标签系统的认知动态模型

Klaas Dellschaft, Steffen Staab
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引用次数: 65

摘要

在最近的文献中,提出了几个模型来再现和理解用户的标记行为。它们都假设标记行为受到其他用户先前标记分配的影响。但是它们在复制标签流中的特征属性方面只是部分成功。我们认为,现有模型的不足之处在于它们无法将用户的背景知识纳入其标记行为模型。本文提出了一种生成式标注模型,该模型综合了标注成分、背景知识和之前标注分配的影响。我们的模型成功地再现了标签流的特征属性。它甚至解释了用户界面对标签流的影响。
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An epistemic dynamic model for tagging systems
In recent literature, several models were proposed for reproducing and understanding the tagging behavior of users. They all assume that the tagging behavior is influenced by the previous tag assignments of other users. But they are only partially successful in reproducing characteristic properties found in tag streams. We argue that this inadequacy of existing models results from their inability to include user's background knowledge into their model of tagging behavior. This paper presents a generative tagging model that integrates both components, the background knowledge and the influence of previous tag assignments. Our model successfully reproduces characteristic properties of tag streams. It even explains effects of the user interface on the tag stream.
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