APPLICATION OF MACHINE LEARNING METHODS FOR ANOMALY DETECTION IN NETWORK TRAFFIC
DOI:
https://doi.org/10.34185/1991-7848.itmm.2026.01.082Keywords:
machine learning, anomaly detection, network traffic, cybersecurity, intrusion detection system, Random Forest, classification, NSL-KDDAbstract
This paper investigates the effectiveness of machine learning methods for anomaly detection in network traffic. The main approaches to building intelligent intrusion detection systems (IDS) are analyzed, including signature-based analysis and machine learning-based methods. An experimental comparison of Random Forest, Support Vector Machine, k-Nearest Neighbors, and Multilayer Perceptron algorithms was performed on the NSL-KDD dataset. Classification quality was assessed using Accuracy, Precision, Recall, and F1-score metrics. The results showed that the Random Forest method provides the best balance of accuracy and computational efficiency for real-time network anomaly detection tasks. The prospects of applying ensemble methods and deep learning for improving cyber threat detection quality are identified.
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