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Título
Application of advanced machine learning techniques to early network traffic classification
Autor
Año del Documento
2020
Titulación
Doctorado en Tecnologías de la Información y las Telecomunicaciones
Resumen
The fast-paced evolution of the Internet is drawing a complex context which
imposes demanding requirements to assure end-to-end Quality of Service. The
development of advanced intelligent approaches in networking is envisioning
features that include autonomous resource allocation, fast reaction against
unexpected network events and so on. Internet Network Traffic Classification
constitutes a crucial source of information for Network Management, being decisive
in assisting the emerging network control paradigms. Monitoring traffic flowing
through network devices support tasks such as: network orchestration, traffic
prioritization, network arbitration and cyberthreats detection, amongst others.
The traditional traffic classifiers became obsolete owing to the rapid Internet
evolution. Port-based classifiers suffer from significant accuracy losses due to port
masking, meanwhile Deep Packet Inspection approaches have severe user-privacy
limitations. The advent of Machine Learning has propelled the application of
advanced algorithms in diverse research areas, and some learning approaches have
proved as an interesting alternative to the classic traffic classification approaches.
Addressing Network Traffic Classification from a Machine Learning perspective
implies numerous challenges demanding research efforts to achieve feasible
classifiers. In this dissertation, we endeavor to formulate and solve important
research questions in Machine-Learning-based Network Traffic Classification. As a
result of numerous experiments, the knowledge provided in this research constitutes
an engaging case of study in which network traffic data from two different
environments are successfully collected, processed and modeled.
Firstly, we approached the Feature Extraction and Selection processes providing our
own contributions. A Feature Extractor was designed to create Machine-Learning
ready datasets from real traffic data, and a Feature Selection Filter based on fast
correlation is proposed and tested in several classification datasets. Then, the
original Network Traffic Classification datasets are reduced using our Selection
Filter to provide efficient classification models. Many classification models based on
CART Decision Trees were analyzed exhibiting excellent outcomes in identifying
various Internet applications. The experiments presented in this research comprise
a comparison amongst ensemble learning schemes, an exploratory study on Class
Imbalance and solutions; and an analysis of IP-header predictors for early traffic
classification. This thesis is presented in the form of compendium of JCR-indexed
scientific manuscripts and, furthermore, one conference paper is included.
In the present work we study a wide number of learning approaches employing the
most advance methodology in Machine Learning. As a result, we identify the
strengths and weaknesses of these algorithms, providing our own solutions to
overcome the observed limitations. Shortly, this thesis proves that Machine
Learning offers interesting advanced techniques that open prominent prospects in
Internet Network Traffic Classification.
Materias (normalizadas)
Aprendizaje automático
Information Systems Applications
Materias Unesco
3325 Tecnología de las Telecomunicaciones
Departamento
Departamento de Teoría de la Señal y Comunicaciones e Ingeniería Telemática
Idioma
eng
Tipo de versión
info:eu-repo/semantics/publishedVersion
Derechos
openAccess
Aparece en las colecciones
- Tesis doctorales UVa [2328]
Ficheros en el ítem
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