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Sentence Dependency Tagging in Online Question Answering Forums

机译:在线问答论坛中的句子相关性标记

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Online forums are becoming a popular resource in the state of the art question answering (QA) systems. Because of its nature as an online community, it contains more updated knowledge than other places. However, going through tedious and redundant posts to look for answers could be very time consuming. Most prior work focused on extracting only question answering sentences from user conversations. In this paper, we introduce the task of sentence dependency tagging. Finding dependency structure can not only help find answer quickly but also allow users to trace back how the answer is concluded through user conversations. We use linear-chain conditional random fields (CRF) for sentence type tagging, and a 2D CRF to label the dependency relation between sentences. Our experimental results show that our proposed approach performs well for sentence dependency tagging. This dependency information can benefit other tasks such as thread ranking and answer summarization in online forums.
机译:在线论坛正在成为最先进的问答系统(QA)的一种流行资源。由于它是一个在线社区,因此与其他地方相比,它包含更多的更新知识。但是,通过冗长乏味的帖子寻找答案可能会非常耗时。以前的大多数工作都集中在仅从用户对话中提取问答句。在本文中,我们介绍了句子依存标记的任务。查找依存关系结构不仅可以帮助快速找到答案,还可以让用户追溯通过用户对话得出的答案。我们使用线性链条件随机字段(CRF)进行句子类型标记,并使用2D CRF标记句子之间的依赖关系。我们的实验结果表明,我们提出的方法在句子依存标记方面表现良好。此依存关系信息可以使其他任务受益,例如在线论坛中的主题排名和答案汇总。

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