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Enhancing Document-Based Question Answering via Interaction Between Question Words and POS Tags

机译:通过问题词和POS标签之间的交互来增强基于文档的问题回答

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The document-based question answering is to select the answer from a set of candidate sentence for a given question. Most Existing works focus on the sentence-pair modeling, but ignore the peculiars of question-answer pairs. This paper proposes to model the interaction between question words and POS tags, as a special kind of information that is peculiar to question-answer pairs. Such information is integrated into a neural model for answer selection. Experimental results on DBQA Task have shown that our model has achieved better results, compared with several state-of-the-art systems. In addition, it also achieves the best result on NLPCC 2017 Shared Task on DBQA.
机译:基于文档的问题答案是从一组给定问题的候选句子中选择答案。现有的大多数作品都集中在句子对建模上,但忽略了问题-答案对的特殊之处。本文提出了对疑问词和POS标签之间的交互进行建模的方法,作为问答对特有的一种特殊信息。此类信息被集成到用于答案选择的神经模型中。关于DBQA Task的实验结果表明,与几种最新系统相比,我们的模型取得了更好的结果。此外,它还在DBPA的NLPCC 2017共享任务上获得最佳结果。

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