基于序列特征的GRU网络流量分类

Chenyi Qiang, Li Ping, Amin Ul Haq, Liu He, Abdul Haq
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引用次数: 1

摘要

网络流分类是提供网络安全、网络监控和服务质量(QoS)等各种网络服务的基础。因此,该领域一直是学术界和产业界研究的热点。研究人员表示,通过适当的数据处理,可以通过机器学习对网络流进行分类。因此,有必要探索合适的处理方法和模型结构。据我们所知,基于顺序特征学习的分类方法很少被讨论,因此本文提出了一种基于网络流量顺序特征的分类模型。与以往基于机器学习的分类方法不同,基于GRU网络的分类方法侧重于挖掘网络流量的序列特征信息。这种基于深度学习的分类模型非常适合大数据处理。在评价方面,我们使用USTC-TFC2016数据集,与基本模型和之前的方法进行对比,实验结果表明:(1)序列模型对网络流量分类的有效性。(2)序列模型具有较好的精度和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Net Traffic Classification Based on GRU Network Using Sequential Features
Net traffic classification is the basis for providing various network services such as network security, network monitoring and Quality of Service (QoS) etc. Therefore, this field has always been a hot spot in academic and industrial research. Through proper data processing, the researcher said that it is possible to classify network flows through machine learning. Therefore, it is necessary to explore suitable processing methods and model structures. To our best knowledge, classification methods based on sequential feature learning are rarely discussed, so this paper proposes a model based on sequential features of net traffic. Different from the previous classification methods based on machine learning, the classification method based on GRU network focuses on exploring the sequential feature information of network traffic. This classification model based on deep learning is very suitable for big data processing. In terms of evaluation, we used the USTC-TFC2016 data set, compared with the basic model and previous methods, the experimental results show that: (1) the effectiveness of the sequential model for net traffic classification. (2) The sequential model has good performance in both accuracy and stability.
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