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Towards the Deployment of Machine Learning Solutions in Network Traffic Classification: A Systematic Survey

Acceso Abierto
ID Minciencias: ART-0000116776-161
Ranking: ART-ART_A1

Abstract:

Traffic analysis is a compound of strategies intended to find relationships, patterns, anomalies, and misconfigurations, among others things, in Internet traffic. In particular, traffic classification is a subgroup of strategies in this field that aims at identifying the application's name or type of Internet traffic. Nowadays, traffic classification has become a challenging task due to the rise of new technologies, such as traffic encryption and encapsulation, which decrease the performance of classical traffic classification strategies. Machine learning (ML) gains interest as a new direction in this field, showing signs of future success, such as knowledge extraction from encrypted traffic, and more accurate Quality of Service management. ML is fast becoming a key tool to build traffic classification solutions in real network traffic scenarios; in this sense, the purpose of this investigation is to explore the elements that allow this technique to work in the traffic classification field. Therefore, a systematic review is introduced based on the steps to achieve traffic classification by using ML techniques. The main aim is to understand and to identify the procedures followed by the existing works to achieve their goals. As a result, this survey paper finds a set of trends derived from the analysis performed on this domain; in this manner, the authors expect to outline future directions for ML-based traffic classification.

Tópico:

Internet Traffic Analysis and Secure E-voting

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Citations: 295
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Información de la Fuente:

SCImago Journal & Country Rank
FuenteIEEE Communications Surveys & Tutorials
Cuartil año de publicaciónNo disponible
Volumen21
Issue2
Páginas1988 - 2014
pISSNNo disponible
ISSN1553-877X

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