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Enhancing recommended video lists for Youtube-like social media

机译:为类似YouTube的社交媒体增强推荐的视频列表

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Youtube-like video sharing sites (VSSes) have gained increasing popularity in recent years. Meanwhile, Facebook-like online social networks (OSNs), have seen their tremendous success in connecting people of common interests. These two new generation of networked services are now bridged in that many users of OSNs share video contents originating from VSSes with their friends, and it has been shown that a significant portion of views of VSSes are attributed to this sharing scheme of social networks. To understand how the video sharing behavior, which is largely based on social relationship, impacts users' viewing pattern, we have conducted a long-term measurement with RenRen and YouKu, the largest online social network and the largest video sharing site in China, respectively. We show that social friends are more likely to have common interests and their sharing behaviors provide guidance to enhance recommended video lists. In this paper, we take a first step toward learning OSN video sharing patterns for VSS video recommendation. An auto-encoder model is developed to learn the social similarity of different videos in terms of their sharing in OSN. We therefore propose a similarity-based strategy to enhance recommended video lists for VSSes. Evaluation results demonstrate that this strategy can remarkably improve the precision in VSSes, as compared to state-of-the-art strategies without social information.
机译:近年来,类似YouTube的视频共享网站(VSSes)越来越受欢迎。同时,类似Facebook的在线社交网络(OSN)在连接具有共同兴趣的人们方面取得了巨大的成功。现在,这两个新一代的网络服务之间的桥梁是,许多OSN用户与他们的朋友共享源自VSS的视频内容,并且已经显示,VSS的大部分视图都归因于这种社交网络共享方案。为了了解主要基于社交关系的视频共享行为如何影响用户的观看方式,我们分别与中国最大的在线社交网络和最大的视频共享网站RenRen和YouKu进行了长期测量。我们显示社交朋友更可能有共同的兴趣,他们的分享行为为增强推荐视频列表提供了指导。在本文中,我们朝着学习用于VSS视频推荐的OSN视频共享模式迈出了第一步。开发了一种自动编码器模型,以学习不同视频在OSN中的共享方面的社会相似性。因此,我们提出了一种基于相似度的策略来增强VSS的推荐视频列表。评估结果表明,与没有社交信息的最新策略相比,该策略可以显着提高VSSes的精度。

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