[Objective]Design and implement a semantic knowledge management system for the Derwent patent data. [Context] The proposed system collects the patent data as well as the semantic relations among them. It could retrieve patent information with semantic relation. [Methods] First, we analyzed the Derwent patent data and the semantic relations among the data. Second, we modified the method of patent semantic representation based on Ontology. Third, we proposed a Derwent patent graph data model based on property graph model. Finally, we used the Neo4j graphic database to store the instantiated patent data. [Results] We built a semantic knowledge management system using cloud computing technology patents. The new system showed stronger semantic integrity and faster retrieval speed than traditional ones. [Conclusions] The proposed patent semantic knowledge management system offers stable and efficient solutions for organizing and storing patent data.
Studer R, Benjamins V R, Fensel D.Knowledge Engineering: Principles and Methods[J]. Data & Knowledge Engineering, 1998, 25(1-2): 161-197.
[3]
Ghoula N, Khelif K, Dieng-Kuntz R.Supporting Patent Mining by Using Ontology-based Semantic Annotations [C]. In: Proceedings of the 2007 IEEE/WIC/ACM International Conference on Web Intelligence. 2007: 435-438.
[4]
Giereth M, Koch S, Kompatsiaris Y, et al.A Modular Framework for Ontology-based Representation of Patent Information [C]. In: Proceedings of the 20th Conference on Legal Knowledge and Information Systems, Leiden, the Netherlands. 2007: 49-58.
[5]
Taduri S, Lau G T, Law K H, et al.An Ontology to Integrate Multiple Information Domains in the Patent System[C]. In: Proceesings of the 2011 IEEE International Symposium on Technology and Society. IEEE, 2011:1-9.
(Wang Yulan.Comparison of Graphic Database NEO4J and Relational Database[J]. Modern Electronics Technique, 2012, 35(20): 77-79.)
[9]
Elbattah M, Roushdy M, Aref M, et al.Large-scale Ontology Storage and Query Using Graph Database-oriented Approach: The Case of Freebase [C]. In: Proceedings of the 7th International Conference on Intelligent Computing and Information Systems. 2015.
[10]
Lampoltshammer T, Wiegand S.Improving the Computational Performance of Ontology-Based Classification Using Graph Databases[J]. Remote Sensing, 2015, 7(7): 9473-9491.
(Li Jia’nan, Wang Yuefen, Yan Duanwu.Research on the Construction of the Semantic Knowledge Base of Library Resources and Service Platform — Taking Taiwan as an Example[J]. Research on Library Science, 2014(22): 29-35.)
(Wang Ying, Zhang Zhixiong, Sun Hui, et al.Construction of Knowledge Retrieval Platform Based on Historic Ontology of the People’s Republic of China[J]. Library and Information Service, 2015, 59(16): 119-128.)
(Zhang Hui, Hou Xia, Li Ning.A Research on Ontology Storage Method[J]. Journal of Beijing Information Science & Technology University, 2016, 31(3): 59-63.)
[14]
本体语言[EB/OL]. [2015-12-21]..
[14]
(Ontology Language [EB/OL]. [2015-12-21].. )
[15]
王立轻. 基于本体的互联网专利信息检索技术研究[D]. 北京: 北京工业大学, 2010.
[15]
(Wang Liqing.Research on Internet Patent Information Retrieval Technology Based on Ontology [D]. Beijing: Beijing University of Technology, 2010.)
(Zhai Dongsheng, He Wenhui.Design and Implementation of Data Integration over Heterogeneous Patent Sources[J]. New Technology of Library and Information Service, 2010(9): 67-73.)
(Zhai Dongsheng, Li Qian, Zhang Jie.The Research of ETL and Annotation Model Construction of Derwent Patent Information[J]. Journal of Intelligence, 2013, 32(8): 150-154.)
(Zhai Dongsheng, Cai Liwei, Zhang Jie.The Study of Patent-based Model for Identifying Technology Fusion Innovation Trajectory Illustrated by the Case of Cloud Computing Technology[J]. Journal of the China Society for Scientific and Technical Information, 2015, 34(4): 352-360.)