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A method for classification of network traffic based on C5.0 Machine Learning Algorithm

机译:基于C5.0机器学习算法的网络流量分类方法

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Monitoring of the network performance in highspeed Internet infrastructure is a challenging task, as the requirements for the given quality level are service-dependent. Backbone QoS monitoring and analysis in Multi-hop Networks requires therefore knowledge about types of applications forming current network traffic. To overcome the drawbacks of existing methods for traffic classification, usage of C5.0 Machine Learning Algorithm (MLA) was proposed. On the basis of statistical traffic information received from volunteers and C5.0 algorithm we constructed a boosted classifier, which was shown to have ability to distinguish between 7 different applications in test set of 76,632–1,622,710 unknown cases with average accuracy of 99.3–99.9%. This high accuracy was achieved by using high quality training data collected by our system, a unique set of parameters used for both training and classification, an algorithm for recognizing flow direction and the C5.0 itself. Classified applications include Skype, FTP, torrent, web browser traffic, web radio, interactive gaming and SSH. We performed subsequent tries using different sets of parameters and both training and classification options. This paper shows how we collected accurate traffic data, presents arguments used in classification process, introduces the C5.0 classifier and its options, and finally evaluates and compares the obtained results.
机译:监视高速Internet基础结构中的网络性能是一项艰巨的任务,因为给定质量级别的要求取决于服务。因此,多跳网络中的骨干QoS监视和分析需要有关形成当前网络流量的应用程序类型的知识。为了克服现有流量分类方法的弊端,提出了使用C5.0机器学习算法(MLA)的方法。基于从志愿者那里获得的统计交通信息和C5.0算法,我们构建了一个增强的分类器,该分类器被证明能够区分测试集中的76,632–1,622,710未知案例中的7种不同应用,平均准确度为99.3–99.9% 。通过使用我们的系统收集的高质量培训数据,用于培训和分类的一组独特参数,用于识别流向的算法以及C5.0本身,可以实现这种高精度。分类的应用程序包括Skype,FTP,torrent,Web浏览器流量,Web广播,交互式游戏和SSH。我们使用不同的参数集以及训练和分类选项进行了后续尝试。本文说明了我们如何收集准确的流量数据,介绍了分类过程中使用的参数,介绍了C5.0分类器及其选项,最后评估并比较了获得的结果。

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