A systematic review of metaheuristics-based and machine learning-driven intrusion detection systems in IoT
Mohammad Shamim Ahsan, Salekul Islam, Swakkhar Shatabda

TL;DR
This paper systematically reviews how metaheuristic algorithms enhance machine learning-based intrusion detection systems in IoT, focusing on optimization, feature selection, and hybrid approaches.
Contribution
It uncovers hidden correlations between optimization techniques and ML models in IoT-IDSs and proposes a taxonomy of existing systems.
Findings
Metaheuristics improve feature selection and hyperparameter tuning in IoT-IDSs.
Hybrid approaches combining metaheuristics and ML show enhanced detection performance.
The study identifies promising algorithms for future IoT-IDS development.
Abstract
The widespread adoption of the Internet of Things (IoT) has raised a new challenge for developers since it is prone to known and unknown cyberattacks due to its heterogeneity, flexibility, and close connectivity. To defend against such security breaches, researchers have focused on building sophisticated intrusion detection systems (IDSs) using machine learning (ML) techniques. Although these algorithms notably improve detection performance, they require excessive computing power and resources, which are crucial issues in IoT networks considering the recent trends of decentralized data processing and computing systems. Consequently, many optimization techniques have been incorporated with these ML models. Specifically, a special category of optimizer adopted from the behavior of living creatures and different aspects of natural phenomena, known as metaheuristic algorithms, has been a…
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