OptiSecure: Hybrid SVM and ACO-based Intrusion Detection with Feature Optimization
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Abstract
In the era of modern networking, detecting cyber threats with high accuracy and minimal computational overhead has become increasingly vital. This paper presents an enhanced anomaly-based intrusion detection system (IDS) using a hybrid model combining Ant Colony Optimization (ACO) and Support Vector Machine (SVM). The CICIDS2017 dataset is used to evaluate the proposed approach, representing real-world traffic with diverse attack patterns including DoS, DDoS, Brute Force, Botnet, and Infiltration attacks. Experimental results show that the ACO-SVM model achieves a detection rate of 90.56%, false alarm rate of 9.44%, and time complexity of 0.32 seconds, outperforming ACO-ANN, ACO-NB, and PSO-SVM models. The results confirm that ACO combined with SVM provides efficient, scalable, and accurate intrusion detection performance.