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Combining Tags and Reviews to Improve Social Book Search Performance

机译:结合标签和评论以提高社交图书搜索性能

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The emergence of Web 2.0 and social networks have provided important amounts of information that led researchers from different fields to exploit it. Social information retrieval is one of the areas that aim to use this social information to improve the information retrieval performance. This information can be textual, like tags or reviews, or non textual like ratings, number of likes, number of shares, etc. In this paper, we focus on the integration of social textual information in the research model. As it seems logical that integrating tags in the retrieval model should not be in the same way taken to integrate reviews, we will analyze the different influences of using tags and reviews on both the settings of retrieval parameters and the retrieval effectiveness. After several experiments, on the CLEF social book search collection, we concluded that combining the results obtained from two separate indexes and two models with specific parameters for tags and reviews gives good results compared to when using a single index and a single model.
机译:Web 2.0和社交网络的出现提供了大量重要信息,这些信息导致来自不同领域的研究人员对其进行利用。社交信息检索是旨在使用此社交信息来提高信息检索性能的领域之一。此信息可以是文本信息(例如标签或评论),也可以是非文本信息(例如评分,喜欢次数,股份数量等)。在本文中,我们着重研究社交文本信息在研究模型中的集成。由于将标签集成到检索模型中似乎与采用集成评论的方式不同似乎合乎逻辑,因此我们将分析使用标签和评论对检索参数设置和检索有效性的不同影响。经过几次实验,在CLEF社交图书搜索集合中,我们得出的结论是,与使用单个索引和单个模型相比,将从两个单独的索引和两个模型获得的结果与具有特定标签和评论参数的参数相结合,可以得到良好的结果。

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