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A three-class heuristics technique: Generating training corpus for Peer-to-Peer traffic classification

机译:一种三类启发式技术:为点对点流量分类生成培训语料库

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Peer-to-Peer (P2P) applications generate more than 50% of Internet traffic and intensively consume network resources. Statistical machine learning approaches have been proposed as a promising way to detect P2P traffic. However, such systems require retraining in a regular basis. Hence, the generation of good quality P2P and non-P2P examples on a regular basis is not trivial. This paper proposes a three-class heuristics technique to provide regular training corpus generation of P2P and non-P2P traces. In the proposed work, three traffic classes are defined instead of two usually used in typical P2P heuristic classifiers. Based on 22 traffic traces downloaded from different shared resources and captured from Universiti Teknologi Malaysia (UTM) campus network between March and June 2010, the proposed system is evaluated. The result shows that adding the third class improve the accuracy from 93% to 98%. This module could provide quality P2P examples with around 2% class noise that can be used to train P2P classifier on a regular basis.
机译:点对点(P2P)应用程序产生超过50%的互联网流量并集中消耗网络资源。已提出统计机器学习方法作为检测P2P流量的有希望的方法。然而,这种系统需要定期重新培训。因此,定期产生优质P2P和非P2P示例并不是微不足道的。本文提出了一种三类启发式技术,提供定期培训P2P和非P2P迹线的培训语料库。在所提出的工作中,定义了三个流量类而不是通常用于典型的P2P启发式分类器中的两个流量类。基于22种流量迹线从3月和2010年3月和6月在2010年3月和6月在2010年3月间从Teknologi Malaysia(UTM)校园网络捕获,评估了所提出的系统。结果表明,添加第三类提高了93%至98%的准确性。该模块可以提供具有大约2%类噪声的优质P2P示例,可用于定期培训P2P分类器。

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