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A Framework for Compiling High Quality Knowledge Resources From Raw Corpora

机译:从Rail Corpora编译高质量知识资源的框架

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The identification of various types of relations is a necessary step to allow computers to understand natural language text. In particular, the clarification of relations between predicates and their arguments is essential because predicate-argument structures convey most of the information in natural languages. To precisely capture these relations, wide-coverage knowledge resources are indispensable. Such knowledge resources can be derived from automatic parses of raw corpora, but unfortunately parsing still has not achieved a high enough performance for precise knowledge acquisition. We present a framework for compiling high quality knowledge resources from raw corpora. Our proposed framework selects high quality dependency relations from automatic parses and makes use of them for not only the calculation of fundamental distributional similarity but also the acquisition of knowledge such as case frames.
机译:识别各种类型的关系是允许计算机理解自然语言文本的必要步骤。特别是,识别谓词与其参数之间的关系是必不可少的,因为谓词参数结构传达了天然语言中的大部分信息。要精确地捕捉这些关系,宽覆盖知识资源是必不可少的。这些知识资源可以源自Rail Corpora的自动解析,但不幸的是解析仍然没有足够高的性能,以便精确知识获取。我们提出了一种从原始Corpora编译高质量知识资源的框架。我们所提出的框架从自动解析中选择高质量的依赖关系,并不仅利用它们的基本分布相似性,还利用它们的计算,而且使用案例框架的知识。

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