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A unified framework for flickr group recommendation based on tetradic decomposition

机译:基于四元分解的flickr群推荐统一框架

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Different from current researches on Flickr group recommendation approaches that recommend groups to either users or images, this work proposes a unified framework that recommends groups to both users and images. Four types of entities in the Flickr system (users, tags, images, and groups) are integrated into a tetradic model, and then we uses tetradic decomposition to discover the latent semantic association among these entities and recommend groups to images and to users simultaneously. The innovation of this design can be summarized as follows. 1) The design is convenient to users because many Flickr users aim to recognize not only groups in which images should be shared but also groups that might interest them. 2) Experiments proof that the consideration of the semantic relations among users, images, tags, and groups enhances the performance of both two kinds of recommendations in terms of mean average precision.
机译:与当前有关向用户或图像推荐组的Flickr组推荐方法的研究不同,这项工作提出了一个向用户和图像都推荐组的统一框架。 Flickr系统中的四种类型的实体(用户,标签,图像和组)被集成到一个四元模型中,然后我们使用四元分解来发现这些实体之间的潜在语义关联,并同时向图像和用户推荐组。该设计的创新可总结如下。 1)该设计对用户来说很方便,因为许多Flickr用户的目的不仅是识别应该共享图像的组,而且还要识别可能感兴趣的组。 2)实验证明,考虑用户,图像,标签和组之间的语义关系,可以提高两种建议的平均平均精度。

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