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Group recommendation in social tagging systems by consistent utilization of items and tags information

机译:通过一致利用物品和标签信息,在社交标记系统中进行组建议

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Group recommendations have become an increasingly important application of social tagging systems in recent years because of the rapid development and growth of groups. In contrast to current studies on group recommendation approaches that applied users-groups binary relations or users-tags-groups ternary relations, this work proposes a novel method named 4-order tensor reduction orthogonal iteration algorithm, which can recommend groups to users based on the consistent fusion of the items and tags information that exist in social tagging system. Four types of entities (users, tags, items, and groups) are integrated into a 4-order tensor recommendation framework, and then, Higher Order Singular Value Decomposition and Higher Order Orthogonal Iteration methods are performed to reveal the latent semantic association among these entities and recommend groups to users. The results of our experiments on a Flickr dataset show that the proposed group recommendation approach outperforms certain popular methods that only based on users-groups binary relations or users-tags-groups ternary relations in terms of mean average precision (MAP).
机译:由于群体的发展迅速和增长,集团建议已成为近年来社会标记系统​​越来越重要的应用。与目前对应用用户组二进制关系或用户标签的分组建议方法的目前的研究相比,这项工作提出了一种名为4阶张量缩减正交迭代算法的新方法,可以推荐基于用户的组在社交标记系统中存在的项目和标签信息的一致融合。四种类型的实体(用户,标签,项目和组)被集成到4阶Tensor推荐框架中,然后,执行高阶奇异值分解和更高阶正交的迭代方法,以显示这些实体之间的潜在语义关联并推荐给用户组。我们在Flickr DataSet上的实验结果表明,该组的组建建议方法优于某些流行的方法,这些方法仅基于用户组二进制关系或用户 - 标签 - 组 - 在平均平均精度(地图)方面的三元关系。

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