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Retrieval model of social books based on multi-feature fusion

机译:基于多重特征融合的社会书籍检索模型

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Social book has not only traditional descriptions added by the expert editors, but also contains a wealth of user-generated data defined as social information such as user comments, custom labels. There are some limitations in retrieving social books with traditional retrieval methods. So, this paper presented a retrieval method of social books based on multi-feature fusion. In this method, we extract multiple social features of books and fuse them as one single similarity matrix. Using it, the K nearest neighbors of each book can be found. Then, we re-rank the initial ranking retrieved by traditional model using the fused multi-feature similarities of one book's K nearest neighbors, so as to improve the effectiveness of traditional retrieval method on social book search. Using Amazon/LT social books collection provided by INEX, compared with traditional retrieval method, we conduct some experiments. The results show that feature extraction methods and the social re-ranking model presented in this paper can effectively improve the performance of traditional retrieval method.
机译:社交书不仅具有专家编辑添加的传统描述,而且还包含大量用户生成的数据定义为社交信息,如用户评论,自定义标签。用传统的检索方法检索社会书籍存在一些局限性。因此,本文介绍了基于多重特征融合的社会丛书的检索方法。在此方法中,我们提取了多个书籍的社交功能,并将其融合为单个相似性矩阵。使用它,可以找到每本书的K最近邻居。然后,我们使用一本书的K最近邻居的融合多个特征相似度重新排名传统模型检索的初始排名,以提高传统检索方法对社会丛书搜索的有效性。使用Inex提供的亚马逊/ LT社会书籍集合,与传统的检索方法相比,我们进行了一些实验。结果表明,本文提出的特征提取方法和社会重新排名模型可以有效地提高传统检索方法的性能。

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