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Off-line analysis of internet traffic for accurate identification of P2P applications using neural networks

机译:使用神经网络对互联网流量进行离线分析,以准确识别P2P应用程序

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摘要

P2P applications supposedly constitute a substantial proportion of today's Internet traffic. The ability to accurately identify different P2P applications in internet traffic is important to a broad range of network operations including application-specific traffic engineering, capacity planning, resource provisioning, service differentiation, etc. However, current P2P applications use several obfuscation techniques, including dynamic port numbers, port hopping, and encrypted payloads. As P2P applications continue to evolve, robust and effective methods are needed for identification of P2P applications. In this paper, we compare two neural network approaches (Radial Basis Function Network and Multi-Layer Perceptron) that precisely identify the P2P traffic. We find out that RBFN outperforms MLP neural network, but owing to the large time taken for model building, RBF network is found suitable for off-line identification of P2P applications in the internet traffic.
机译:据称,P2P应用程序构成了当今Internet流量的很大一部分。准确识别互联网流量中不同P2P应用程序的能力对于广泛的网络运营至关重要,包括特定于应用程序的流量工程,容量规划,资源供应,服务区分等。但是,当前的P2P应用程序使用多种混淆技术,包括动态端口号,端口跳变和加密的有效负载。随着P2P应用程序的不断发展,需要可靠且有效的方法来识别P2P应用程序。在本文中,我们比较了两种精确识别P2P流量的神经网络方法(径向基函数网络和多层感知器)。我们发现RBFN优于MLP神经网络,但是由于建立模型需要花费大量时间,因此发现RBF网络适合于Internet流量中P2P应用的离线识别。

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