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Supporting Contextualized Information Finding with Automatic Excerpt Categorization

机译:通过自动摘录分类支持上下文信息搜索

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摘要

The volume of information on the Web is constantly growing. Consequently, finding specific pieces of information becomes a harder task. Wikipedia, the largest online reference Website is beginning to witness this phenomenon. Learners often turn to Wikipedia in order to learn facts regarding different subjects. However, as time passes, Wikipedia articles get larger and specific information gets more difficult to be located. In this work, we propose an automatic annotation method that is able to precisely assign categories to any textual resource. Our approach relies on semantic enhanced annotations and the categorization schema of Wikipedia. The results of a user study show that our proposed method provides solid results for classifying text and provides a useful support for locating information. As implication, our research will help future learners to easily identify desired learning topics of interest in large textual resources.
机译:Web上的信息量正在不断增长。因此,查找特定的信息变得更加困难。最大的在线参考网站Wikipedia已开始见证这种现象。学习者经常转向Wikipedia来学习有关不同主题的事实。但是,随着时间的流逝,维基百科的文章越来越多,特定的信息也越来越难以定位。在这项工作中,我们提出了一种自动注释方法,该方法能够精确地将类别分配给任何文本资源。我们的方法依赖于语义增强的注释和Wikipedia的分类架构。用户研究的结果表明,我们提出的方法为文本分类提供了可靠的结果,并为信息定位提供了有用的支持。隐含地,我们的研究将帮助未来的学习者轻松地在大型文本资源中确定所需的学习主题。

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