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Differentially Private Online Learning for Cloud-Based Video Recommendation With Multimedia Big Data in Social Networks

机译:社交网络中基于多媒体大数据的基于云的视频推荐的差分私有在线学习

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With the rapid growth in multimedia services and the enormous offers of video content in online social networks, users have difficulty in obtaining their interests. Therefore, various personalized recommendation systems have been proposed. However, they ignore that the accelerated proliferation of social media data has led to the big data era, which has greatly impeded the process of video recommendation. In addition, none of them has considered both the privacy of users’ contexts (e.g., social status, ages, and hobbies) and video service vendors’ repositories, which are extremely sensitive and of significant commercial value. To handle these problems, we propose a cloud-assisted differentially private video recommendation system based on distributed online learning. In our framework, service vendors are modeled as distributed cooperative learners, recommending videos according to user's context, while simultaneously adapting the video-selection strategy based on user-click feedback to maximize total user clicks (reward). Considering the sparsity and heterogeneity of big social media data, we also propose a novel model, which can greatly reduce the performance loss. Our simulation shows the proposed algorithms outperform other existing methods and keep a delicate balance between the total reward and privacy preserving level.
机译:随着多媒体服务的快速增长和在线社交网络中视频内容的大量提供,用户难以获得他们的兴趣。因此,已经提出了各种个性化推荐系统。但是,他们忽略了社交媒体数据的加速扩散已经导致了大数据时代,这大大阻碍了视频推荐的过程。此外,他们都没有考虑用户上下文(例如,社会地位,年龄和爱好)和视频服务供应商的存储库的隐私,这些存储库非常敏感并且具有重大商业价值。为了解决这些问题,我们提出了一种基于分布式在线学习的云辅助差分私有视频推荐系统。在我们的框架中,服务供应商被建模为分布式合作学习者,根据用户上下文推荐视频,同时根据用户点击反馈调整视频选择策略,以最大程度地增加用户的总点击次数(奖励)。考虑到大型社交媒体数据的稀疏性和异构性,我们还提出了一种新颖的模型,可以大大减少性能损失。我们的仿真表明,所提出的算法优于其他现有方法,并且在总奖励和隐私保护级别之间保持了微妙的平衡。

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