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Book search using social information, user profiles and query expansion with Pseudo Relevance Feedback

机译:使用伪相关性反馈,使用社交信息,用户配置文件,用户配置文件和查询扩展图书搜索

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摘要

Book Search has gained astounding popularity worldwide. Nowadays, users search the items/products online. Users who have not any idea about the product they look towards the social information and user profiles. Social information is further categorized into structured information (e.g. rating and tags) and unstructured information (reviews and annotations). Consequently, how to offer the best recommendation or suggestion of items to end users is becoming a hot topic among researchers. The retrieval and recommendation of relevant documents to the users is a key issue in many domain e.g. songs, accessories, movies, books, etc. In this paper, taking social books as an example, we propose a novel Pseudo Relevance Feedback (PRF) framework for retrieving and searching for relevant documents using social information and user profiles. Especially, we have redesigned a typical distribution-based term selection strategy and transformation-based term selection strategy. Terms are selected and weighted in hope to avoid word mismatch problem and to improve retrieval of the relevant document. Finally, we develop a searching system, where Learning-to-Rank technique is used to adaptively combine the results which are obtained from various PRF strategies with user profiles and social information. Our proposed methodology is extensively evaluated on INEX/CLEF Social Book Search Track (SBS) datasets to verify the effectiveness and robustness of the proposed method. As a result, our proposed method shows the best performance (nDCG@10) on all 3-years SBS track (Suggestion Task) datasets compared to other state-of-the-art methods.
机译:图书搜索在全球范围内获得了惊人的普及。如今,用户在线搜索项目/产品。对他们朝着社交信息和用户简档的产品没有任何想法的用户。社交信息进一步分为结构化信息(例如评级和标签)和非结构化信息(评论和注释)。因此,如何为最终用户提供最佳建议或项目建议正在成为研究人员中的热门话题。对用户的相关文件的检索和推荐是许多领域的关键问题。本文以社会书籍为例,提出了一种新颖的伪相关反馈(PRF)框架,用于使用社交信息和用户配置文件来检索和搜索相关文档的新颖伪相关反馈(PRF)框架。特别是,我们已经重新设计了一种基于典型的分发术语选择策略和基于转换的术语选择策略。选择并加权术语,以避免单词不匹配问题并改善相关文档的检索。最后,我们开发了一种搜索系统,其中用于自动组合从用户简档和社交信息自行地组合从各种PRF策略获得的结果。我们提出的方法在Inex / Clef社会博书搜索轨道(SBS)数据集上进行了广泛评估,以验证所提出的方法的有效性和鲁棒性。因此,我们的提出方法显示了与其他最先进的方法相比所有3年SBS轨道(建议任务)数据集的最佳性能(NDCG @ 10)。

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