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MyMovieHistory: Social Recommender System by Discovering Social Affinities Among Users

机译:MyMovieHistory:通过发现用户之间的社交亲和力的社交推荐系统

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Social network information has recently been used for the improvement of the performances of recommender systems with regard to both individual users and groups. During the selection of the items for a group, the role of the corresponding relationships (e.g., position, dependency, and the strength of the social ties) is often more important than the individual preferences; however, the existing works do not sufficiently consider this important factor for group recommendations. We therefore propose a novel recommendation method that is based on a social affinity between the common histories of users. The proposed method consists of an intermovie similarity calculation that is based on weighted features for the generation of an initial social-affinity graph, and the subsequent computation of a user's affinity to a group that is based on the graph. To apply the method for a service, we developed a "MyMovieHistory" application for the Facebook social media platform, and the synthetic dataset results of the experiment show that our proposed method can discover social affinities in an efficient manner.
机译:社交网络信息最近已用于改善推荐系统在个人用户和群体方面的性能。在为一个小组选择项目时,相应关系的作用(例如,位置,依赖关系和社会关系的强度)通常比个人喜好更重要;然而,现有的工作并没有充分考虑这一重要因素来提出小组建议。因此,我们提出了一种新颖的推荐方法,该方法基于用户的共同历史之间的社交亲和力。所提出的方法包括基于加权特征的运动间相似度计算,用于生成初始社交亲和度图,以及随后基于该图的用户对组的亲和度的后续计算。为了将该方法应用于服务,我们为Facebook社交媒体平台开发了一个“ MyMovieHistory”应用程序,实验的综合数据集结果表明,我们提出的方法可以有效地发现社交亲和力。

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