Research on knowledge reasoning of TCM based on knowledge graphs

Q3 Medicine
Zhiheng GUO , Qingping LIU , Beiji ZOU
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引用次数: 0

Abstract

With the widespread use of Internet, the amount of data in the field of traditional Chinese medicine (TCM) is growing exponentially. Consequently, there is much attention on the collection of useful knowledge as well as its effective organization and expression. Knowledge graphs have thus emerged, and knowledge reasoning based on this tool has become one of the hot spots of research. This paper first presents a brief introduction to the development of knowledge graphs and knowledge reasoning, and explores the significance of knowledge reasoning. Secondly, the mainstream knowledge reasoning methods, including knowledge reasoning based on traditional rules, knowledge reasoning based on distributed feature representation, and knowledge reasoning based on neural networks are introduced. Then, using stroke as an example, the knowledge reasoning methods are expounded, the principles and characteristics of commonly used knowledge reasoning methods are summarized, and the research and applications of knowledge reasoning techniques in TCM in recent years are sorted out. Finally, we summarize the problems faced in the development of knowledge reasoning in TCM, and put forward the importance of constructing a knowledge reasoning model suitable for the field of TCM.

基于知识图的中医知识推理研究
随着互联网的广泛使用,中医药领域的数据量呈指数级增长。因此,有用知识的收集及其有效的组织和表达受到了很大的关注。知识图谱由此产生,基于该工具的知识推理成为研究热点之一。本文首先简要介绍了知识图和知识推理的发展,探讨了知识推理的意义。其次,介绍了主流的知识推理方法,包括基于传统规则的知识推理、基于分布式特征表示的知识推理和基于神经网络的知识推理。然后,以中风为例,阐述了知识推理方法,总结了常用知识推理方法的原理和特点,并对近年来中医知识推理技术的研究和应用进行了梳理。最后,总结了知识推理在中医领域发展中面临的问题,提出了构建适合中医领域的知识推理模型的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Digital Chinese Medicine
Digital Chinese Medicine Medicine-Complementary and Alternative Medicine
CiteScore
1.80
自引率
0.00%
发文量
126
审稿时长
63 days
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