Network Traffic Classification Based On A Deep Learning Approach Using NetFlow Data

COMPUTER JOURNAL(2023)

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摘要
Network traffic classification is of fundamental importance to a wide range of network activities, such as security monitoring, accounting, quality of service and forecasting for long-term provisioning purposes. This task has been increasingly implemented using machine learning methods due to the inability of conventional approaches to accommodate the increasing use of encryption. However, the application of machine learning methods to network traffic classification based on sampled NetFlow data is poorly developed despite the fact that NetFlow is a widely extended monitoring solution routinely employed by network operators. This study addresses this issue by proposing a network traffic classification module using NetFlow data in conjunction with a deep neural network. The performance of the proposed classification module is demonstrated by its application to two real-world datasets, and an average classification accuracy of 95% is obtained for similar to 1.4 million test cases. Moreover, the performance of the proposed classifier is demonstrated to be superior to three other state-of-the-art classifiers. Accordingly, the proposed module represents a promising alternative for network traffic classification.
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关键词
Traffic classification, NetFlow, Deep neural network, Network management
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