Task-Specific Feature Selection and Detection Algorithms for IoT-Based Networks

Kim, Yang Gyun and Mendoza, Benito and Kwon, Ohbong and Yoon, John (2022) Task-Specific Feature Selection and Detection Algorithms for IoT-Based Networks. Journal of Computer and Communications, 10 (10). pp. 59-73. ISSN 2327-5219

[thumbnail of jcc_2022102614081260.pdf] Text
jcc_2022102614081260.pdf - Published Version

Download (5MB)

Abstract

As IoT devices become more ubiquitous, the security of IoT-based networks becomes paramount. Machine Learning-based cybersecurity enables autonomous threat detection and prevention. However, one of the challenges of applying Machine Learning-based cybersecurity in IoT devices is feature selection as most IoT devices are resource-constrained. This paper studies two feature selection algorithms: Information Gain and PSO-based, to select a minimum number of attack features, and Decision Tree and SVM are utilized for performance comparison. The consistent use of the same metrics in feature selection and detection algorithms substantially enhances the classification accuracy compared to the non-consistent use in feature selection by Information Gain (entropy) and Tree detection algorithm by classification. Furthermore, the Tree with consistent feature selection is comparable to the ensemble that provides excellent performance at the cost of computation complexity.

Item Type: Article
Subjects: ScienceOpen Library > Computer Science
Depositing User: Managing Editor
Date Deposited: 29 Apr 2023 04:56
Last Modified: 21 Sep 2024 04:10
URI: http://scholar.researcherseuropeans.com/id/eprint/1107

Actions (login required)

View Item
View Item