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Latent dirichlet allocation for tag recommendation

机译:标签推荐的潜在Dirichlet分配

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Tagging systems have become major infrastructures on the Web. They allow users to create tags that annotate and categorize content and share them with other users, very helpful in particular for searching multimedia content. However, as tagging is not constrained by a controlled vocabulary and annotation guidelines, tags tend to be noisy and sparse. Especially new resources annotated by only a few users have often rather idiosyncratic tags that do not reflect a common perspective useful for search. In this paper we introduce an approach based on Latent Dirichlet Allocation (LDA) for recommending tags of resources in order to improve search. Resources annotated by many users and thus equipped with a fairly stable and complete tag set are used to elicit latent topics to which new resources with only a few tags are mapped. Based on this, other tags belonging to a topic can be recommended for the new resource. Our evaluation shows that the approach achieves significantly better precision and recallthan the use of association rules, suggested in previous work, and also recommends more specific tags. Moreover, extending resources with these recommended tags significantly improves search for new resources.
机译:标记系统已成为网络上的主要基础架构。它们允许用户创建注释和分类内容的标签,并与其他用户共享,特别有用,特别是用于搜索多媒体内容。但是,由于标记不受受控词汇和注释指南限制,标签往往是嘈杂和稀疏的。特别是仅限少数用户注释的新资源通常具有不反映对搜索有用的共同视角的特殊性的标签。在本文中,我们介绍了一种基于潜在Dirichlet分配(LDA)的方法,以推荐资源标记以改善搜索。许多用户并因此配备了相当稳定和完整的标记集的资源用于引出潜在主题,其中仅映射了几个标签的新资源。基于此,可以建议属于主题的其他标记用于新资源。我们的评估表明,该方法在以前的工作中建议的建议,该方法可以实现明显更好的精确和召回使用关联规则,并建议更多特定标签。此外,使用这些推荐标签扩展资源显着提高了对新资源的搜索。

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