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Evaluating Machine Learning Algorithms for Effective Network Protocol Classification

  • Metaadatok
Tartalom: http://hdl.handle.net/10890/58919
Archívum: Műegyetem Digitális Archívum
Gyűjtemény: 1. Tudományos közlemények, publikációk
Konferenciák gyűjteményei
Workshop on Intelligent Infocommunication Networks, Systems and Services
3rd Workshop on Intelligent Infocommunication Networks, Systems and Services, 2025
Cím:
Evaluating Machine Learning Algorithms for Effective Network Protocol Classification
Létrehozó:
Hussein, Salam Allawi
Répás, Sándor R.
Dátum:
2025-02-20T13:52:03Z
2025-02-20T13:52:03Z
2025
Tartalmi leírás:
The current study illustrates the effectiveness of machine learning for the classification of protocols. Many critical operations on the network need to be observed, such as traffic analysis, quality of services, and traffic optimization. Given the emerging complexity of the network environment, it has become a challenge for a traditional classifier to deal with encrypted traffic and dynamic port assignment by data traffic. In the current study, three machine learning models were used and examined, named Decision Tree (TD), Random Forest (RF), and Naive Bayes(NB), which were evaluated based on metrics such as precision, precision, recall, and F1 score. The results indicated that both the Random Forest and the Decision tree outperform the NB, the highest achievement of the accuracy was for Random Forest with 96 %. This work shows the potential of using machine learning for the management of modern networks and provides the foundation for further studies
Nyelv:
angol
Típus:
Könyvfejezet
Formátum:
application/pdf
Azonosító: