识别由WebRTC通信产生的流量

N. Ajdinović, Semina Nurkić, Jasmina Baraković Husić, Sabina Baraković
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引用次数: 0

摘要

网络流量识别是网络运营商区分和优先处理流量的基本条件,从保证服务质量(QoS)到监控安全,以及监控和检测异常等多种目的。Web实时通信(Web Real-Time Communication, WebRTC)是一个开源项目,它支持浏览器之间的实时音频、视频和文本通信。由于WebRTC不包含任何基于语义的流量识别特征模式,本文基于统计特征和Weka工具中机器学习的使用,提出了WebRTC音频和视频通信过程中产生的流量识别模型。模型开发使用了五种分类算法,如朴素贝叶斯、J48、随机森林、REP树和贝叶斯网络。结果表明,J48和BayesNet在webbrtc流量识别实验案例中表现最好。未来的工作将集中在使用足够大的数据集对各种机器学习算法进行比较,以提高结果的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of traffic generated by WebRTC communication
Network traffic recognition serves as a basic condition for network operators to differentiate and prioritize traffic for a number of purposes, from guaranteeing the Quality of Service (QoS), to monitoring safety, as well as monitoring and detecting anomalies. Web Real-Time Communication (WebRTC) is an open-source project that enables real-time audio, video, and text communication among browsers. Since WebRTC does not include any characteristic pattern for semantically based traffic recognition, this paper proposes models for recognizing traffic generated during WebRTC audio and video communication based on statistical characteristics and usage of machine learning in Weka tool. Five classification algorithms have been used for model development, such as Naive Bayes, J48, Random Forest, REP tree, and Bayes Net. The results show that J48 and BayesNet have the best performances in this experimental case of WebRTC traffic recognition. Future work will be focused on comparison of a wide range of machine learning algorithms using a large enough dataset to improve the significance of the results.
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