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Improving Identification of Latent User Goals through Search-Result Snippet Classification

机译:通过搜索结果摘要分类来提高对潜在用户目标的识别

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In this paper, we propose an enhanced approach to improving our previous method which employs syntactic structures (verb-object pairs) to identify latent user goals. Our new approach employs a supervised-learning method to learn hint verbs and considers URL information and title information to classify snippets into three coarse categories, which are resource-seeking, informational, and navigational. Also, we propose three different models to identify three different categories of specific latent user goals from the classified snippets.
机译:在本文中,我们提出了一种改进的方法来改进我们以前的方法,该方法采用句法结构(动词-对象对)来识别潜在的用户目标。我们的新方法采用监督学习的方法来学习提示动词,并考虑URL信息和标题信息以将摘要分为三个粗略类别,即资源寻求,信息和导航。此外,我们提出了三种不同的模型,用于从分类摘要中识别特定的潜在用户目标的三种不同类别。

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