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Exploring Text Semantics to Extract Key-Fragments for Model Answers

机译:探索文本语义以提取模型答案的关键片段

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In context with the recent developments in the understanding of text semantics at machine level, this paper is an attempt to extract some of the most crucial fragments that play a key role as semantic units in natural language text. The context is intuitively extracted from typed dependency structures basically depicting dependency relations using the relevant Part-Of-Speech tagged representation of the text. These relations imply deep, fine grained, labeled dependencies that encode long-distance relations and passive information. The present work focuses on extracting the key noun phrases participating both in subject and object roles that are intended to be subsequently used in framing sentential components for model answers in any selected working domain.
机译:在机器层面对文本语义理解的最新发展中,本文试图提取一些最关键的片段,这些片段在自然语言文本中作为语义单元起着关键作用。使用相关的词性标记文本表示法从类型化的依赖关系结构中直观地提取上下文,该结构基本上描述了依赖关系。这些关系意味着对长距离关系和被动信息进行编码的深层,细粒度,带标签的依赖项。本工作着重于提取参与主题和客体角色的关键名词短语,这些主题名词随后将用于在任何选定的工作领域中为模型答案的句子构成框架。

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