The emerging video applications greatly increase the demand in network bandwidth that is not easy to scale. To provide higher quality of experience (QoE) under limited bandwidth, a recent trend is to leverage the heterogeneity of quality preferences across individual users. Although these efforts have suggested the great potential benefits, service providers still have not deployed them to realize the promised QoE improvement. The missing piece is an automation of online per-user QoE modeling and optimization scheme for new users. Previous efforts either optimize QoE by known per-user QoE models or learn a user's QoE model by offline approaches, such as analysis of video viewing history and in-lab user study. Relying on such offline modeling is problematic, because QoE optimization will start late for collecting enough data to train an unbiased QoE model. In this paper, we propose VidHoc, the first automatic system that jointly personalizes QoE model and optimizes QoE in an online manner for each new user. VidHoc can build per-user QoE models within a small number of video sessions as well as maintain good QoE. We evaluate VidHoc in a pilot deployment to fifteen users for four months with the care of statistical validity. Compared with other baselines, the results show that VidHoc can save 17.3% bandwidth while maintaining the same QoE or improve QoE by 13.9% with the same bandwidth.
翻译:新建的视频应用程序大大增加了网络带宽的需求,这种需求不易推广。为了在有限的带宽下提供更高质量的经验(QoE),最近的趋势是利用个人用户质量偏好的差异性。虽然这些努力表明巨大的潜在好处,但服务供应商仍然没有部署它们以实现承诺的QoE改进。缺失的片段是每个用户在线QoE建模和优化新用户计划自动化。以前的努力要么通过已知的每个用户QoE模型优化QoE,要么通过离线方法学习用户QoE模型,例如分析视频浏览历史和实验室内用户研究等离线方法。依靠这种离线模型是有问题的,因为QoE优化将开始延迟收集足够数据,以培训一个不偏不倚的QoE模型。在本文中,我们建议VidHoc是第一个将QE模型个人化的第一个自动系统,通过在线方式优化每个新用户的QoE模型。 Vidhoc可以建立每个用户的QoE QE QE 模型的配置为每个用户创建PeruE,同时在四个统计基数的基数内进行更好的 VoE 评估。