一种新的网络云流量分类统计自动机

Haiqiang Wang, K. Tseng, Jeng-Shyang Pan
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引用次数: 2

摘要

流量分类在许多网络和云应用程序中是至关重要的,它们从QoS实施、网络监控到安全性和防火墙。近年来,基于深度包检测(DPI)的分类都采用了与已有策略语义精确匹配的方法。但是,如果策略语义发生了变化,那么DPI分类器将不再是一个可行的流分类。提出了一种新的流量分类统计自动机。在流训练过程中对应用进行多个签名标记,达到统计结果后对应用进行分类。在实验中,我们用5个应用程序对所提出的方法进行了评估,证明了我们的思想对于网络和云流量分类是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel statistical automaton for network cloud traffic classification
Traffic classification is crucial in many network and cloud applications, they are from QoS enforcement, network monitoring to security and firewalls. In recent years, all the classification with deep packet inspection (DPI) are using the exact matching with the existing policy semantics. However, if the policy semantics is changed, then the DPI classifier is no longer able to be a workable traffic classification. We proposed a new statistical automaton for the traffic classification. The applications are marked by many multiple signatures during a flow training process, and then it classifies the applications when their statistical results are reached. In the experiment, we evaluate the proposed method with 5 applications which proves our idea is feasible for the network and cloud traffic classification.
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