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Exploring A Trust Based Recommendation Approach for Videos in Online Social Network

机译:探索基于信任的在线社交网络视频推荐方法

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With the rapid development of social network, more and more users watch videos through social network, such as Sina Weibo. Traditional video recommendation algorithms aim at online video systems and they neglect the social relationship and propagation features in social network. The interaction information among users in social network could help improve the effect of video recommendation in social network. This paper mainly focuses on the problem that current video recommendation methods for videos in online social network can not meet the needs of the users. To address this challenge, we propose a new trust based video recommendation approach including a user discovery model and a video discovery model in this paper. To discover influential users of the target user, we divide the other users into direct influential users and indirect influential users. We compute the trust between the target user and each of his/her influential users based on user similarity, friendship and interaction. In the video discovery model, we calculate the video trust based on the video rating and video activity. Through combing the user discovery model and video discovery model, we present our trust based recommendation algorithm for videos in social network. The experimental results demonstrate that our approach can outperform two classical video recommendation algorithms, in terms of precision, recall and F1-measure.
机译:随着社交网络的快速发展,越来越多的用户通过新浪微博等社交网络观看视频。传统的视频推荐算法针对在线视频系统,而忽略了社交网络中的社交关系和传播特征。社交网络中用户之间的交互信息可以帮助提高社交网络中视频推荐的效果。本文主要针对当前在线社交网络中视频的视频推荐方法不能满足用户需求的问题。为了解决这一挑战,我们提出了一种新的基于信任的视频推荐方法,其中包括用户发现模型和视频发现模型。为了发现目标用户的有影响力的用户,我们将其他用户分为直接有影响力的用户和间接有影响力的用户。我们根据用户的相似性,友谊和互动来计算目标用户与他/她每个有影响力的用户之间的信任度。在视频发现模型中,我们基于视频评级和视频活动来计算视频信任度。通过结合用户发现模型和视频发现模型,我们提出了基于信任度的社交网络视频推荐算法。实验结果表明,在精度,召回率和F1度量方面,我们的方法可以胜过两种经典的视频推荐算法。

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