网络数据分类使用图分区

Sahan L. Maldeniya, Ajantha S Atukorale, Wathsala W. Vithanage
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引用次数: 2

摘要

网络分类在许多领域都有应用。从维护网络质量到分析网络用户的个人特征,这些都是不同的。然而,现有的网络数据分类方法还不能满足人们的期望。这是因为网络是动态的,容易快速变化,而用于分类的方法要么是使用示例训练的,要么是使用启发式定义的。万维网本身是一个大图表,它是由大量的url通过超链接相互连接而成的。因此,在本研究中,我们利用了WWW的这种图性质,并运用图论对网络进行划分,对网络数据进行分类。我们使用k-means算法对网络流量进行分类得到的结果来评估所提出方法的性能和可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network data classification using graph partition
Application of network classification can be seen in many domains. These varies from preserving the quality of network to analyzing personal characteristics of network users. However current methods applied for network data classification does not meet the expectations. This is because networks are dynamic which are prone to rapid changes, while methods used for the classification has been either trained using examples or defined using heuristics. World Wide Web itself is a big graph which is made out of number of URLS connecting each other via hyper-links. Hence in this work we have used this graph nature of WWW and applied graph theories to partition the network to classify network data. We have used results obtained by classifying the network traffic using k-means algorithm to evaluate the performance and usability of proposed method.
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