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Towards a hybrid approach for improving malware detection in IoT devices

Zhang, Qianhao
Buttyán, Levente
2024-02-26T15:42:52Z
2024-02-26T15:42:52Z
2024

Abstract

With the proliferation of Internet of Things (IoT) devices, cybersecurity has become an increasingly pressing concern. Due to their inherent vulnerabilities and the severity of the threats posed by malware, robust malware detection strategies for IoT devices are in high demand. However, the constraints imposed by the limited memory and processing power of IoT devices, alongside with the varied nature of these devices, have limited the development of effective malware detection strategies. Existing solutions primarily use either local computation or cloud-based services, each with its own set of challenges. In this paper, we propose a hybrid malware detection method that leverages both local and cloud-based computation to address these challenges. This method, based on similarity computations, optimizes the trade-off between computational resources and latency, offering an effective approach for malware detection in IoT devices. Through experimental evaluation using a substantial IoT malware dataset, we demonstrate that our proposed approach achieves an optimal balance between local and cloud-based computations, providing a promising solution for malware detection in IoT context.

http://hdl.handle.net/10890/54995
en
Towards a hybrid approach for improving malware detection in IoT devices
Konferenciaközlemény
Open access
Szerző
2024-02-05
Budapest
2nd Workshop on Intelligent Infocommunication Networks, Systems and Services (WI2NS2)
2024-02-05
978-963-421-944-6
Budapest University of Technology and Economics
Online
2nd Workshop on Intelligent Infocommunication Networks, Systems and Services
Post print
Faculty of Electrical Engineering and Informatics
91
10.3311/WINS2024-016
96
Internet of Things
Cybersecurity
Malware Detection
Hybrid Detection Method
Konferenciacikk
Budapest University of Technology and Economics

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