基于深度学习的多层次互联网流量分类器

O. Salman, I. Elhajj, A. Chehab, A. Kayssi
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引用次数: 19

摘要

在网络领域,连接设备的类型和已开发应用程序的性质都在不断发展。这给网络带来了不同的服务质量(QoS)和安全需求。因此,有必要对互联网流量进行分类,以方便其管理。因此,需要基于需求的细粒度分类,这种分类与流量的网络需求有更好的关系。在本文中,我们应用深度学习对需要不同QoS和安全策略的流量进行分类。我们提出了一个多层次的分类框架,应用一种新的数据表示方法。并将所提出的数据表示方法与已有的数据表示方法进行了比较。实现结果表明,所提出的数据表示模型优于之前的数据表示模型,并承诺允许对不同粒度的流量进行分类。仅使用每个流的前16个数据包的大小、间隔时间、方向和传输协议记录准确率高达95%,该方法可用于在线分类平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-level Internet Traffic Classifier Using Deep Learning
In the network domain, there is a continuous ongoing evolution in the type of connected devices and the nature of developed applications. This presents the network with varying Quality of Service (QoS) and security requirements. Consequently, there is a need to classify Internet traffic to facilitate its management. Thus, a granular classification based on needs is required, one which relates better to the network requirements of the traffic. In this paper, we apply deep learning to classify traffic requiring different QoS and security policies. We propose a multi-level classification framework applying a new data representation method. A comparison between the proposed data representation method and a previous method is presented. The implementation results show that the proposed data representation model outperforms the previous one and promises to permit the classification of the traffic at different granularity. Recording up to 95% accuracy using only the size, interarrival time, direction, transport protocol of the first 16 packets of each flow, our method can be employed in an online classification platform.
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