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Natural Language Processing (NLP)-A solution for knowledge extraction from patent unstructured data

机译:自然语言处理(NLP)-A专利非结构化数据提取的解决方案

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Patents are valuable source of knowledge and are extremely important for assisting engineers and decisions makers through the inventive process. This paper describes a new approach of automatic extraction of IDM (Inventive Design Method) related knowledge from patent documents. IDM derives from TRIZ, the theory of Inventive problem solving, which is largely based on patent's observation to theorize the act of inventing. Our method mainly consists in using natural language techniques (NLP) to match and extract knowledge relevant to IDM Ontology. The purpose of this paper is to investigate on the contribution of NLP techniques to effective knowledge extraction from patent documents. We propose in this paper to firstly report on progress made so far in data mining before describing our approach.
机译:专利是知识的宝贵来源,对于通过本发明的过程帮助工程师和决策制定者非常重要。本文介绍了一种自动提取IDM(发明设计方法)与专利文献相关知识的新方法。 IDM来自Triz,本发明问题解决的理论,这主要基于专利观察,以了解发明的行为。我们的方法主要包括使用自然语言技术(NLP)来匹配和提取与IDM本体相关的知识。本文的目的是调查NLP技术对专利文献的有效知识提取的贡献。我们提出本文首先在描述我们的方法之前首先报告到目前为止的数据挖掘进展。

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