|
|
Constructing Knowledge Graph for Business Environment |
Liu Kan(),Xu Qinya,Yu Lu |
School of Information and Safety Engineering, Zhongnan University of Economics and Law, Wuhan 430073,China |
|
|
Abstract [Objective] This paper builds knowledge graph for business environment to improve the utilization of resources, aiming to discover the internal entity relationship of development factors, and analyze government decision-making. [Methods] We constructed the knowledge graph based on business environment policy of Beijing, and proposed a knowledge extraction method integrating dependency syntax analysis and semantic role annotation. Then, we constructed a combined classifier to identify entity relationship triples, calculate semantic similarity, as well as perform relationship name fusion and alignment. We also designed an experiment to explore the performance of trans R model in different link prediction tasks. Finally, we identified the main influencing factors and used adjustment strategies to complete knowledge reasoning. [Results] The newly constructed knowledge graph contains 31,955 entities, 1,847 relationships and 45,682 triples. The data was stored and visualized with Neo4j and Gephi, which also supported knowledge query using cypher statement. [Limitations] Due to the complex context information, more research is needed to build a model for unclear entities to improve the performance of knowledge extraction and the quality of knowledge graph triples. [Conclusions] Our new knowledge graph could help to build an effective Q&A system, and improve the government decision-making to optimize business environment.
|
Received: 23 August 2021
Published: 12 May 2022
|
|
Fund:Cross-disciplinary Innovative Research Project Funded by the Fundamental Research Funds of the Central Universities(2722020JX007);Postgraduate Practical Innovation Project of Zhongnan University of Economics and Law(202151420) |
Corresponding Authors:
Liu Kan,ORCID:0000-0002-9686-9768
E-mail: liukan@zuel.edu.cn
|
[1] |
Bollacker K, Evans C, Paritosh P, et al. Freebase: A Collaboratively Created Graph Database for Structuring Human Knowledge[C]//Proceedings of the 2008 ACM SIGMOD International Conference on Management of Data. 2008: 1247-1250.
|
[2] |
Etzioni O, Cafarella M, Downey D, et al. Web-Scale Information Extraction in Knowitall: (Preliminary Results)[C]//Proceedings of the 13th International Conference on World Wide Web. 2004: 100-110.
|
[3] |
Suchanek F M, Kasneci G, Weikum G. Yago: A Core of Semantic Knowledge[C]//Proceedings of the 16th International Conference on World Wide Web. 2007: 697-706.
|
[4] |
Auer S, Bizer C, Kobilarov G, et al. DBpedia: A Nucleus for a Web of Open Data[C]//Proceedings of the 6th International Semantic Web Conference. 2007: 722-735.
|
[5] |
Carlson A, Betteridge J, Kisiel B, et al. Toward an Architecture for Never-Ending Language Learning[C]//Proceedings of the 24th AAAI Conference on Artificial Intelligence. 2010:1306-1313.
|
[6] |
Dong X, Gabrilovich E, Heitz G, et al. Knowledge Vault: A Web-Scale Approach to Probabilistic Knowledge Fusion[C]//Proceedings of the 20th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. 2014: 601-610.
|
[7] |
许智宏, 于子琪, 董永峰, 等. 影评情感分析知识图谱构建研究[J]. 计算机仿真, 2020, 37(8):424-430.
|
[7] |
( Xu Zhihong, Yu Ziqi, Dong Yongfeng, et al. Research on Constructing the Knowledge Graph Based on Emotional Analysis of Film Review[J]. Computer Simulation, 2020, 37(8):424-430.)
|
[8] |
欧阳剑, 梁珠芳, 任树怀. 大规模中国历代存世典籍知识图谱构建研究[J]. 图书情报工作, 2021, 65(5):126-135.
|
[8] |
( Ouyang Jian, Liang Zhufang, Ren Shuhuai. Research on the Construction of Knowledge Graph of Large-Scale Chinese Ancient Books[J]. Library and Information Service, 2021, 65(5):126-135.)
|
[9] |
刘鹏, 叶帅, 舒雅, 等. 煤矿安全知识图谱构建及智能查询方法研究[J]. 中文信息学报, 2020, 34(11):49-59.
|
[9] |
( Liu Peng, Ye Shuai, Shu Ya, et al. Coalmine Safety: Knowledge Graph Construction and Its QA Approach[J]. Journal of Chinese Information Processing, 2020, 34(11):49-59.)
|
[10] |
Shen G W, Wang W L, Mu Q L, et al. Data-Driven Cybersecurity Knowledge Graph Construction for Industrial Control System Security[J]. Wireless Communications and Mobile Computing, 2020: 8883696.
|
[11] |
Fang W L, Ma L, Love P E D, et al. Knowledge Graph for Identifying Hazards on Construction Sites: Integrating Computer Vision with Ontology[J]. Automation in Construction, 2020, 119:103310.
doi: 10.1016/j.autcon.2020.103310
|
[12] |
Huang H C, Hong Z, Zhou H M, et al. Knowledge Graph Construction and Application of Power Grid Equipment[J]. Mathematical Problems in Engineering, 2020: 8269082.
|
[13] |
廖开际, 黄琼影, 席运江. 在线医疗社区问答文本的知识图谱构建研究[J]. 情报科学, 2021, 39(3):51-59.
|
[13] |
( Liao Kaiji, Huang Qiongying, Xi Yunjiang. Knowledge Graph Construction of Online Medical Community Q&A Texts[J]. Information Science, 2021, 39(3):51-59.)
|
[14] |
Rotmensch M, Halpern Y, Tlimat A, et al. Learning a Health Knowledge Graph from Electronic Medical Records[J]. Scientific Reports, 2017, 7:5994.
doi: 10.1038/s41598-017-05778-z
pmid: 28729710
|
[15] |
Wang L, Xie H M, Han W T, et al. Construction of a Knowledge Graph for Diabetes Complications from Expert-Reviewed Clinical Evidences[J]. Computer Assisted Surgery (Abingdon), 2020, 25(1):29-35.
|
[16] |
Xiu X L, Qian Q, Wu S Z. Construction of a Digestive System Tumor Knowledge Graph Based on Chinese Electronic Medical Records: Development and Usability Study[J]. JMIR Medical Informatics, 2020, 8(10):e18287.
doi: 10.2196/18287
|
[17] |
向军毅, 胡慧君, 刘宇, 等. COVID-19物资知识图谱的构建[J]. 武汉大学学报(理学版), 2020, 66(5):409-417.
|
[17] |
( Xiang Junyi, Hu Huijun, Liu Yu, et al. Construction of COVID-19 Supplies Knowledge Graph[J]. Journal of Wuhan University (Natural Science Edition), 2020, 66(5):409-417.)
|
[18] |
杜志强, 李钰, 张叶廷, 等. 自然灾害应急知识图谱构建方法研究[J]. 武汉大学学报(信息科学版), 2020, 45(9):1344-1355.
|
[18] |
( Du Zhiqiang, Li Yu, Zhang Yeting, et al. Knowledge Graph Construction Method on Natural Disaster Emergency[J]. Geomatics and Information Science of Wuhan University, 2020, 45(9):1344-1355.)
|
[19] |
Xiao Z W, Zhang C X. Construction of Meteorological Simulation Knowledge Graph Based on Deep Learning Method[J]. Sustainability, 2021, 13(3):1311.
doi: 10.3390/su13031311
|
[20] |
吴赛赛, 周爱莲, 谢能付, 等. 基于深度学习的作物病虫害可视化知识图谱构建[J]. 农业工程学报, 2020, 36(24):177-185.
|
[20] |
( Wu Saisai, Zhou Ailian, Xie Nengfu, et al. Construction of Visualization Domain-Specific Knowledge Graph of Crop Diseases and Pests Based on Deep Learning[J]. Transactions of the Chinese Society of Agricultural Engineering, 2020, 36(24):177-185.)
|
[21] |
Zhang Y H, Zhu J, Zhu Q, et al. The Construction of Personalized Virtual Landslide Disaster Environments Based on Knowledge Graphs and Deep Neural Networks[J]. International Journal of Digital Earth, 2020, 13(12):1637-1655.
doi: 10.1080/17538947.2020.1773950
|
[22] |
申云凤, 王英杰. 基于网络新闻语料的公共危机事件知识图谱构建[J]. 情报科学, 2021, 39(1):72-80.
|
[22] |
( Shen Yunfeng, Wang Yingjie. Knowledge Mapping of Public Crisis Events Based on Internet News Corpus[J]. Information Science, 2021, 39(1):72-80.)
|
[23] |
邵琦, 牟冬梅, 王萍, 等. 基于语义的突发公共卫生事件网络舆情主题发现研究[J]. 数据分析与知识发现, 2020, 4(9):68-80.
|
[23] |
( Shao Qi, Mu Dongmei, Wang Ping, et al. Identifying Subjects of Online Opinion from Public Health Emergencies[J]. Data Analysis and Knowledge Discovery, 2020, 4(9):68-80.)
|
[24] |
吕华揆, 洪亮, 马费成. 金融股权知识图谱构建与应用[J]. 数据分析与知识发现, 2020, 4(5):27-37.
|
[24] |
( Lv Huakui, Hong Liang, Ma Feicheng. Constructing Knowledge Graph for Financial Equities[J]. Data Analysis and Knowledge Discovery, 2020, 4(5):27-37.)
|
[25] |
陈璟浩, 曾桢, 李纲. 基于知识图谱的“一带一路”投资问答系统构建[J]. 图书情报工作, 2020, 64(12):95-105.
|
[25] |
( Chen Jinghao, Zeng Zhen, Li Gang. A Question Answering System for “the Belt and Road” Investment Based on Knowledge Graph[J]. Library and Information Service, 2020, 64(12):95-105.)
|
[26] |
王飞, 刘井平, 刘斌, 等. 代码知识图谱构建及智能化软件开发方法研究[J]. 软件学报, 2020, 31(1):47-66.
|
[26] |
( Wang Fei, Liu Jingping, Liu Bin, et al. Survey on Construction of Code Knowledge Graph and Intelligent Software Development[J]. Journal of Software, 2020, 31(1):47-66.)
|
[27] |
高晨翔, 黄新荣. 区域政务微博知识图谱构建及可视化研究[J]. 现代情报, 2020, 40(12):90-99.
|
[27] |
( Gao Chenxiang, Huang Xinrong. Knowledge Graph Construction and Visualization of Regional Government Microblog[J]. Journal of Modern Information, 2020, 40(12):90-99.)
|
[28] |
Al-Khatib K, Hou Y F, Wachsmuth H, et al. End-to-End Argumentation Knowledge Graph Construction[C]//Proceedings of the AAAI Conference on Artificial Intelligence. 2020, 34(5):7367-7374.
|
[29] |
Nie Z W, Liu Y J, Yang L Y, et al. Construction and Application of Materials Knowledge Graph Based on Author Disambiguation: Revisiting the Evolution of LiFePO4[J]. Advanced Energy Materials, 2021, 11(16):2003580.
doi: 10.1002/aenm.202003580
|
[30] |
Buscaldi D, Dessì D, Motta E, et al. Mining Scholarly Publications for Scientific Knowledge Graph Construction[A]//Hitzler P, Kirrane S, Hartig O, et al. The Semantic Web: ESWC 2019 Satellite Events[M]. 2019: 8-12.
|
[31] |
王雨飞, 张睿嘉, 王光辉. 营商环境、“五通”合作与亚欧国家经济增长[J]. 中国行政管理, 2020(9):114-120.
|
[31] |
( Wang Yufei, Zhang Ruijia, Wang Guanghui. Business Environment, “Five Connectivity” Cooperation and Economic Growth of Asian and European Countries[J]. Chinese Public Administration, 2020(9):114-120.)
|
[32] |
Bétila R R. The Impact of Ease of doing Business on Economic Growth: A Dynamic Panel Analysis for African Countries[J]. SN Business & Economics, 2021, 1(10):1-34.
|
[33] |
许中缘, 范沁宁. 法治化营商环境的区域特征、差距缘由与优化对策[J]. 武汉大学学报(哲学社会科学版), 2021, 74(4):149-160.
|
[33] |
( Xu Zhongyuan, Fan Qinning. Regional Characteristics, Reasons of Differences and Optimization Countermeasures of a Law-Based Business Environment[J]. Wuhan University Journal (Philosophy & Social Science), 2021, 74(4):149-160.)
|
[34] |
董雪芹. 基于科学知识图谱的营商环境研究热点与趋势分析[J]. 现代商贸工业, 2021, 42(21):24-25.
|
[34] |
( Dong Xueqin. Research Hotspots and Trends of Business Environment Based on Scientific Knowledge Graph[J]. Modern Business Trade Industry, 2021, 42(21):24-25.)
|
[35] |
万超, 孔锴. 优化营商环境的路径——基于知识图谱分析的视角[J]. 沈阳大学学报(社会科学版), 2021, 23(2):172-178.
|
[35] |
( Wan Chao, Kong Kai. Path of Optimizing Business Environment—Perspective Based on Knowledge Map Analysis[J]. Journal of Shenyang University (Social Science), 2021, 23(2):172-178.)
|
[36] |
张秦, 孙长坪. 基于CiteSpace的我国营商环境研究重点与趋势的知识图谱分析[J]. 统计与管理, 2021, 36(11):124-128.
|
[36] |
( Zhang Qin, Sun Changping. Knowledge Graph Analysis of China’s Business Environment Research Priorities and Trends Based on CiteSpace[J]. Statistics and Management, 2021, 36(11):124-128.)
|
[37] |
Joulin A, Grave E, Bojanowski P, et al. Bag of Tricks for Efficient Text Classification[C]//Proceedings of the 15th Conference of the European Chapter of the Association for Computational Linguistics. 2017: 427-431.
|
[38] |
秦晓慧, 侯霞, 赵雪. 一种融合语义角色和依存句法的实体关系抽取算法[J]. 北京信息科技大学学报, 2019, 34(1):64-67.
|
[38] |
( Qin Xiaohui, Hou Xia, Zhao Xue. An Entity Relation Extraction Algorithm Based on Semantic Roles Labeling and Dependency Parsing[J]. Journal of Beijing Information Science & Technology University, 2019, 34(1):64-67.)
|
[39] |
王家辉, 夏志杰, 王诣铭, 等. 基于句法规则和社会网络分析的网络舆情热点主题可视化及演化研究[J]. 情报科学, 2020, 38(7):132-139.
|
[39] |
( Wang Jiahui, Xia Zhijie, Wang Yiming, et al. Visualization and Evolution of Hot Topics of Internet Public Opinion Based on Syntax Rules and Social Network Analysis[J]. Information Science, 2020, 38(7):132-139.)
|
[40] |
Lin Y, Liu Z, Sun M, et al. Learning Entity and Relation Embeddings for Knowledge Graph Completion[C]// Proceedings of the 29th AAAI Conference on Artificial Intelligence. 2015:2181-2187.
|
[41] |
程开原, 姚俊萍, 李晓军, 等. 时态网络中知识图谱推荐: 关键技术与研究进展[J]. 中国电子科学研究院学报, 2021, 16(2):174-183.
|
[41] |
( Cheng Kaiyuan, Yao Junping, Li Xiaojun, et al. Recommendation Based on Knowledge Graph in Temporal Networks: Key Technologies and Progress[J]. Journal of China Academy of Electronics and Information Technology, 2021, 16(2):174-183.)
|
[42] |
余传明, 张贞港, 孔令格. 面向链接预测的知识图谱表示模型对比研究[J]. 数据分析与知识发现, 2021, 5(11):29-44.
|
[42] |
( Yu Chuanming, Zhang Zhengang, Kong Lingge. Comparing Knowledge Graph Representation Models for Link Prediction[J]. Data Analysis and Knowledge Discovery, 2021, 5(11):29-44.)
|
|
Viewed |
|
|
|
Full text
|
|
|
|
|
Abstract
|
|
|
|
|
Cited |
|
|
|
|
|
Shared |
|
|
|
|
|
Discussed |
|
|
|
|