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Selection of Online Network Traffic Discriminators for on-the-Fly Traffic Classification

dc.contributor.authorVargas Arcila, Angela María
dc.contributor.authorCorrales Muñoz, Juan Carlos
dc.contributor.authorRendon Gallon, Alvaro
dc.contributor.authorSanchis, Araceli
dc.date.accessioned2021-10-05T20:20:10Z
dc.date.available2021-10-05T20:20:10Z
dc.date.created2021-03-08
dc.identifier.issn1692-3324
dc.identifier.urihttp://hdl.handle.net/11407/6567
dc.descriptionExisten varias técnicas para seleccionar un conjunto de variables para clasificación del tráfico de red. Sin embargo, muchos estudios ignoran el ámbito del conocimiento en donde el análisis y clasificación del tráfico tiene lugar y no consideran la información, siempre en movimiento, que se transporta en dichas redes. Este artículo describe el proceso de selección de discriminadores tráfico de redes en línea. Se obtuvieron 24 características que pueden procesarse en tiempo real y se proponen como los conjuntos de atributos base para futuros análisis, procesamiento y calificación conscientes del dominio (domain-aware). Para la selección de un conjunto de discriminadores de tráfico y con el fin de evitar los inconvenientes mencionados anteriormente, se llevaron a cabo tres etapas. La primera consiste en la selección manual basada en el conocimiento contextual de las características de tráfico de red que tengan las condiciones de obtener en tiempo real a partir del flujo. La segunda etapa se enfoca en la calidad del análisis de los atributos previamente seleccionados para asegurar la relevancia de cada uno a la hora de efectuar la clasificación del tráfico. En la tercera etapa, la implementación de varios algoritmos de aprendizaje incremental verifican la idoneidad de tales atributos en procesos de clasificación de tráfico en línea.
dc.descriptionThere are several techniques to select a set of traffic features for traffic classification. However, most studies ignore the domain knowledge where traffic analysis or classification is performed and do not consider the always moving information carried in the networks. This paper describes a selection process of online network-traffic discriminators. We obtained 24 traffic features that can be processed on the fly and propose them as a base attribute set for future domain-aware online analysis, processing, or classification. For the selection of a set of traffic discriminators, and to avoid the inconveniences mentioned, we carried out three steps. The first step is a context knowledge-based manual selection of traffic features that meet the condition of being obtained on the fly from the flow. The second step is focused on the quality analysis of previously selected attributes to ensure the relevance of each one when performing a traffic classification. In the third step, the implementation of several incremental learning algorithms verified the usefulness of such attributes in online traffic classification processes.
dc.formatPDF
dc.format.extentp. 65-85
dc.format.mediumElectrónico
dc.format.mimetypeapplication/pdf
dc.language.isoeng
dc.publisherUniversidad de Medellín
dc.relation.ispartofseriesRevista Ingenierías Universidad de Medellín; Vol. 20 Núm. 38 (2021)
dc.relation.haspartRevista Ingenierías Universidad de Medellín; Vol. 20 Núm. 38 enero-junio 2021
dc.relation.urihttps://revistas.udem.edu.co/index.php/ingenierias/article/view/3009
dc.rights.urihttp://creativecommons.org/licenses/by-nc-sa/4.0/
dc.rights.urihttp://creativecommons.org/licenses/by-nc/4.0
dc.sourceRevista Ingenierías Universidad de Medellín; Vol. 20 Núm. 38 (2021): enero-junio; 65-85
dc.subjectAprendizaje incremental
dc.subjectClasificación de tráfico de la red
dc.subjectClasificación en línea
dc.subjectSelección de características de tráfico
dc.subjectIncremental learning
dc.subjectNetwork traffic classification
dc.subjectOnline classification
dc.subjectTraffic feature selection
dc.titleSelección de discriminadores de tráfico de red para clasificación en tiempo real
dc.titleSelection of Online Network Traffic Discriminators for on-the-Fly Traffic Classification
dc.typeArticle
dc.identifier.doihttps://doi.org/10.22395/rium.v20n38a4
dc.relation.citationvolume20
dc.relation.citationissue38
dc.relation.citationstartpage65
dc.relation.citationendpage85
dc.audienceComunidad Universidad de Medellín
dc.publisher.facultyFacultad de Ingenierías
dc.coverageLat: 06 15 00 N degrees minutes Lat: 6.2500 decimal degreesLong: 075 36 00 W degrees minutes Long: -75.6000 decimal degrees
dc.publisher.placeMedellín
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dc.rights.creativecommonsAttribution-NonCommercial-ShareAlike 4.0 International
dc.identifier.eissn2248-4094
dc.type.coarhttp://purl.org/coar/resource_type/c_6501
dc.type.versioninfo:eu-repo/semantics/publishedVersion
dc.type.localArtículo científico
dc.type.driverinfo:eu-repo/semantics/article
dc.identifier.reponamereponame:Repositorio Institucional Universidad de Medellín
dc.identifier.repourlrepourl:https://repository.udem.edu.co/
dc.identifier.instnameinstname:Universidad de Medellín


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