CRLGNIOct 24, 2022

Machine and Deep Learning for IoT Security and Privacy: Applications, Challenges, and Future Directions

arXiv:2210.13547v169 citationsh-index: 28
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners in IoT security, but is incremental as it synthesizes existing knowledge rather than introducing novel methods.

This review paper analyzes the application of machine and deep learning to address security and privacy challenges in IoT systems, identifying threats and evaluating existing approaches without presenting new experimental results.

The integration of the Internet of Things (IoT) connects a number of intelligent devices with a minimum of human interference that can interact with one another. IoT is rapidly emerging in the areas of computer science. However, new security problems were posed by the cross-cutting design of the multidisciplinary elements and IoT systems involved in deploying such schemes. Ineffective is the implementation of security protocols, i.e., authentication, encryption, application security, and access network for IoT systems and their essential weaknesses in security. Current security approaches can also be improved to protect the IoT environment effectively. In recent years, deep learning (DL)/ machine learning (ML) has progressed significantly in various critical implementations. Therefore, DL/ML methods are essential to turn IoT systems protection from simply enabling safe contact between IoT systems to intelligence systems in security. This review aims to include an extensive analysis of ML systems and state-of-the-art developments in DL methods to improve enhanced IoT device protection methods. On the other hand, various new insights in machine and deep learning for IoT Securities illustrate how it could help future research. IoT protection risks relating to emerging or essential threats are identified, as well as future IoT device attacks and possible threats associated with each surface. We then carefully analyze DL and ML IoT protection approaches and present each approach's benefits, possibilities, and weaknesses. This review discusses a number of potential challenges and limitations. The future works, recommendations, and suggestions of DL/ML in IoT security are also included.

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