with a primary emphasis on machine learning and deep learning approaches. This elucidates the current landscape of the issue, existing mitigation strategies, and potential avenues for future research.
DOI Link
ISSN
Publisher
Institute of Advanced Engineering and Science
Volume
14
Issue
4
First Page
4732
Last Page
4744
Disciplines
Computer Sciences
Keywords
Big data, Big data analytics, Healthcare, Internet of things, Personalised healthcare, Point-of-care devices
Scopus ID
Recommended Citation
Mashaleh, Ashraf Suleiman; Ibrahim, Noor Farizah; Alauthman, Mohammad; Al-Karaki, Jamal; Almomani, Ammar; Atalla, Shadi; and Gawanmeh, Amjad, "Evaluation of machine learning and deep learning methods for early detection of internet of things botnets" (2024). All Works. 6718.
https://zuscholars.zu.ac.ae/works/6718
Indexed in Scopus
yes
Open Access
yes
Open Access Type
Gold: This publication is openly available in an open access journal/series