建立网络视频体验质量预测模型

A. Balachandran, V. Sekar, Aditya Akella, S. Seshan, I. Stoica, Hui Zhang
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引用次数: 417

摘要

提高用户体验质量(QoE)对于维持基于广告和订阅的收入模式至关重要,这种模式使互联网视频得以增长。尽管关于视频和QoE测量的文献丰富,但由于传统测量视频质量(如峰值信噪比)和用户体验(如意见评分)的方法的转变,我们对互联网视频QoE的理解有限。这些已经被新的质量指标(如缓冲速率、比特率)和新的以用户体验为中心的用户粘性指标(如观看时间和访问次数)所取代。本文的目标是建立一个网络视频质量质量的预测模型。为此,我们确定了QoE模型的两个关键要求:(1)它必须与可观察到的用户参与联系在一起;(2)它应该是可操作的,以指导实际的系统设计决策。实现这一目标具有挑战性,因为质量指标是相互依赖的,它们与用户粘性指标有着复杂且反直觉的关系,并且有许多外部因素混淆了质量和用户粘性之间的关系(例如,视频类型,用户连接)。为了应对这些挑战,我们提出了一种数据驱动的方法来模拟度量相互依赖性及其与参与度的复杂关系,并提出了一个系统框架来识别和解释混淆因素。我们表明,与strawman方法相比,使用我们提出的模型来选择CDN和比特率的交付基础设施可以在整体用户参与度方面实现20%以上的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a predictive model of quality of experience for internet video
Improving users' quality of experience (QoE) is crucial for sustaining the advertisement and subscription based revenue models that enable the growth of Internet video. Despite the rich literature on video and QoE measurement, our understanding of Internet video QoE is limited because of the shift from traditional methods of measuring video quality (e.g., Peak Signal-to-Noise Ratio) and user experience (e.g., opinion scores). These have been replaced by new quality metrics (e.g., rate of buffering, bitrate) and new engagement centric measures of user experience (e.g., viewing time and number of visits). The goal of this paper is to develop a predictive model of Internet video QoE. To this end, we identify two key requirements for the QoE model: (1) it has to be tied in to observable user engagement and (2) it should be actionable to guide practical system design decisions. Achieving this goal is challenging because the quality metrics are interdependent, they have complex and counter-intuitive relationships to engagement measures, and there are many external factors that confound the relationship between quality and engagement (e.g., type of video, user connectivity). To address these challenges, we present a data-driven approach to model the metric interdependencies and their complex relationships to engagement, and propose a systematic framework to identify and account for the confounding factors. We show that a delivery infrastructure that uses our proposed model to choose CDN and bitrates can achieve more than 20\% improvement in overall user engagement compared to strawman approaches.
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