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Optimizing Intrusion Detection in Wireless Sensor Networks via the Improved Chameleon Swarm Algorithm for Feature Selection

Laith AbualigahComputer Science Department Al al‐Bayt University Mafraq JordanMohammad H. AlmomaniDepartment of Mathematics Facility of Science The Hashemite University Zarqa JordanSaleh Ali AlomariFaculty of Science and Information Technology Jadara University Irbid JordanRaed Abu ZitarHazem MigdadyCSMIS Department Oman College of Management and Technology Barka OmanKashif SaleemDepartment of Computer Science & Engineering College of Applied Studies & Community Service King Saud University Riyadh Saudi ArabiaVáclav SnåšelFaculty of Electrical Engineering and Computer Science VŠB‐Technical University of Ostrava Poruba‐Ostrava Czech RepublicAseel SmeratCentre for Research Impact & Outcome Chitkara University Institute of Engineering and Technology Chitkara University Rajpura Punjab IndiaAbsalom E. EzugwuUnit for Data Science and Computing North‐West University Potchefstroom South Africa
2025en
ABI

Abstract

ABSTRACT In this paper, the improved chameleon swarm algorithm (ICSA) enhances the exploration–exploitation balance while optimizing feature subset selection. The integration of Lévy flight‐based exploration refines ICSA's search strategy, complemented by rotation‐type refinement and adaptive parameter‐setting mechanisms. These modifications ensure that exploration aligns effectively with the feature selection process, leading to a more adaptive and efficient approach. To evaluate ICSA's effectiveness, it is tested on the NSL‐KDD benchmark, a well‐established dataset in intrusion detection systems. Performance is assessed based on key metrics, including accuracy, detection rate, false alarm rate, execution time, and the number of selected features. Comparative analysis against six advanced classifiers demonstrates that ICSA achieves superior results with minimal computational overhead. The algorithm attains the highest accuracy (97.91%) and detection rate (98.75%), the fastest execution time, and the lowest false alarm rate (0.0021), eliminating the need for excessive feature selection. These results confirm that modifying feature selection mechanisms within ICSA significantly enhances computational efficiency and detection performance, as validated through rigorous experimental testing at the classifier level.

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Cited by 40 references