From QoS Distributions to QoE Distributions: a System's Perspective

T. Hossfeld, P. Heegaard, M. Varela, Lea Skorin-Kapov, M. Fiedler
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引用次数: 10

Abstract

In the context of QoE management, network and service providers commonly rely on models that map system QoS conditions (e.g., system response time, paket loss, etc.) to estimated end user QoE values. Observable QoS conditions in the system may be assumed to follow a certain distribution, meaning that different end users will experience different conditions. On the other hand, drawing from the results of subjective user studies, we know that user diversity leads to distributions of user scores for any given test conditions (in this case referring to the QoS parameters of interest). Our previous studies have shown that to correctly derive various QoE metrics (e.g., Mean Opinion Score (MOS), quantiles, probability of users rating “good or better”, etc.) in a system under given conditions, there is a need to consider rating distributions obtained from user studies, which are often times not available. In this paper we extend these findings to show how to approximate user rating distributions given a QoS-to-MOS mapping function and second order statistics. Such a user rating distribution may then be combined with a QoS distribution observed in a system to finally derive corresponding distributions of QoE scores. We provide two examples to illustrate this process: 1) analytical results using a Web QoE model relating waiting times to QoE, and 2) numerical results using measurements relating packet losses to video stall pattern, which are in turn mapped to QoE estimates.
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从QoS分布到QoE分布:一个系统的视角
在QoE管理的上下文中,网络和服务提供商通常依赖于将系统QoS条件(例如,系统响应时间、包丢失等)映射到估计的最终用户QoE值的模型。可以假设系统中可观察的QoS条件遵循一定的分布,这意味着不同的最终用户将体验到不同的条件。另一方面,根据主观用户研究的结果,我们知道用户多样性会导致任何给定测试条件下用户分数的分布(在这种情况下指的是感兴趣的QoS参数)。我们之前的研究表明,要在给定条件下正确地推导出系统中的各种QoE指标(例如,平均意见得分(MOS)、分位数、用户评分为“好或更好”的概率等),需要考虑从用户研究中获得的评分分布,而这些分布通常是不可用的。在本文中,我们扩展了这些发现,展示了如何在给定qos到mos映射函数和二阶统计量的情况下近似用户评级分布。然后可以将这样的用户评分分布与系统中观察到的QoS分布相结合,最终得出相应的QoE分数分布。我们提供了两个例子来说明这个过程:1)使用Web QoE模型将等待时间与QoE联系起来的分析结果,以及2)使用将数据包丢失与视频失速模式联系起来的测量结果,这些结果反过来映射到QoE估计。
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