动态流量分类中在线网络流量判别器的选择

Angela María Vargas Arcila, Juan Carlos Corrales Muñoz, Alvaro Rendon Gallon, A. Sanchis
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引用次数: 0

摘要

有几种技术可以选择一组用于流分类的流特征。然而,大多数研究忽略了进行流量分析或分类的领域知识,没有考虑到网络中携带的始终移动的信息。本文描述了在线网络流量鉴别器的选择过程。我们获得了24个可以实时处理的流量特征,并将它们作为基础属性集,用于未来的领域感知在线分析、处理或分类。为了选择一组流量鉴别器,并避免上述不便,我们进行了三个步骤。第一步是基于上下文知识的交通特征的人工选择,这些特征满足从流中动态获得的条件。第二步侧重于对先前选择的属性进行质量分析,以确保在执行流量分类时每个属性的相关性。在第三步,几个增量学习算法的实现验证了这些属性在在线流量分类过程中的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of Online Network Traffic Discriminators for on-the-Fly Traffic Classification
There 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. 
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