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Machine learning algorithms for accurate flow-based network traffic classification: Evaluation and comparison

机译:用于基于流量的准确网络流量分类的机器学习算法:评估和比较

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摘要

The task of network management and monitoring relies on an accurate characterization of network traffic generated by different applications and network protocols. We employ three supervised machine learning (ML) algorithms, Bayesian Networks, Decision Trees and Multilayer Perceptrons for the flow-based classification of six different types of Internet traffic including peer-to-peer (P2P) and content delivery (Akamai) traffic. The dependency of the traffic classification performance on the amount and composition of training data is investigated followed by experiments that show that ML algorithms such as Bayesian Networks and Decision Trees are suitable for Internet traffic flow classification at a high speed, and prove to be robust with respect to applications that dynamically change their source ports. Finally, the importance of correctly classified training instances is highlighted by an experiment that is conducted with wrongly labeled training data.
机译:网络管理和监视的任务依赖于由不同应用程序和网络协议生成的网络流量的准确表征。我们采用三种有监督的机器学习(ML)算法,贝叶斯网络,决策树和多层感知器对六种不同类型的Internet通信(包括对等(P2P)和内容交付(Akamai)通信)进行基于流的分类。研究了流量分类性能对训练数据的数量和组成的依赖性,然后进行了实验,这些实验表明ML算法(例如贝叶斯网络和决策树)适用于高速的Internet流量分类,并证明具有鲁棒性。关于动态更改其源端口的应用程序。最后,正确分类训练实例的重要性通过使用错误标记的训练数据进行的实验得到了强调。

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