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Predicting Users' Preference from Tag Relevance

机译:预测用户的偏好与标签相关性

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摘要

Tagging has become a powerful means for users to find, organize, understand and express their ideas about online entities. However, tags present great challenges when researchers try to incorporate them into the prediction task of recommender systems. In this paper, we propose a novel approach to infer user preference from tag relevance, an indication of how strong each tag applies to each item in recommender systems. We also present a methodology to choose tags that tell most about each user's preference. Our preliminary results show that at certain levels, some of our algorithms perform better than previous work.
机译:标记已成为用户找到,组织,理解和表达他们关于在线实体的想法的强大手段。然而,当研究人员试图将它们纳入推荐系统的预测任务时,标签存在巨大挑战。在本文中,我们提出了一种新颖的方法来推断用户偏好从标签相关性,指示每个标记适用于推荐系统中的每个项目的强度。我们还提出了一种选择标签的方法,以便最多了解每个用户的偏好。我们的初步结果表明,在某些级别,我们的一些算法比以前的工作更好。

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