Scopus Indexed Publications

Paper Details


Title
Enhancing Cybersecurity with an Investigation into Network Intrusion Detection System Using Machine Learning

Author
Md Shohanur Rahman, Wahid Tausif Islam,

Email

Abstract

The growing dependence on networked systems underscores the importance of robust security measures to fend off potential intrusions. This research undertakes the task of assessing different machine-learning models concerning network intrusion detection. Following an in-depth examination and comparison, models such as Decision Tree, Logistic Regression, XGBoost, and Random Forest exhibit promising aptitude in precisely identifying potential intrusions. Notably from our proposed model, Random Forest emerged as the top performer among these models, attaining the highest accuracy scores (99%). Its proficiency lies in delivering precise predictions and effectively capturing the intricacies of network intrusion detection. However, the Support Vector Machine (SVM) displayed limitations in its performance throughout this research. These discoveries illuminate the positive and negative aspects of these patterns, providing valuable knowledge about their efficiency in detecting intrusions. The study underscores the necessity for further fine-tuning of successful models and the exploration of advanced techniques to fortify network security. This research, as a whole, signifies an initial and crucial stride in the direction of formulating network intrusion detection systems that are more effective and reliable within the realm of network security.


Keywords

Journal or Conference Name
2024 IEEE 3rd International Conference on Robotics, Automation, Artificial-Intelligence and Internet-of-Things, RAAICON 2024 - Proceedings

Publication Year
2024

Indexing
scopus