On Active Sampling of Controlled Experiments for QoE Modeling

Muhammad Jawad Khokhar, Nawfal Abbassi Saber, Thierry Spetebroot, C. Barakat
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引用次数: 10

Abstract

For internet applications, measuring, modeling and predicting the quality experienced by end users as a function of network conditions is challenging. A common approach for building application specific Quality of Experience (QoE) models is to rely on controlled experimentation. For accurate QoE modeling, this approach can result in a large number of experiments to carry out because of the multiplicity of the network features, their large span (e.g., bandwidth, delay) and the time needed to setup the experiments themselves. However, most often, the space of network features in which experimentations are carried out shows a high degree of uniformity in the training labels of QoE. This uniformity, difficult to predict beforehand, amplifies the training cost with little or no improvement in QoE modeling accuracy. So, in this paper, we aim to exploit this uniformity, and propose a methodology based on active learning, to sample the experimental space intelligently, so that the training cost of experimentation is reduced. We prove the feasibility of our methodology by validating it over a particular case of YouTube streaming, where QoE is modeled both in terms of interruptions and stalling duration.
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QoE建模中控制实验的主动抽样研究
对于互联网应用来说,测量、建模和预测最终用户体验到的质量作为网络条件的函数是具有挑战性的。构建特定于应用程序的体验质量(QoE)模型的一种常用方法是依赖于受控实验。为了精确的QoE建模,由于网络特征的多样性,它们的大跨度(例如,带宽,延迟)和设置实验本身所需的时间,这种方法可能导致进行大量的实验。然而,大多数情况下,进行实验的网络特征空间在QoE的训练标签上表现出高度的均匀性。这种一致性,很难事先预测,增加了训练成本,很少或没有提高QoE建模精度。因此,本文旨在利用这种一致性,提出一种基于主动学习的方法,对实验空间进行智能采样,从而降低实验的训练成本。我们通过对YouTube流媒体的特定案例进行验证来证明我们方法的可行性,其中QoE是根据中断和停滞持续时间建模的。
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