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A novel self-learning architecture for p2p traffic classification in high speed networks

机译:一种用于高速网络中p2p流量分类的新型自学习架构

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摘要

The popularity of a new generation of smart peer-to-peer applications has resulted in several new challenges for accurately classifying network traffic. In this paper, we propose a novel two-stage p2p traffic classifier, called Self-Learning Traffic Classifier (SLTC), that can accurately identify p2p traffic in high speed networks. The first stage classifies p2p traffic from the rest of the network traffic, and the second stage automatically extracts application payload signatures to accurately identify the p2p application that generated the p2p flow. For the first stage, we propose a fast, light-weight algorithm called Time Correlation Metric (TCM), that exploits the temporal correlation of flows to clearly separate peer-to-peer (p2p) traffic from the rest of the traffic. Using real network traces from tier-1 ISPs that are located in different continents, we show that the detection rate of TCM is consistently above 95% while always keeping the false positives at 0%. For the second stage, we use the LASER signature extraction algorithm [20] to accurately identify signatures of several known and unknown p2p protocols with very small false positive rate (<1%). Using our prototype on tier-1 ISP traces, we demonstrate that SLTC automatically learns signatures for more than 95% of both known and unknown traffic within 3 min.
机译:新一代智能对等应用程序的普及为准确分类网络流量带来了一些新挑战。在本文中,我们提出了一种新颖的两阶段p2p流量分类器,称为自学习流量分类器(SLTC),它可以准确识别高速网络中的p2p流量。第一阶段将其余网络流量中的p2p通信进行分类,第二阶段自动提取应用程序有效负载签名,以准确识别生成p2p流的p2p应用程序。对于第一阶段,我们提出了一种快速,轻量级的算法,称为时间相关度量(TCM),该算法利用流的时间相关性将对等(p2p)流量与其余流量清楚地区分开。使用来自不同大陆的1级ISP的真实网络跟踪,我们显示TCM的检测率始终高于95%,同时始终将误报率保持在0%。在第二阶段,我们使用LASER签名提取算法[20]以非常小的假阳性率(<1%)准确识别几种已知和未知的p2p协议的签名。使用我们在1级ISP跟踪上的原型,我们证明SLTC在3分钟内自动为超过95%的已知和未知流量学习签名。

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