并不是所有的网页生来都是相同的内容定制学习Web QoE推理

P. Casas, Sarah Wassermann, Nikolas Wehner, Michael Seufert, T. Hossfeld
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引用次数: 4

摘要

网络体验质量(QoE)监控是互联网服务提供商(isp)的一项关键任务,特别是由于客户体验在客户流失管理中起着关键作用。以前,我们已经从ISP的角度解决了Web QoE推断的问题,依赖于加密网络流量的被动测量和机器学习模型。在本文中,我们利用嵌入在网页中的内容的广泛异质性,依靠web内容学习模型定制来提高web QoE推理的最新性能。通过无监督学习方法对互联网上最受欢迎的500个网页进行分析,我们发现不同的网页内容类实现了显著不同的web QoE推理性能。我们使用众所周知的速度指数(SI)指标作为Web QoE的代理,分别为每个类训练监督学习推理模型。对顶级热门网站的大型Web QoE测量语料库的实证评估表明,与以前的单模型方法相比,我们的组合内容定制方法将SI的推理性能提高了近30%,将平均意见得分方面的QoE推理误差降低了40%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Not all Web Pages are Born the Same Content Tailored Learning for Web QoE Inference
Web Quality of Experience (QoE) monitoring is a critical task for Internet Service Providers (ISPs), especially due to the key role played by customer experience in churn management. Previously, we have tackled the problem of Web QoE inference from the ISP perspective, relying on passive measurement of encrypted network traffic and machine learning models. In this paper, we exploit the broad heterogeneity of contents embedded in web pages to improve the state of the art performance in Web QoE inference, relying on web-content learning model tailoring. By analyzing the top-500 most popular web pages of the Internet through unsupervised learning, we discover different web page content classes which realize sig-nificantly different Web QoE inference performance. We train supervised learning inference models separately for each of these classes, using the well-known Speed Index (SI) metric as proxy to Web QoE. Empirical evaluations on a large corpus of Web QoE measurements for top popular websites demonstrate that our combined content-tailored approach improves the inference performance of the SI by almost 30 % with respect to previous single-model approaches, reducing the QoE inference error in terms of mean opinion scores by more than 40%.
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