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PerSaDoR: Personalized social document representation for improving web search

机译:PerSaDoR:个性化的社交文档表示形式,用于改善Web搜索

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摘要

In this paper, we discuss a contribution towards the integration of social information in the index structure of an IR system. Since each user has his/her own understanding and point of view of a given document, we propose an approach in which the index model provides a Personalized Social Document Representation (PerSaDoR) of each document per user based on his/her activities in a social tagging system. The proposed approach relies on matrix factorization to compute the PerSaDoR of documents that match a query, at query time. The complexity analysis shows that our approach scales linearly with the number of documents that match the query, and thus, it can scale to very large datasets. PerSaDoR has been also intensively evaluated by an offline study and by a user survey operated on a large public dataset from delicious showing significant benefits for personalized search compared to state of the art methods. (C) 2016 Elsevier Inc. All rights reserved.
机译:在本文中,我们讨论了对IR系统索引结构中社会信息集成的贡献。由于每个用户对给定文档都有自己的理解和观点,因此我们提出一种方法,其中索引模型基于他/她在社交中的活动为每个用户提供每个文档的个性化社交文档表示(PerSaDoR)。标记系统。所提出的方法依靠矩阵分解在查询时计算与查询匹配的文档的PerSaDoR。复杂度分析表明,我们的方法与匹配查询的文档数量成线性比例关系,因此可以扩展到非常大的数据集。 PerSaDoR还通过离线研究和对大型公共数据集进行的用户调查得到了深入评估,该调查显示,与最新方法相比,美味可口的个性化搜索具有明显优势。 (C)2016 Elsevier Inc.保留所有权利。

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