基于机器学习方法的匿名通信网络流量动态分类

Lalitha Chinmayee, M. Hurali, A. Patil
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引用次数: 0

摘要

匿名通信网络(acn)为互联网用户提供隐私和匿名性。acn中的流量分类是一个新兴的研究领域,因为它在网络安全、服务质量提供以及acn的研究和开发等网络管理任务中具有重要意义。在已知的可用流量分类方法中,基于机器学习(ML)的方法已被证明优于基于端口和基于有效负载的方法。利用公开发布的Anon17数据集,本文提出了一种基于ml的acn流量分类技术。该技术采用动态分类技术,即利用流量的前几个数据包尽早对流量进行分类。本文提出的动态分类技术在acn中优于目前的技术,具有更高的分类精度,F度量,并且需要更少的流量流数据包来实现最高可能的性能指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the fly classification of traffic in Anonymous Communication Networks using a Machine Learning approach
Anonymous Communication Networks (ACNs) provide privacy and anonymity to the users of the Internet. Traffic classification in ACNs is an emerging area of research due to its benefits in network management tasks like network security, Quality of Service provisioning, and in Research and Development of ACNs. Out of the well-known traffic classification approaches available, Machine Learning (ML) based approach has proven to be advantageous over the port-based and payload based approach. Using a publicly released Anon17 dataset, this work presents an ML-based traffic classification technique in ACNs. The proposed technique performs on the fly classification, which involves the classification of traffic as early as possible using the first few packets of traffic flow. The proposed on the fly classification technique outperforms the state of the art technique in ACNs with increased classification accuracy, F measure and requires less number of packets in traffic flow to achieve highest possible performance metrics.
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