首页> 外文会议>International conference on electronic measurement instruments;ICEMI' 2009 >Online Automatic Traffic Classification Architecture in Access Network
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Online Automatic Traffic Classification Architecture in Access Network

机译:接入网中的在线流量自动分类体系结构

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Recently traffic classifications based on Statistics methods and Machine Learning techniques have attracted a great deal of interest. Some challenging issues for these methods are that most of them need prior analysis to detect traffic applications and training data sets to generate classification model offline; some require a high amount computation and memory resource. These are infeasible to cope with the fast growing number of new applications and online traffic classifications. We propose an online automatic traffic classification architecture using unsupervised machine learning technique, in which flows are automatically clustered based on sub-flow statistical features instead of full flows. We select Best-first features algorithm to find an optimal feature-sets which is suited for access network, then map the traffic flows to applications based on maximized probabilities applications in the clusters. The experiment results demonstrate the efficiency and capability of the proposed automated classification architecture.
机译:最近,基于统计方法和机器学习技术的流量分类引起了极大的兴趣。这些方法面临的挑战性问题是,大多数方法需要事先进行分析以检测交通应用并训练数据集以离线生成分类模型。有些需要大量的计算和内存资源。这些是无法应付快速增长的新应用程序和在线流量分类的。我们提出一种使用无监督机器学习技术的在线自动流量分类体系结构,其中流是基于子流统计特征而不是全部流自动聚类的。我们选择最佳优先特征算法,以找到适合接入网络的最佳特征集,然后根据群集中最大概率的应用程序将流量映射到应用程序。实验结果证明了所提出的自动分类架构的效率和能力。

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