Survey of Agricultural Knowledge Graph

被引:4
作者
Tang, Wentao [1 ]
Hu, Zelin [1 ]
机构
[1] School of Physics and Electronic Information, Gannan Normal University, Jiangxi, Ganzhou
关键词
agriculture knowledge graph; knowledge extraction; knowledge fusion; knowledge reasoning; ontology;
D O I
10.3778/j.issn.1002-8331.2305-0203
中图分类号
学科分类号
摘要
Knowledge graphs are a key technology in the era of big data, specifically for knowledge engineering. Utilizing the powerful semantic understanding and knowledge organization capabilities of knowledge graphs, issues such as scattered and disordered agricultural knowledge, and insufficient coverage of knowledge in the construction of modern agriculture can be resolved. Firstly, considering the complexity and specialty of agricultural data, the construction methods and framework of agricultural knowledge graphs are introduced. Secondly, the current domestic and international research status of the four key technologies in the construction of agricultural knowledge graphs-ontology construction, knowledge extraction, knowledge fusion, and knowledge reasoning are reviewed. Furthermore, the systematic applications of agricultural knowledge graphs in decision support, intelligent question-answering systems, and recommendation systems are sorted out. Lastly, several specific instances of agricultural knowledge graphs are presented. Based on the current status of research on agricultural knowledge graphs, prospects for its future research directions are offered. © 2016 Chinese Medical Journals Publishing House Co.Ltd. All rights reserved.
引用
收藏
页码:63 / 76
页数:13
相关论文
共 91 条
[21]  
DEEPA R, VIGNESHWARI S., An effective automated ontology construction based onthe agriculture domain, ETRI Journal, 44, 4, pp. 573-587, (2022)
[22]  
SAAT N L Y, NOAH S M., Rule-based approach for automatic ontology population of agriculture domain, Inform Technology, 15, 2, pp. 46-51, (2016)
[23]  
WANG Y, WANG Y, WANG J, Et al., An ontology-based approach to integration of hilly citrus production knowledge, Computers and Electronics in Agriculture, 113, pp. 24-43, (2015)
[24]  
LIU Q N., Construction of urban agriculture ontology oriented to digital humanities, Library Journal, 38, 8, pp. 53-58, (2019)
[25]  
LIU G F, YANG Q, LIU Q., Ontology construction and visualization display of agricultural science data set-taking the field of“Cotton Disease Control”as an example, Journal of Intelligence, 41, 9, pp. 143-149, (2022)
[26]  
WANG H F, GUI Q L, CHEN H J., Knowledge graph: method, practice and application, (2019)
[27]  
TIAN L, ZHANG J C, ZHANG J H, Et al., Knowledge graph survey: representation, construction, reasoning and knowledge hypergraph theory, Journal of Computer Applications, 41, 8, pp. 2161-2186, (2021)
[28]  
EFTIMOV T, SELJAK B K, KOROSEC P., A rule- based named- entity recognition method for knowledge extraction of evidence- based dietary recommendations, PLoS One, 12, 6, (2017)
[29]  
CHATTERJEE N, KAUSHIK N., RENT: regular expression and NLP-based term extraction scheme for agricultural domain, Proceedings of the International Conference on Data Engineering and Communication Technology, pp. 511-522, (2017)
[30]  
ZHOU G D., Recognizing names in biomedical texts using mutual information indepenence model and SVM plus sigmoid, International Journal of Medical Informatics, 75, 6, pp. 456-467, (2006)