中文    English

Agricultural Library and Information ›› 2019, Vol. 31 ›› Issue (1): 44-53.doi: 10.13998/j.cnki.issn1002-1248.2019.01.005

;

• Research paper • Previous Articles     Next Articles

Research and Practices From the Thesaurus to Knowledge Graph

CHEN Qingyun1, CAO Jianfei2, CHEN Rongzhen3   

  1. 1.Shanghai Changhua Information Technology Co., Ltd , Shanghai 201199, China;
    2.CAE Center for Strategic Studies, Beijing 100088, China;
    3.Key Laboratory of Universal Wireless Communication, Beijing University of Posts and Telecommunications, Beijing 100876, China
  • Received:2018-01-01 Online:2019-01-05 Published:2019-03-12

Abstract: The library and information science has long been dedicated to designing tools for organizing and managing large amounts of knowledge information. These tools are often referred to as "Knowledge Organization System" (KOS) or "controlled structured vocabularies". Due to the long-term independent development of multiple community and business standard, a variety of different knowledge organization systems have emerged, such as subject heading systems, thesaurus, taxonomies. The thesaurus has the relations like "U", "UF", "BT", "NT"and "CT", which is organized as a network in storage. And This paper develops a method to store thesaurus in a knowledge graph structure, which also has a good effect in the data reasoning. In this paper, the main research was based on the 1990"Mechanical Engineering Thesauri" - Second Edition. By using data cleaning techniques, this paper reconstructed the traditional knowledge organization system "Mechanical Engineering Thesaurus" data into a SKOS knowledge ontology structure. By using data storage techniques, this paper stored the SKOS knowledge ontology structure in Graph database Neo4j. These knowledge organization systems make it possible to effectively organize and manage large amounts of information data.

Key words: simple knowledge organization system, SKOS, thesaurus, graph database, Neo4j, knowledge graph

CLC Number: 

  • G203
[1] Miles A, Bechhofer S.SKOS Simple Knowledge Organization System Reference[J]. World Wide Web Consortium, 2009.
[2] 机械工程叙词表编制组. 机械工程叙词表[M]. 北京: 机械工业出版社, 1990.
[3] 贾君枝. 简单知识组织系统与汉语主题词表[J]. 中国图书馆学报, 2008, 34(1):75-78.
[4] 刘丽斌, 张寿华, 濮德敏, 等. 《中国分类主题词表》的SKOS描述自动转换研究[J]. 中国图书馆学报, 2009, 35(6):56-60.
[5] 鲜国建, 赵瑞雪, 寇远涛, 等. 农业科学叙词表关联数据构建研究与实践[J]. 现代图书情报技术, 2013, 29(11):8-14.
[6] 贾君枝, 杨洁, 卫荣娟. 《汉语主题词表》简单知识组织系统表示的自动转换设计[J]. 情报理论与实践, 2011, 34(5):54-57.
[7] 刘华梅. 《中国分类主题词表》主题词SKOS化描述及自动转换研究[J]. 图书馆建设, 2014(8):29-32.
[8] Robinson I, Webber J, Eifrem E.Graph databases[M]. " O'Reilly Media, Inc.", 2013.
[9] 常春. 网络环境下叙词表编制与发展[M]. 科学技术文献出版社, 2015.
[10] Miles A, Bechhofer S.SKOS simple knowledge organization system extension for labels (SKOS-XL)[J]. W3C, W3C Recommendation, 2009.
[11] Lal M.Neo4j Graph Data Modeling[C]// Packt Publishing, 2015.
[12] 王伟. 计算机科学前沿技术[M]. 北京: 清华大学出版社, 2012.
[1] CHANG ZhiJun, XU LiYuan, YU QianQian, ZHANG JianYong, WANG YongJi. Scientific and Technical Literature Data Management System Based on Life Cycle Model [J]. Journal of Library and Information Science in Agriculture, 2022, 34(6): 36-49.
[2] YANG Siluo, TIAN Peilin, ZHU Chuanyu, QIU Junping. Characteristics of UNESCO's Humanities and Social Sciences Research: Topic, Evolution and Cooperation [J]. Journal of Library and Information Science in Agriculture, 2021, 33(6): 6-17.
[3] XU Yongle, CHEN Yuanyuan, YANG Tingting, WAN Xiangli. Comparative Analysis of the Research on the Influence of Chinese and International Think Tanks [J]. Journal of Library and Information Science in Agriculture, 2021, 33(11): 50-62.
[4] LYU Lucheng, HAN Tao. Artificial Intelligence Empowers Library and Information Service ——Review of Forums about Information Technology for Library 2019 [J]. Journal of Library and Information Science in Agriculture, 2020, 32(5): 13-18.
[5] LI Zhongjun, SUN Ruiying, ZHANG Tao. Analysis of the Research Status of Public Opinion Ecology in China Based on Bibliometrics (2004-2019) [J]. Journal of Library and Information Science in Agriculture, 2020, 32(2): 5-13.
[6] ZHANG Tao, SUN Ruiying, LI Zhongjun. Subject Clustering and Evolutionary Trend of Public Opinion Documents in China [J]. Journal of Library and Information Science in Agriculture, 2020, 32(2): 14-21.
[7] ZHI Yingying. Exploration on the Application of Machine Learning in Library Discover System —Taking the Discover Tool Yewno Based on Knowledge Graph as Example [J]. , 2018, 30(7): 47-50.
[8] CHEN Fen, ZHU Tianxiu. Research on University Library's Subject Service Based on Bibliometrics and Knowledge Graph Analysis [J]. , 2018, 30(1): 99-103.
[9] TIAN Tian. Analysis of Information Service Visualization Graph Based on CiteSpace Ⅲ [J]. , 2015, 27(8): 52-56.
[10] ZHAO Lai-juan. Visualized Analysis on the Research Hotspots of Mobile Library in China [J]. , 2015, 27(8): 46-51.
[11] ZHOU Jian. Principles and Practice of Military Subject Retrieval language Compilation [J]. , 2015, 27(6): 122-124.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!