基于机器学习的自适应视频流下一个HTTP请求到达时间预测

Andrea Pimpinella, A. Redondi, Frank Loh, Michael Seufert
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引用次数: 3

摘要

持续监测网络活动,主动发现可能出现的问题,防止用户QoE下降,是移动无线电和家庭网络运营商的主要关注点。考虑到视频流应用程序,它产生了整个互联网流量的大部分,监控从视频客户端到视频服务器的块请求是特别有趣的,因为它们不仅表明下载爆发即将来临,而且它们的类型(例如,音频或视频块的请求)和频率也允许估计哪些数据和多少数据将被下载到客户端。在这项工作中,我们提出了一种基于机器学习的视频流流量监控架构,该架构能够i)预测视频客户端的下一个上行请求何时发出,ii)对下一个上行请求的类型进行分类。我们在超过900个HTTP自适应流会话和15,000个请求-响应交换的数据集上评估系统性能,其中下一个请求到达的预测器和请求类型分类器都以在线方式从加密流量中提取轻量级特征,无论是在上行还是下行方向的流量。结果表明:1)系统能够以95%以上的准确率对a HAS上行请求类型进行分类;2)管道请求类型分类和下一个请求到达时间的预测提高了最终的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine-Learning Based Prediction of Next HTTP Request Arrival Time in Adaptive Video Streaming
Continuously monitoring the network activity to proactively recognise possible problems and prevent users QoE degradation is a major concern for network operators, for both mobile radio and home networks. Considering video streaming applications, which generate the majority of overall Internet traffic, monitoring the chunk requests from the video client to the video server is of particular interest, as they not only indicate that a download burst is imminent, but their type (e.g., request of an audio or video chunk) and frequency also allow to estimate which and how much data will be downloaded to the client. In this work, we propose a machine-learning based video streaming traffic monitoring architecture able to i) predict when next uplink request will be issued by the video client and ii) classify the type of next uplink request. We evaluate the system performance on a dataset of more than 900 HTTP adaptive streaming sessions and 15,000 request-response exchanges, where both the predictor of the next request arrival and the request type classifier are fed with lightweight features extracted from encrypted traffic in an online fashion, both in the uplink and downlink directions of the traffic. Results show that i) the system is able to classify the type of a HAS uplink requests with an accuracy greater than 95 % and ii) pipe-lining request type classification and prediction of next request arrival time improves the final prediction performance.
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