A markovian signature-based approach to IP traffic classification

H. Dahmouni, Sandrine Vaton, D. Rossé
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引用次数: 34

Abstract

In this paper we present a real-time automatic process to traffic classification and to the detection of abnormal behaviors in IP traffic. The proposed method aims to detect anomalies in the traffic associated to a particular service, or to automatically recognize the service associated to a given sequence of packets at the transport layer. Service classification is becoming a central issue because of the emergence of new services (P2P, VoIP, Streaming video, etc...) which raises new challenges in resource reservation, pricing, network monitoring, etc... In order to identify a specific signature to an application, we first of all model the sequence of its packets at the transport layer by means of a first order Markov chain. Then, we decide which service should be associated to any new sequence by means of standard decision techniques (Maximum Likelihood criterion, Neyman-Pearson test). The evaluation of our automatic recognition procedure using live GPRS Orange France traffic traces demonstrates the feasibility and the excellent performance of this approach.
基于马尔可夫签名的IP流分类方法
本文提出了一种实时自动的IP流量分类和异常行为检测方法。提出的方法旨在检测与特定服务相关的流量中的异常,或者在传输层自动识别与给定数据包序列相关的服务。由于新业务(P2P、VoIP、流媒体视频等)的出现,在资源预留、定价、网络监控等方面提出了新的挑战,服务分类正成为一个中心问题。为了识别应用程序的特定签名,我们首先通过一阶马尔可夫链在传输层对其数据包序列进行建模。然后,我们通过标准决策技术(最大似然准则,Neyman-Pearson检验)决定哪个服务应该与任何新序列相关联。我们的自动识别程序使用实时GPRS橙法国交通轨迹的评估证明了该方法的可行性和优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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