Evaluating the Effectiveness of Machine Learning Models in Detecting Network Attacks Using the Cicids 2017 Dataset
Student: Sekinat Oluwafunmilayo Aweda (Project, 2025)
Department of Computer Science
Kwara State University, Malete, Ilorin, Kwara State
Abstract
The increasing frequency and sophistication of cyberattacks have made network security a major concern. This study evaluates the effectiveness of various machine learning models in detecting network attacks using the CICIDS 2017 dataset. Algorithms such as Random Forest, SVM, CNN, RNN, and Gradient Boosting were compared using metrics like accuracy, precision, recall, and F1-score. Results show that Gradient Boosting achieved an impressive 99% accuracy, proving effective for intrusion detection. The findings highlight machine learning’s ability to enhance real-time network security and improve intrusion detection systems.
Keywords
For the full publication, please contact the author directly at: awedasekinat05@gmail.com
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Institutions
- Sokoto State University, Sokoto, Sokoto State 42
- St. Albert The Great Major Seminary, Abeokuta. (affl. To University of Benin) 1
- Sule Lamido University, Kafin Hausa, Jigawa State 4
- Tai Solarin University of Education, Ijagun, Ogun State 18
- Tansian University, Oba, Anambra State 1
- Taraba State University, Jalingo, Taraba State 32
- Temple-Gate Polytechnic, Osisioma, Abia State 1
- The Oke-Ogun Polytechnic, Saki, Oyo State 6
- The Polytechnic, Ibadan, Oyo State 13
- THOMAS ADEWUMI UNIVERSITY, OKO-IRESE, KWARA STATE 1