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Integrating social annotations into topic models for personalized document retrieval

机译:将社交注释集成到个性化文档检索的主题模型中

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摘要

Social annotations are valuable resources generated by users on the Web, which encode abundant information on user preferences for certain documents. Social annotation-based information retrieval has been studied in recent years for personalizing search results and fulfilling user information needs. However, since social annotations are complicated and associated with users, documents and tags simultaneously, it remains a great challenge to fully capture the potentially useful information for improving retrieval performance. To meet the challenge, we propose a novel method to integrate social annotations into topic models for personalized document retrieval. Our method first reconstructs candidate documents for a given query using social tags of documents to capture user preferences. The reconstructed documents are tailored to user preferences for achieving better performance. We then generalize the latent Dirichlet allocation-based topic models by considering the relationship among users, social tags and documents from social annotations. The modified topic model optimizes the distribution of latent topics of documents for different users to meet user information needs. Experimental results show that our method can significantly outperform the state-of-the-art baseline models for improving the performance of personalized retrieval.
机译:社会注释是Web上用户生成的有价值的资源,它为某些文档编码了有关用户偏好的丰富信息。近年来研究了基于社会注释的信息检索,以便个性化搜索结果并满足用户信息需求。但是,由于社会注释同时与用户,文档和标签相关联,因此完全捕获了提高检索性能的潜在有用信息仍然存在巨大挑战。为满足挑战,我们提出了一种新颖的方法,将社会注释集成为个性化文件检索的主题模型。我们的方法首先使用文档的社交标记重建给定查询的候选文档来捕获用户偏好。重建的文档适用于实现更好性能的用户偏好。然后,我们通过考虑来自社会注释的用户,社交标签和文档之间的关系来概括基于Dirichlet分配的主题模型。修改后的主题模型优化了不同用户的文档的潜在主题的分布,以满足用户信息需求。实验结果表明,我们的方法可以显着优于最先进的基线模型来提高个性化检索的性能。

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