Client Server Network Intrusion Detection System
Student: Aiyu Ahmad Musa (Project, 2025)
Department of Cyber Security
Nigerian Army University, Biu, Borno State
Abstract
The project focuses on building and evaluating a Network Intrusion Detection System (NIDS) using machine learning to detect malicious and normal network traffic. Using the NSL-KDD dataset, five models—Naïve Bayes, Decision Tree, K-Nearest Neighbors, Logistic Regression, and Artificial Neural Network (ANN)—were tested. The Decision Tree performed best with 87.5% accuracy, while Logistic Regression followed with 85.5%. ANN achieved 83%, showing potential for improvement. The study highlights how data preprocessing and model optimization improve accuracy but notes limitations like dataset imbalance and lack of real-time testing. It recommends future research on ensemble learning, deep learning optimization, and real-time implementation to strengthen cybersecurity.
Keywords
For the full publication, please contact the author directly at: www.ahmadmusa333@gmail.com
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Institutions
- University of Ilorin, Kwara State 398
- University of Jos, Jos, Plateau State 19
- University of Lagos 18
- University of Maiduguri ( - Elearning), Maiduguri, Borno State 3
- University of Maiduguri, Borno State 109
- University of Nigeria, Nsukka, Enugu State 269
- University of Port Harcourt Teaching Hospital, Port Harcourt , River State 5
- University of Port-Harcourt, Rivers State 174
- University of Uyo, Akwa Ibom State 206
- Usmanu Danfodio University, Sokoto, Sokoto State 245