Optimizing IoT intrusion detection system: feature selection versus feature extraction in machine learning

Author:

Li Jing,Othman Mohd Shahizan,Chen Hewan,Yusuf Lizawati Mi

Abstract

AbstractInternet of Things (IoT) devices are widely used but also vulnerable to cyberattacks that can cause security issues. To protect against this, machine learning approaches have been developed for network intrusion detection in IoT. These often use feature reduction techniques like feature selection or extraction before feeding data to models. This helps make detection efficient for real-time needs. This paper thoroughly compares feature extraction and selection for IoT network intrusion detection in machine learning-based attack classification framework. It looks at performance metrics like accuracy, f1-score, and runtime, etc. on the heterogenous IoT dataset named Network TON-IoT using binary and multiclass classification. Overall, feature extraction gives better detection performance than feature selection as the number of features is small. Moreover, extraction shows less feature reduction compared with that of selection, and is less sensitive to changes in the number of features. However, feature selection achieves less model training and inference time compared with its counterpart. Also, more space to improve the accuracy for selection than extraction when the number of features changes. This holds for both binary and multiclass classification. The study provides guidelines for selecting appropriate intrusion detection methods for particular scenarios. Before, the TON-IoT heterogeneous IoT dataset comparison and recommendations were overlooked. Overall, the research presents a thorough comparison of feature reduction techniques for machine learning-driven intrusion detection in IoT networks.

Publisher

Springer Science and Business Media LLC

Cited by 8 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. An innovative model for an enhanced dual intrusion detection system using LZ‐JC‐DBSCAN, EPRC‐RPOA and EG‐GELU‐GRU;IET Communications;2024-09-12

2. An IoT Intrusion Detection Approach Based on Salp Swarm and Artificial Neural Network;International Journal of Network Management;2024-08-18

3. Comparison of Multiple Feature Selection Techniques for Machine Learning-Based Detection of IoT Attacks;Proceedings of the 19th International Conference on Availability, Reliability and Security;2024-07-30

4. Novel Methods for Smart Grid Intrusion Detection System Using Feature Selection Based on Improved Gravitational Search Algorithm;2024 9th International Conference on Automation, Control and Robotics Engineering (CACRE);2024-07-18

5. Comparison of Supervised Machine Learning Algorithms with Bagged-Ensemble Method for Intrusion Detection;2024 IEEE Students Conference on Engineering and Systems (SCES);2024-06-21

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