A Survey of Machine and Deep Learning Methods for Internet of Things (IoT) Security
Mohammed Ali Al-Garadi, Amr Mohamed, Abdulla Al-Ali, Xiaojiang Du,, Mohsen Guizani

TL;DR
This survey reviews how machine learning and deep learning techniques are applied to improve security in IoT systems, addressing threats, vulnerabilities, and future research directions.
Contribution
It provides a comprehensive overview of ML/DL methods for IoT security, highlighting their advantages, limitations, and potential for future enhancements.
Findings
ML/DL methods enhance IoT security capabilities.
Various attack surfaces and threats in IoT are identified.
Challenges and opportunities for applying ML/DL in IoT security are discussed.
Abstract
The Internet of Things (IoT) integrates billions of smart devices that can communicate with one another with minimal human intervention. It is one of the fastest developing fields in the history of computing, with an estimated 50 billion devices by the end of 2020. On the one hand, IoT play a crucial role in enhancing several real-life smart applications that can improve life quality. On the other hand, the crosscutting nature of IoT systems and the multidisciplinary components involved in the deployment of such systems introduced new security challenges. Implementing security measures, such as encryption, authentication, access control, network security and application security, for IoT devices and their inherent vulnerabilities is ineffective. Therefore, existing security methods should be enhanced to secure the IoT system effectively. Machine learning and deep learning (ML/DL) have…
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