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Dynamic application flow cluster based on traffic behavior distance

机译:基于交通行为距离的动态应用流集群

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New network applications as well as security threats are emerging in an endless stream. However, existing methods cannot efficiently identify and classify the new-born application traffic, which makes it difficult for network administrators to learn about the status of current network. This paper presents a method to dynamically cluster application flows. In this method, an unsupervised classification algorithm, X-means is used to dynamically analyze network traffic, and cluster flows with similar behavior to one aggregation, which may be generated by the same application or malware. In this paper, we propose the concept of traffic behavior distance which is based on Euclidean Distance, in order to compute the similarity of flows. Based on the generated traffic clusters, administrators can easily learn about what applications are running and whether there's a new application or anomaly. The results of the experiment show good performance of our proposed method.
机译:新的网络应用以及安全威胁层出不穷。但是,现有方法无法有效地识别和分类新生的应用程序流量,这使网络管理员难以了解当前网络的状态。本文提出了一种动态集群应用程序流的方法。在这种方法中,使用一种无​​监督分类算法X-means来动态分析网络流量,并使用与一种聚合类似的行为来群集流,该聚合可能是由同一应用程序或恶意软件生成的。在本文中,我们提出了基于欧几里得距离的交通行为距离的概念,以计算流量的相似性。基于生成的流量群集,管理员可以轻松地了解正在运行的应用程序以及是否存在新的应用程序或异常情况。实验结果表明,该方法具有良好的性能。

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