Litcius/Paper detail

A Comparative Study of Using Boosting-Based Machine Learning Algorithms for IoT Network Intrusion Detection

Mohamed Saied, Shawkat K. Guirguis, Magda M. Madbouly

2023International Journal of Computational Intelligence Systems42 citationsDOIOpen Access PDF

Abstract

Abstract The Internet-of-Things (IoT) environment has revolutionized the quality of living standards by enabling seamless connectivity and automation. However, the widespread adoption of IoT has also brought forth significant security challenges for manufacturers and consumers alike. Detecting network intrusions in IoT networks using machine learning techniques shows promising potential. However, selecting an appropriate machine learning algorithm for intrusion detection poses a considerable challenge. Improper algorithm selection can lead to reduced detection accuracy, increased risk of network infection, and compromised network security. This article provides a comparative evaluation to six state-of-the-art boosting-based algorithms for detecting intrusions in IoT. The methodology overview involves benchmarking the performance of the selected boosting-based algorithms in multi-class classification. The evaluation includes a comprehensive classification performance analysis includes accuracy, precision, detection rate, F1 score, as well as a temporal performance analysis includes training and testing times.

Topics & Concepts

Computer scienceBoosting (machine learning)Intrusion detection systemMachine learningBenchmarkingArtificial intelligenceInternet of ThingsAlgorithmAutomationNetwork securityData miningComputer securityEngineeringMarketingMechanical engineeringBusinessNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingAnomaly Detection Techniques and Applications