How are your Apps Doing? QoE Inference and Analysis in Mobile Devices

Nikolas Wehner, Michael Seufert, Joshua Schüler, P. Casas, T. Hossfeld
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引用次数: 2

Abstract

Web browsing has become the most important application of the Internet for the end user. When it comes to mobile devices, web services are mainly accessed through apps. This paper tackles the problem of Web Quality of Experience (QoE) in mobile devices, with a specific focus on apps QoE monitoring and analysis, using in-network (encrypted) traffic measurements. Measuring apps QoE is complex, not only from an instrumentation point of view, but also from the heterogeneity of user interactions which might realize substantially different user experience. To this end, we conduct a feasibility study on four specific and popular Android apps and their corresponding web services. Our test automation framework emulates and measures different user interactions commonly executed during an app session, including the app startup, clicking, scrolling, and searching. The resulting traffic is characterized on different dimensions, and machine learning models are trained to identify web services, apps, and user interactions, and to infer their QoE. The proposed models can correctly identify the specific web service and app in 86% of the cases and accurately estimate the associated QoE with small errors. Our preliminary study represents a first step towards an in-network, web QoE monitoring solution for mobile-device apps.
你的应用运行情况如何?移动设备QoE推理与分析
网页浏览已经成为终端用户使用Internet最重要的应用。在移动设备上,web服务主要是通过应用程序访问的。本文解决了移动设备中的Web体验质量(QoE)问题,特别关注应用程序的QoE监控和分析,使用网络内(加密)流量测量。衡量应用的QoE是很复杂的,不仅从工具的角度来看,而且从用户交互的异质性来看,这可能会实现截然不同的用户体验。为此,我们对四个特定且流行的Android应用程序及其相应的web服务进行了可行性研究。我们的测试自动化框架模拟和测量在应用程序会话期间通常执行的不同用户交互,包括应用程序启动、点击、滚动和搜索。由此产生的流量在不同的维度上被表征,机器学习模型被训练来识别web服务、应用程序和用户交互,并推断它们的QoE。所提出的模型可以在86%的情况下正确识别特定的web服务和应用程序,并准确地估计相关的QoE,误差很小。我们的初步研究是迈向移动设备应用的网络内、网络QoE监控解决方案的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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