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引用次数: 2

摘要

目前移动视频用户体验质量不理想的主要原因是网络距离较远。为了提高用户的体验质量,内容提供商正在将内容分发能力推向边缘网络。然而,现有的内容复制方法无法为移动视频交付提供足够质量的体验。因为他们没有考虑用户偏好和移动性等用户行为的知识,而这些知识可以捕捉到动态变化的内容流行度。为了解决这个问题,我们提出了一个用户行为驱动的协作边缘网络内容复制解决方案,其中用户偏好和移动性被联合考虑。更具体地说,通过对视频和轨迹的用户行为驱动的测量研究,我们首先揭示了用户的内在偏好和移动模式在边缘网络内容交付中发挥着重要作用。其次,基于测量见解,提出了基于用户偏好和移动性的协同边缘网络内容复制解决方案,即APRank。它由基于偏好的需求预测(用于预测视频内容的请求)、基于移动性的协作(用于预测用户跨边缘接入点(ap)的移动)和基于工作负载的协作(用于实现跨相邻ap的协作复制)组成。APRank能够预测每个AP的细粒度内容流行度分布,处理轨迹数据稀疏性问题,并对边缘AP进行动态、协作的内容复制。最后,通过广泛的跟踪驱动实验,我们证明了我们设计的有效性:与传统方法相比,APRank的内容访问延迟减少了20%,工作量减少了32%。
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Collaborative edge-network content replication: a joint user preference and mobility approach
Today's mobile video users have unsatisfactory quality of experience mainly due to the large network distance to the centralized infrastructure. To improve users' quality of experience, content providers are pushing content distribution capacity to the edge-networks. However, existing content replication approaches cannot provide sufficient quality of experience for mobile video delivery. Because they fail to consider the knowledge of user-behavior such as user preference and mobility, which can capture the dynamically changing content popularity. To address the problem, we propose a user-behavior driven collaborative edge-network content replication solution in which user preference and mobility are jointly considered. More specifically, using user-bahavior driven measurement studies of videos and trajectories, we first reveal that both users' intrinsic preferences and mobility patterns play a significant role in edge-network content delivery. Second, based on the measurement insights, it is proposed that a joint user preference- and mobility-based collaborative edge-network content replication solution, namely APRank. It is comprised of preference-based demand prediction to predict the requests of video content, mobility-based collaboration to predict the movement of users across edge access points (APs), and workload-based collaboration to enables collaborative replication across adjacent APs. APRank is able to predict the fine-grained content popularity distribution of each AP, handle the trajectory data sparseness problem, and make dynamic and collaborative content replication for edge APs. Finally, through extensive trace-driven experiments, we demonstrate the effectiveness of our design: APRank achieves 20% less content access latency and 32% less workload against traditional approaches.
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