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Traffic Classification Using Compact Protocol Fingerprint

机译:使用紧凑协议指纹的流量分类

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摘要

Traffic classification using statistical characteristics (or fingerprints) of IP flows such as packet size and packet inter-arrival time has showed its preliminary success in sense 01 accuracy and simplicity. However, the need of large memory to store the fingerprints makes it impractical to deploy such method on backbone networks where a highspeed memory is needed to catch up with the high packet rate,and a large high-speed memory is always expensive. In this paper we apply the Distributional Clustering (DC) algorithm proposed by the pattern recognition community to compress the protocol fingerprints.We also presented a new algorithm named Distributional Quantification (DQ) that has lower overhead than DC.We evaluated the accuracy of classification using compact protocol fingerprints under various compression ratios through experiments. Our results show that DC outperforms DQ in terms of classification accuracy. The experimental results indicate that a compression ratio of 9 can be achieved with no more than 10% loss in classification accuracy.
机译:使用IP流的统计特征(或指纹)的流量分类,如分组大小和分组间隔时间,术语01精度和简单性显示其初步成功。但是,需要存储指纹的大存储器使得在需要高速存储器赶上高数据包速率时部署在骨干网络上的这种方法进行了不切实际,并且大的高速存储器总是昂贵的。在本文中,我们应用了模式识别界提出的分配聚类(DC)算法来压缩协议指纹。我们还介绍了一个名为分布量化(DQ)的新算法,该算法具有比DC的开销较低的分布量化(DQ)。我们评估了使用的分类准确性通过实验在各种压缩比下紧凑的协议指纹。我们的结果表明,在分类准确性方面,DC优于DQ。实验结果表明,压缩比率为9可以在不超过10%的分类精度损失中实现。

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