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CFP: A Cross-layer Recommender System with Fine-grained Preloading for Short Video Streaming at Network Edge

机译:CFP:具有细粒度预加载的跨层推荐系统,用于网络边缘的短视频流

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Nowadays, short video feed has attracted billions of mobile users all around the world to interact with content effortlessly, yielding an explosive growth of short video commerce. Typically, users watch full-screen short videos of a few seconds one-by-one in a watch-list generated by recommender systems, skipping those they are not interested in. However, the recommender system at the cloud makes a user-interest-specific decision mostly based on the users' behavior data collected within the application itself (e.g., users' view history), without examining the lower-layer network and communication statistics. When the playback choked due to the limited network bandwidth, the user will probably skip the video, leading to a waste of bandwidth and degradation of the user's quality of experience (QoE). Meanwhile, the excessive number of user requests to video contents raises a heavy computational load and communication cost for the recommender system at the cloud to determine which videos to be recommended and delivered to each user in a real-time manner. The advance of edge computing provides a promising avenue of deploying edge nodes with caches (e.g., household devices) beyond cloud and edge servers, such that the recommender system in the cloud can place popular video contents closer to client users, and meanwhile the contents are delivered to client users with good network condition. In this paper, we propose CFP, a cross-layer recommender system for short video streaming with fine-grained preloading technique at the network edge. CFP jointly optimizes the recommendation effect of the video application and the content preloading efficiency under various network conditions at the network edge. CFP takes a two-stage approach: the cloud server first seeks to perform edge-wise instead of user-interest-specific recommendation with neural collaborative filtering recommender, preloading a list of candidate videos to edge nodes, and each edge node, deploying the GRU with attention, then delivers the proper video contents to the client user device according to the user's preference. Trace-driven emulations demonstrate the efficiency of the proposed CFP scheme.
机译:如今,短片饲料吸引了数十亿移动用户的全球各地轻松与内容互动,产生短视频电子商务的爆炸式增长。通常情况下,用户在观看了几秒钟一个接一个通过推荐系统生成的观察名单全屏短片,跳过那些他们没有兴趣的工作。然而,在云中的推荐系统,使用户兴趣而具体决定大多是基于(观看历史的用户应用本身例如,用户)内收集的行为数据,而不检查该下层网络和通信的统计信息。当播放到有限的网络带宽阻塞到期,用户可能会跳过视频,导致经验的用户质量(QoE)的带宽和降解的浪费。同时,用户请求的视频内容的数量过多引起的推荐器系统在云中的沉重的计算负荷和通信成本来确定要推荐的,并在实时的方式传递到每个用户的视频。边缘计算的推进提供了与高速缓存(例如,家用设备)以外云和边缘服务器,使得在云中的推荐器系统可以将流行的视频内容更靠近客户端的用户,同时内容是部署边缘节点的一个有希望的途径交付给客户端用户提供良好的网络条件。在本文中,我们提出了CFP,跨层推荐器系统用于短视频与在网络边缘细粒度预加载技术流。 CFP共同优化视频应用和在网络边缘各种网络条件下的内容预加载效率的建议的效果。 CFP采取两阶段方法:云服务器首先寻求执行沿边,而不是与神经协同过滤推荐用户兴趣,具体的建议,预载的候选影片,边缘节点列表,并且每个边缘节点,部署GRU注意力,然后提供根据用户的喜好适当的视频内容到客户端用户设备。跟踪驱动的仿真验证了该方案CFP的效率。

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