Advancing Network Security with Machine Learning: A Predictive Intrusion Detection System

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2025-09-17

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Daffodil International University

Abstract

In this paper, we benchmark and compare many machine leaning models in the CIC- IDS2017 for cyber-attack detection. The models are compared with Logistic Regression, Decision Tree, Random Forest, XGBoost, and LightGBM. The goal of the work is to compare the performance of these models in terms of accuracy, recall and precision for distinguishing the malicious and benigh network traffic. The most significant key features for attack detection were selected through feature importance rankings and correlations between attack categories with Random Forest. Experiments results show that the aggregated learning models, especially XGBoost and LightGBM, are capable to achieve better performance including accuracy, false positive rate, on malicious traffic detection compared to other widely used ones, including Logistic Regression and Decision Tree. Besides, the paper has studied a statistical analysis using Wilcoxon rank-sum test, and confirmed that the models recalled with no difference. The findings emphasize the potential of such ensemble techniques when it comes to online intrusion detection of cyber-attacks and factors which contribute in improving intrusion detection system

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Keywords

Cyber Attack Detection, Intrusion Detection System (IDS), Machine Learning Models, Network Security

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