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首页> 外文期刊>Journal of computer systems, networks, and communications >Using Burstiness for Network Applications Classification
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Using Burstiness for Network Applications Classification

机译:利用网络应用分类的突发

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Network traffic classification is a vital task for service operators, network engineers, and security specialists to manage network traffic, design networks, and detect threats. Identifying the type/name of applications that generate traffic is a challenging task as encrypting traffic becomes the norm for Internet communication. Therefore, relying on conventional techniques such as deep packet inspection (DPI) or port numbers is not efficient anymore. This paper proposes a novel flow statistical-based set of features that may be used for classifying applications by leveraging machine learning algorithms to yield high accuracy in identifying the type of applications that generate the traffic. The proposed features compute different timings between packets and flows. This work utilises tcptrace to extract features based on traffic burstiness and periods of inactivity (idle time) for the analysed traffic, followed by the C5.0 algorithm for determining the applications that generated it. The evaluation tests performed on a set of real, uncontrolled traffic, indicated that the method has an accuracy of 79% in identifying the correct network application.
机译:网络流量分类是服务运营商,网络工程师和安全专家来管理网络流量,设计网络和检测威胁的重要任务。识别生成流量的应用程序的类型/名称是一个具有挑战性的任务,因为加密流量成为互联网通信的标准。因此,依赖于传统技术,例如深度分组检查(DPI)或端口号不再有效。本文提出了一种新颖的基于统计的特征集,可用于通过利用机器学习算法来对应用程序进行分类,从而在识别生成流量的应用类型时产生高精度。所提出的功能计算数据包和流之间的不同时间。此工作利用TCPTrace基于流量突发和不活动时间(空闲时间)提取特征,然后是分析的流量,然后是C5.0算法确定生成的应用程序。在一组真实的不受控制的流量上执行的评估测试表明该方法具有79&#x0025的准确性;在识别正确的网络应用程序时。

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