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A Traffic Classification Algorithm Based on Neural Network

机译:基于神经网络的流量分类算法

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摘要

A number of network activities can benefit from accurate traffic classification and identification. However, the current classification methods, either port-based or payload-based, are becoming ineffective as many P2P applications use dynamic port numbers, masquerading techniques, and encryption to avoid detection. This paper discusses and explores a new method that is based on supervised machine learning mechanisms, which eliminate the inherent limitations of port-based or payload-based methods. A series of experiments show that, combined with a fast correlation-based feature selection filter, better performance and more accurate identification results can be obtained using the neural network method. Due to all the favorable features and satisfactory performance, the proposed methods are promising for internet traffic classification.
机译:准确的流量分类和识别可以使许多网络活动受益。但是,由于许多P2P应用程序使用动态端口号,伪装技术和加密来避免检测,因此当前的分类方法(基于端口或基于有效负载的方法)变得无效。本文讨论并探索了一种基于监督机器学习机制的新方法,该方法消除了基于端口的方法或基于有效负载的方法的固有局限性。一系列实验表明,结合基于快速相关性的特征选择滤波器,可以使用神经网络方法获得更好的性能和更准确的识别结果。由于所有的有利特征和令人满意的性能,所提出的方法对于互联网流量分类是有希望的。

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