Tags vs shelves: from social tagging to social classification

A. Zubiaga, Christian Körner, M. Strohmaier
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引用次数: 48

Abstract

Recent research has shown that different tagging motivation and user behavior can effect the overall usefulness of social tagging systems for certain tasks. In this paper, we provide further evidence for this observation by demonstrating that tagging data obtained from certain types of users - so-called Categorizers - outperforms data from other users on a social classification task. We show that segmenting users based on their tagging behavior has significant impact on the performance of automated classification of tagged data by using (i) tagging data from two different social tagging systems, (ii) a Support Vector Machine as a classification mechanism and (iii) existing classification systems such as the Library of Congress Classification System as ground truth. Our results are relevant for scientists studying pragmatics and semantics of social tagging systems as well as for engineers interested in influencing emerging properties of deployed social tagging systems.
标签vs货架:从社会标签到社会分类
最近的研究表明,不同的标签动机和用户行为可以影响社会标签系统对某些任务的整体有用性。在本文中,我们通过证明从某些类型的用户(所谓的分类器)获得的标记数据在社会分类任务上优于其他用户的数据,为这一观察提供了进一步的证据。通过使用(i)来自两种不同的社会标记系统的标记数据,(ii)支持向量机作为分类机制,(iii)现有的分类系统(如国会图书馆分类系统)作为基础事实,我们表明基于标记行为对用户进行分割对标记数据的自动分类性能有显著影响。我们的研究结果对研究社会标签系统的语用学和语义的科学家以及对影响已部署的社会标签系统的新特性感兴趣的工程师都是相关的。
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