Machine Learning and Deep Learning Techniques for IoT-based Intrusion Detection Systems: A Literature Review

Main Article Content

Laiby Thomas
Subramanya Bhat

Abstract

Purpose: The authors attempt to examine the work done in the area of Intrusion Detection System in IoT utilizing Machine Learning/Deep Learning technique and various accessible datasets for IoT security in this review of literature.


Methodology:


The papers in this study were published between 2014 and 2021 and dealt with the use of IDS in IoT security. Various databases such as IEEE, Wiley, Science Direct, MDPI, and others were searched for this purpose, and shortlisted articles used Machine Learning and Deep Learning techniques to handle various IoT vulnerabilities.


Findings/Result: In the past few years, the IDS has grown in popularity as a result of their robustness. The main idea behind intrusion detection systems is to detect intruders in a given region. An intruder is a host that tries to connect to other nodes without permission in the world of the Internet of Things. In the field of IDS, there is a research gap. Different ML/DL techniques are used for IDS in IoT. But it does not properly deal with complexity issues. Also, these techniques are limited to some attacks, and it does not provide high accuracy.


Originality: A review had been executed from various research works available from online databases and based on the survey derived a structure for the future study.


Paper Type: Literature Review.

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How to Cite
Laiby Thomas, & Subramanya Bhat. (2021). Machine Learning and Deep Learning Techniques for IoT-based Intrusion Detection Systems: A Literature Review. International Journal of Management, Technology and Social Sciences (IJMTS), 6(2), 296–314. https://doi.org/10.47992/IJMTS.2581.6012.0172
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