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Attention-Based Document Classifier Learning

机译:基于注意力的文档分类器学习

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摘要

We describe an approach for creating precise personalized document classifiers based on the user's attention. The general idea is to observe which parts of a document the user was interested in just before he or she comes to a classification decision. Having information about this manual classification decision and the document parts the decision was based on, we can learn precise classifiers. For observing the user's focus point of attention we use an unobtrusive eye tracking device and apply an algorithm for reading behavior detection. On this basis, we can extract terms characterizing the text parts interesting to the user and employ them for describing the class the document was assigned to by the user. Having learned classifiers in that way, new documents can be classified automatically using techniques of passage-based retrieval. We prove the very strong improvement of incorporating the user's visual attention by a case study that evaluates an attention-based term extraction method.
机译:我们描述了一种基于用户注意来创建精确的个性化文档分类器的方法。总体思路是在用户做出分类决策之前观察用户感兴趣的文档的哪些部分。有了有关此手动分类决策以及该决策所依据的文档部分的信息,我们可以学习精确的分类器。为了观察用户的关注点,我们使用了一种不引人注目的眼动追踪设备,并应用了一种用于读取行为检测的算法。在此基础上,我们可以提取出表征用户感兴趣的文本部分的术语,并将其用于描述文档被用户分配给的类。通过这种方式学习了分类器,可以使用基于段落的检索技术自动对新文档进行分类。我们通过评估基于注意力的术语提取方法的案例研究,证明了整合用户的视觉注意力的巨大改进。

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