Modeling web quality-of-experience on cellular networks

A. Balachandran, V. Aggarwal, Emir Halepovic, Jeffrey Pang, S. Seshan, Shobha Venkataraman, He Yan
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引用次数: 117

Abstract

Recent studies have shown that web browsing is one of the most prominent cellular applications. It is therefore important for cellular network operators to understand how radio network characteristics (such as signal strength, handovers, load, etc.) influence users' web browsing Quality-of-Experience (web QoE). Understanding the relationship between web QoE and network characteristics is a pre-requisite for cellular network operators to detect when and where degraded network conditions actually impact web QoE. Unfortunately, cellular network operators do not have access to detailed server-side or client-side logs to directly measure web QoE metrics, such as abandonment rate and session length. In this paper, we first devise a machine-learning-based mechanism to infer web QoE metrics from network traces accurately. We then present a large-scale study characterizing the impact of network characteristics on web QoE using a month-long anonymized dataset collected from a major cellular network provider. Our results show that improving signal-to-noise ratio, decreasing load and reducing handovers can improve user experience. We find that web QoE is very sensitive to inter-radio-access-technology (IRAT) handovers. We further find that higher radio data link rate does not necessarily lead to better web QoE. Since many network characteristics are interrelated, we also use machine learning to accurately model the influence of radio network characteristics on user experience metrics. This model can be used by cellular network operators to prioritize the improvement of network factors that most influence web QoE.
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在蜂窝网络上建立web体验质量模型
最近的研究表明,网页浏览是最突出的蜂窝应用之一。因此,对于蜂窝网络运营商来说,了解无线网络特性(如信号强度、切换、负载等)如何影响用户的网页浏览体验质量(web QoE)是非常重要的。了解web QoE和网络特性之间的关系是蜂窝网络运营商检测网络退化条件何时何地实际影响web QoE的先决条件。不幸的是,蜂窝网络运营商无法访问详细的服务器端或客户端日志来直接测量web QoE指标,如放弃率和会话长度。在本文中,我们首先设计了一种基于机器学习的机制,以准确地从网络轨迹推断web QoE指标。然后,我们提出了一项大规模研究,利用从主要蜂窝网络提供商收集的长达一个月的匿名数据集,描述了网络特征对web QoE的影响。我们的研究结果表明,提高信噪比,降低负载和减少切换可以改善用户体验。我们发现web QoE对无线接入技术(IRAT)切换非常敏感。我们进一步发现,更高的无线电数据链路速率并不一定导致更好的网络QoE。由于许多网络特征是相互关联的,我们也使用机器学习来准确地模拟无线网络特征对用户体验指标的影响。该模型可用于蜂窝网络运营商优先考虑最影响web QoE的网络因素的改进。
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