Research on Key Technologies of Knowledge Graph Construction Based on Natural Language Processing

Author:

Wang Guilei,Tao Yue,Ma Haixu,Bao Tong,Yang Jingmiao

Abstract

Abstract As we all know, building a domain knowledge graph from a large amount of text requires a very large amount of work, including entity recognition, entity disambiguation, relationship extraction, and event extraction, etc. It is difficult to build a very comprehensive domain knowledge graph from scratch. Fortunately, with the rapid progress of natural language processing technology, we can use a large number of natural language processing tools to help us build a domain knowledge graph. This article mainly studies the extraction of domain terms in the process of constructing the knowledge graph. The natural language processing techniques used are mainly new word discovery, word segmentation, and keyword extraction. This paper improves the existing imperfect natural language processing technologies and applies them to the process of constructing the domain knowledge graph in order to construct the domain knowledge graph accurately and efficiently.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

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