使用机器学习的基于流量的P2P网络流量分类

S. Tapaswi, Arpit Gupta
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引用次数: 8

摘要

随着每天在市场上推出新的和新的服务,互联网正在迅速发展。这些网络协议和应用产生的网络流量需要进行分类,这是网络管理的一项重要任务。其中,p2p占有最大的带宽份额。这种对带宽的巨大需求增加了网络流量工程的重要性。因此,为了满足当前的需求并开发有助于提高网络性能的新架构,需要对网络流量特性有一个广泛的了解。基于流的方法利用互联网上流的特征对p2p和非p2p流量进行分类。本文使用Naïve贝叶斯估计器将流量分为p2p和非p2p两类。我们的研究结果表明,在正确的特征集和良好的训练数据的情况下,使用最简单的Naïve贝叶斯估计器可以达到很高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flow-Based P2P Network Traffic Classification Using Machine Learning
With the introduction of new and new services in the market every day, the internet is growing rapidly. The network traffic generated by these network protocols and applications needs to be categorised which is an important task of network management. Among these, p2p has the largest share of the bandwidth. This great demand in the bandwidth has increased the importance of network traffic engineering. So, in order to meet the current demand and develop new architectures which help in improving the network performance, a broad understanding of the network traffic properties is required. The flow based methods classify p2p and non-p2p traffic using the characteristics of flows on the internet. In this paper, Naïve Bayes estimator is used to categorize the traffic into p2p and non-p2p. Our results show that with the right set of features and good training data, high level of accuracy is achievable with the simplest of Naïve Bayes estimator.
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