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Comparison of Internet Traffic Identification on Machine Learning Methods

机译:互联网交通识别对机器学习方法的比较

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Traffic classification is the essential part in computer network. It can identify the traffic application so as to better manage the network, filter the insecure network flows and provide better network services. However, traditional traffic identification methods cannot work well when encounter opaque packets or more complex flows. Machine learning methods become the most efficient way to solve the problems existed in traditional ways, mainly including supervised learning and unsupervised learning. In this paper, two classic methods in supervised and unsupervised learning ways are applied to achieve the identification of abnormal traffic based on flow-level features. Besides, the comparison of training time, prediction time and the accuracy are given, which helps deep understand machine methods for traffic identification and design more efficient traffic identification solutions.
机译:流量分类是计算机网络的重要组成部分。它可以识别流量应用程序,以便更好地管理网络,过滤不安全的网络流并提供更好的网络服务。但是,当遇到不透明的数据包或更复杂的流量时,传统的交通识别方法无法正常工作。机器学习方法成为解决传统方式存在的问题的最有效方法,主要包括监督学习和无监督的学习。在本文中,应用了监督和无监督学习方式的两种经典方法,以实现基于流量级别特征的异常流量的识别。此外,给出了训练时间,预测时间和准确性的比较,有助于深入理解流量识别和设计更有效的交通识别解决方案。

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