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In-Network YouTube Performance Estimation in Light of End User Playback-Related Interactions

机译:鉴于最终用户播放相关交互的网络中网络youTube性能估算

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Recent research efforts have addressed the challenge of estimating HTTP adaptive video streaming Quality of Experience (QoE) and Key Performance Indicators (KPIs) from a network provider perspective, commonly relying on machine learning models and the analysis of features extracted solely from encrypted network traffic. This challenge is further complicated in light of realistic end user playback-related interactions, such as video skipping, pausing, and seeking. Given that user interactions impact traffic characteristics, such scenarios need to be considered when training QoE/KPI estimation models. We train models on datasets with and without user interactions (focusing on YouTube as a case study), with the aim to investigate the impact of user interaction on classification accuracy. Results motivate the need to systematically include data corresponding to various interaction scenarios when training QoE/KPI classification models that would be applicable in real-world scenarios.
机译:最近的研究努力解决了从网络提供商的角度估算HTTP自适应视频流质量(QoE)和关键性能指标(KPI)的挑战,通常依赖于机器学习模型,并且仅从加密网络流量提取的功能分析。根据现实的最终用户播放相关的交互,这种挑战进一步复杂化,例如视频跳过,暂停和寻求。鉴于用户互动影响流量特征,在培训QoE / KPI估计模型时需要考虑这种情况。我们在具有和没有用户交互的数据集上培训模型(专注于YouTube作为案例研究),旨在调查用户交互对分类准确性的影响。结果激励有必要系统地包括与各种交互方案对应的数据,当培训QoE / KPI分类模型时,这些模型将适用于现实世界的情景。

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