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Automatic Tag Suggestion Based on Resource Contents

机译:基于资源内容的自动标签建议

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摘要

Although social tagging systems are becoming increasingly popular, tagging is still usually a manual process. When publishing on a social tagging system, the user is asked for the tags he wishes to assign to the resource being made available. In this paper, we present an automatic tag suggester, Tess. Our system makes recommendations based only on the textual contents of the resource and is independent of existing tags, thus allowing the emergence of novel tags. The system was evaluated by a group of users and statistical measures were applied to infer its performance. Results show that the system is not only able to suggest many useful tags, but also to discover new and relevant tags, not suggested by any of the human users.
机译:尽管社交标签系统变得越来越流行,但标签通常仍是手动过程。当在社交标签系统上发布时,向用户询问他希望分配给正变得可用的资源的标签。在本文中,我们提出了一个自动标签建议者Tess。我们的系统仅基于资源的文本内容提出建议,并且与现有标签无关,因此可以出现新颖的标签。该系统由一组用户进行了评估,并采用统计手段来推断其性能。结果表明,该系统不仅能够建议许多有用的标签,而且还可以发现任何人类用户都没有建议的新的相关标签。

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