Should I Stay or Should I Go

Maria Plakia, Evripides Tzamousis, Thomais Asvestopoulou, Giorgos Pantermakis, Nick Filippakis, H. Schulzrinne, Yana Kane-Esrig, M. Papadopouli
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引用次数: 8

Abstract

To improve the user engagement, especially under moderate to high traffic demand, it is important to understand the impact of the network and application QoS on user experience. This article comparatively evaluates the impact of impairments, with emphasis on rebufferings, startup delay, and bitrate changes, and their intensity and temporal dynamics, on user engagement in the context of video streaming. The analysis employed two large YouTube datasets. To characterize the user engagement and the impact of impairments, several new metrics were defined. We assessed whether or not there is a statistically significant relationship between different types of impairments and user engagement metrics, taking into account not only the characteristics of the impairments but also the covariates of the session (e.g., video duration, mean data rate). After observing the relationships across the entire dataset, we tested whether these relationships also persist under specific conditions with respect to the covariates. The introduction of several new metrics and of various covariates in the analysis are two innovative aspects of this work. We found that the presence of negative bitrate changes (BR-) is a stronger predictor of abandonment than rebufferrings (RB). Positive bitrate changes (BR+) in low resolution sessions are not well received. High rebufferring ratio has a prominent impact on the video watching percentage. These results can be used to guide the video streaming adaptation as well as suggest which parameters should be varied in controlled field studies.
我该走还是该留
为了提高用户参与度,特别是在中等到高流量需求的情况下,了解网络和应用程序QoS对用户体验的影响非常重要。本文比较评估了视频流环境下的损伤对用户参与度的影响,重点是回绝缓冲、启动延迟和比特率变化,以及它们的强度和时间动态。该分析使用了两个大型YouTube数据集。为了描述用户粘性和损害的影响,我们定义了几个新指标。我们评估了不同类型的损伤与用户粘性指标之间是否存在统计学上的显著关系,不仅考虑了损伤的特征,还考虑了会话的协变量(如视频持续时间、平均数据速率)。在观察了整个数据集的关系之后,我们测试了这些关系是否也在特定条件下相对于协变量持续存在。在分析中引入几个新的度量和各种协变量是这项工作的两个创新方面。我们发现负比特率变化(BR-)的存在比再缓冲(RB)更能预测放弃。低分辨率会话中的正比特率变化(BR+)不受欢迎。高再缓冲率对视频观看率的影响比较突出。这些结果可以用于指导视频流的自适应,并建议在受控的现场研究中应该改变哪些参数。
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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