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Understanding: How to Resolve Ambiguity 理解:怎样化解歧义?

已有 1967 次阅读 2017-10-30 18:34 |个人分类:双语信息处理|系统分类:论文交流| 自然语言处理, 形式化理解, 专家知识获取, 形式化表达

理解:怎样化解歧义?

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International Conference on Intelligence Science

ICIS 2017: Intelligence Science I pp 333-343| Cite as

Understanding: How to Resolve Ambiguity

  • Shunpeng Zou



  • ;Xiaohui Zou






  1. 1.

  2. 2.

Conference paper
Part of the IFIP Advances in Information and Communication Technology book series (IFIPAICT, volume 510)

AbstractThis article aims to explore the question: understanding, interpreting, translating, how to resolve ambiguity? Or: how does man-machine combination resolve ambiguity? In order to focus on the essence of the problem, the method is that: target analysis butterfly model and its use cases, macroscopic analysis ambiguity model and its use cases, microscopic analysis matrix model or search model within a series of bi-list and its use cases. The result is through the three examples, from manual translation to machine translation and translation memory on view, pointed out that the fundamental way to resolve ambiguity. Its significance is that the method can be advanced to the generalized translation and corresponding interpretation and final practical understanding, the specific performance is that through man-machine collaboration, and its verifiable results with this method, we can work to resolve various ambiguities better, to ensure accurate understand, prevent and eliminate all kinds of misunderstandings.

Keywords

Linguistic cognition Mind philosophy Brain-machine integration Attribute theory method

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© IFIP International Federation for Information Processing 2017




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