Cutting-Edge Intrusion Detection in IoT Networks: A Focus on Ensemble Models

Journal article


Sama, N. U., Ullah, S., Kazmi, A. S. M. and Mazzara, M. 2024. Cutting-Edge Intrusion Detection in IoT Networks: A Focus on Ensemble Models. IEEE Access. pp. 1-20. https://doi.org/10.1109/ACCESS.2024.3491831
AuthorsSama, N. U., Ullah, S., Kazmi, A. S. M. and Mazzara, M.
Abstract

As the Internet of Things (IoT) landscape rapidly evolves, robust network security measures are imperative. In particular, Intrusion Detection Systems play a very important role in the preservation of an IoT environment from malicious activities. This paper provides a comprehensive performance comparison of various machine learning classifiers, including K-Nearest Neighbors, Gradient Boosting, XGBoost, Support Vector Machines, Random Forests, Decision Trees, and Extremely Randomized Trees, for intrusion detection in IoT networks. Comparative analysis shows that although all models did very well, the ensemble methods—GB, XGBoost, RF, and ERT—constantly performed better than others in F1-Score, recall, accuracy, and precision. Among them, ERT is turned out to be the most effective model for real-time attack detection on IoT devices, with an accuracy of 99.7% besides excellent precision and recall. XGBoost and RF also turn out to have high reliability and accuracy with F1-Scores of 0.95. These findings further underscore that ensemble methods outperform in intrusion detection for IoT networks and, thus, offer important insights to improve security within networks and protect critical IoT-based infrastructures from a variety of threats.

Keywords Internet of Things (IoT); Intrusion Detection Systems; machine learning classifiers
Year2024
JournalIEEE Access
Journal citationpp. 1-20
PublisherIEEE Xplore
ISSN2169-3536
Digital Object Identifier (DOI)https://doi.org/10.1109/ACCESS.2024.3491831
Web address (URL)https://ieeexplore.ieee.org/abstract/document/10744011
Publisher's version
License
File Access Level
Open
Output statusPublished
Publication dates
Online05 Nov 2024
Publication process dates
Deposited04 Dec 2024
Permalink -

https://repository.derby.ac.uk/item/qv4wv/cutting-edge-intrusion-detection-in-iot-networks-a-focus-on-ensemble-models

Download files


Publisher's version
  • 10
    total views
  • 2
    total downloads
  • 3
    views this month
  • 1
    downloads this month

Export as