FaRNet: fast recognition of high multi-dimensional network traffic patterns

Ignasi Paredes-Oliva, P. Barlet-Ros, X. Dimitropoulos
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引用次数: 3

Abstract

Extracting knowledge from big network traffic data is a matter of foremost importance for multiple purposes ranging from trend analysis or network troubleshooting to capacity planning or traffic classification. An extremely useful approach to profile traffic is to extract and display to a network administrator the multi-dimensional hierarchical heavy hitters (HHHs) of a dataset. However, existing schemes for computing HHHs have several limitations: 1) they require significant computational overhead; 2) they do not scale to high dimensional data; and 3) they are not easily extensible. In this paper, we introduce a fundamentally new approach for extracting HHHs based on generalized frequent item-set mining (FIM), which allows to process traffic data much more efficiently and scales to much higher dimensional data than present schemes. Based on generalized FIM, we build and evaluate a traffic profiling system we call FaRNet. Our comparison with AutoFocus, which is the most related tool of similar nature, shows that FaRNet is up to three orders of magnitude faster.
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FaRNet:快速识别高多维网络流量模式
从大型网络流量数据中提取知识对于从趋势分析或网络故障排除到容量规划或流量分类等多种用途至关重要。分析流量的一个非常有用的方法是提取并向网络管理员显示数据集的多维分层重击者(HHHs)。然而,现有的HHHs计算方案有几个局限性:1)它们需要大量的计算开销;2)它们不能扩展到高维数据;3)它们不容易扩展。在本文中,我们介绍了一种基于广义频繁项集挖掘(FIM)的提取HHHs的全新方法,该方法可以比现有方案更有效地处理交通数据并扩展到更高维度的数据。基于广义FIM,我们构建并评估了一个称为FaRNet的流量分析系统。我们与AutoFocus(最相关的类似工具)的比较表明,FaRNet的速度快了三个数量级。
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