网络流量分类中一种有效的代价敏感卷积神经网络

M. S. Sharif, Mina Moein
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引用次数: 3

摘要

随着技术的进步,计算机网络流量的数量和密度急剧增加,这导致了各种新协议的出现。分析大型商业网络中的海量数据对于网络所有者来说已经变得非常重要。由于大多数开发的应用程序都需要保证网络服务,而一些传统应用程序在没有特定服务级别的情况下也可以很好地工作。因此,未来互联网流量的性能要求将会提高到更高的水平。对计算机网络性能的压力越来越大,需要解决几个问题,例如维护新服务体系结构的可伸缩性,建立路由控制协议,以及将信息分发到已识别的流量流。主要关注的是流量检测和流量检测机制,以帮助建立流量控制策略。针对类不平衡问题对低频流量数据检测的影响,本文提出了一种代价敏感的加密流量分类深度学习方法。所开发的模型可以获得高水平的性能,特别是对于低频流量数据。该方法优于其他流量分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Cost-Sensitive Convolutional Neural Network for Network Traffic Classification
The volume, and density of computer network traffic are increasing dramatically with the technology advancements, which has led to the emergence of various new protocols. Analyzing the huge data in large business networks has become important for the owners of those networks. As the majority of the developed applications need to guarantee the network services, while some traditional applications may work well enough without a specific service level. Therefore, the performance requirements of future internet traffic will increase to a higher level. Increasing pressure on the performance of computer networks requires addressing several issues, such as maintaining the scalability of new service architectures, establishing control protocols for routing, and distributing information to identified traffic streams. The main concern is flow detection and traffic detection mechanisms to help establish traffic control policies. A cost-sensitive deep learning approach for encrypted traffic classification has been proposed in this research, to confront the effect of the class imbalance problem on the low-frequency traffic data detection. The developed model can attain a high level of performance, particularly for low-frequency traffic data. It outperformed the other traffic classification methods.
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