期刊论文详细信息
Data Science Journal
Causal knowledge extraction by natural language processing in material science: a case study in chemical vapor deposition
Hideki Mima1  Yoshihide Sugiyama1  Katsumori Matsushima1  Yuya Kajikawa1 
[1]Institute of Engineering Innovation, School of Engineering, the University of Tokyo
关键词: Natural language processing;    Knowledge extraction;    Materials science;    Chemical vapor deposition;    Causality;   
DOI  :  10.2481/dsj.5.108
学科分类:计算机科学(综合)
来源: Ubiquity Press Ltd.
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【 摘 要 】
References(22)Scientific publications written in natural language still play a central role as our knowledge source. However, due to the flood of publications, the literature survey process has become a highly time-consuming and tangled process, especially for novices of the discipline. Therefore, tools supporting the literature-survey process may help the individual scientist to explore new useful domains. Natural language processing (NLP) is expected as one of the promising techniques to retrieve, abstract, and extract knowledge. In this contribution, NLP is firstly applied to the literature of chemical vapor deposition (CVD), which is a sub-discipline of materials science and is a complex and interdisciplinary field of research involving chemists, physicists, engineers, and materials scientists. Causal knowledge extraction from the literature is demonstrated using NLP.
【 授权许可】

Unknown   

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