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Hybrid ML Approach for Robust Intrusion Detection in IoT Networks

Maqbool AhmedBUITEMS,Dept of Computer Science,Quetta,PakistanMuhammad Imran GhafoorPunjab University College of IT (PUCIT),Dept of Information Technology,Lahore,PakistanSibghat Ullah BazaiBUITEMS,Dept of Computer Engineering,Quetta,PakistanSabirov SardorMamun University,Dept of General Professional Sciences,Khorezm,UzbekistanUzair Aslam BhattiSchool of Information and Communication, Engineering, Hainan University,Hainan,ChinaTemur EshchanovUrgench State Univeristy, Abu Rayhon Beruni,Urgench,Uzbekistan
2025en
ABI

Аннотация

The use of Internet of Things (IoT) devices has attracted more cyberattacks, which calls for the improvement of traditional IDS. The prior research focused on integrating machine learning techniques for addressing emerging threats with the aim to push the boundaries of IDS more adaptable for network security. However, the findings of existing research focused primarily on performance enhancement. This research aims to examine IDS performance with help of ML techniques. This study improved the detection accuracy and lower false alarm rates using a hybrid method by combining K-Means with SVM. The NSL-KDD dataset validates the efficacy of the proposed approach. the results shows notable increases in detection accuracy and lowered false positives, validating the potential of ML in improving network security.

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