Abstract
The ever-evolving landscape of cyber threats necessitates robust and adaptable
intrusion detection systems (IDS) capable of identifying both known and emerging attacks.
Traditional IDS models often struggle with detecting novel threats, leading to significant
security vulnerabilities. This paper proposes an optimized intrusion detection model using
Support Vector Machine (SVM) algorithms tailored to detect known and innovative cyberattacks with high accuracy and efficiency. The model integrates feature selection and
dimensionality reduction techniques to enhance detection performance while reducing
computational overhead. By leveraging advanced optimization techniques such as Grid Search
and Particle Swarm Optimization (PSO), the proposed SVM-based IDS achieves superior
classification results.