Username   Password       Forgot your password?  Forgot your username? 

 

Construction of a Massive Heterogeneous Minority Cultural Resource Integration Model based on Ontology

Volume 15, Number 3, March 2019, pp. 902-909
DOI: 10.23940/ijpe.19.03.p19.902909

Ying Liua,b, Bin Wena, Juxiang Zhoub, and Jianhou Ganb

aSchool of Information Science and Technology, Yunnan Normal University, Kunming, 650500, China
bKey Laboratory of Educational Informatization for Nationalities of Ministry of Education, Yunnan Normal University, Kunming, 650500, China

(Submitted on October 21, 2018; Revised on November 25, 2018; Accepted on December 28, 2018)

Abstract:

At present, the sharing and dissemination of cultural resources of minorities in China remain at the early information service stage based on search engine and database query, with slow content updates, closed structure, independence from other databases, and disconnection of content, and they are far from meeting the actual needs of the sharing and dissemination of cultural resources of ethnic minorities. Therefore, aiming at the heterogeneity problem in the sharing and service of minority cultural resources and based on theories and methods such as domain ontology and Map Reduce, this paper first constructs a multi-source heterogeneous integrated model of massive minority cultural resources, Then, an example of Wa nationality is applied to construct the resource domain ontology of ethnic minorities and expand the domain. Finally, on the basis of semantic distance, a method of weighted comprehensive semantic similarity calculation is proposed and verified. The experimental results show that the similarity of the parent node and each child node in Wa hierarchical tree is different, and the similarity result is more reasonable than the original method.

 

References: 21

        1. X. K. Chen, “An Analysis of the Historical Development of The Inheritance and Protection Policy of New Chinese National Culture,” Studies of Ethnic Higher Education, Vol. 5, No. 3, pp. 27-33, July 2017
        2. W. Y. Zhu, W. Liu, and Z. T. Liu, “Comprehensive Approach for Event Ontology Similarity Computation,” Journal of Computer Applications, Vol. 36, No. 8, pp. 1-3, April 2018
        3. G. D. Giacomo, D. Lembo, and M. Lenzerini, “Using Ontologies for Semantic Data Integration,” A Comprehensive Guide Through the Italian Database Research Over the Last 25 Years, Vol. 5, No. 31, pp. 187-202, May 2017
        4. N. T. Nguyen, B. Trawiński, and J. J. Jung, “New Challenges for Intelligent Information and Database Systems,” Studies in Computational Intelligence, January 2011
        5. Z. B. Cheng, T. Y. Shi, and Y. J. Wang, “Semantic Integration Method of Railway Geographic Information Classification based on Formal Ontology,” Railway Transport and Economy, Vol. 39, No. 1, pp. 88-94, March 2017
        6. J. Wang, C. S. Liu, and C. X. Qin, “Semantic Integration Method of Knowledge Elements based on Fuzzy Petri Net,” Information Studies Theory & Practice, Vol. 40, No. 9, pp. 140-144, October 2017
        7. X. L. Liu, X. H. Liu, Q. P. Shi, et al., “Research on Coal Mine Safety Ontology,” Industrial and Mining Automation, Vol. 44, No. 3, pp. 42-49, March 2018
        8. Y. Z. Li, et al., “Research on E-Government Heterogeneous Data Integration with Hybrid Ontology Method,” Journal of University of Electronic Science and Technology of China (Social Sciences Edition), Vol. 18, No. 5, pp. 17-20, October 2016
        9. L. F. Fang, “Ontology-based Heterogeneous Data Integration and Fusion Method,” University of Science and Technology of China, May 2010
        10. C. Dong, “Research on Information Isolated Islands in Universities’ Functional Department based on Ontology Integration,” Central China Normal University, May 2015
        11. Y. P. Chen, “Ontology-based Vector Data Consistency Check,” Zhejiang University, May 2017
        12. J. Cheng, C. Sang, and Y. M. Shi, “Knowledge Integration and Semantic Annotation in Closed-Loop Lifecycle Management System,” Journal of Computer Applications, Vol. 37, No. 6, pp. 1728-1734, July 2017
        13. X. Liu, “Research on Key Technologies of Domain Data Integration and Service,” University of Science and Technology Beijing, December 2016
        14. H. Y. Li, H. Xiao, and P. Y. Zhang, “Domain XML Semantic Integration based on Extraction Rules and Ontology Mapping,” Journal of Hebei University of Science and Technology, Vol. 37, No. 4, pp. 416-422, August 2016
        15. W. Q. Zheng, “Automatic Semantic Retrieval and Visualization Model based on Ontology Integration,” Information Science, Vol. 31, No. 5, pp. 77-83, May 2013
        16. H. Jia and Y. Z. Xu, “Ontology Concept Similarity Calculation based on Tree Structure,” Journal of Computer Systems, Vol. 26, No. 3, pp. 275-279, March 2017
        17. H. Z. Li, X. Q. Wang, and B. L. Zhang, “Overview of Ontology Research,” Journal of Intelligence, Vol. 35, No. 6, pp. 163-170, July 2016
        18. J. Y. Pan, “Research on Ontology-based Heterogeneous Data Integration,” Donghua University, December 2013
        19. H. X. Sun, et al., “A Review of Research on Semantic Similarity Calculation Methods based on Ontology,” New Library and Information Technology, Vol. 26, No. 1, pp. 51-56, January 2010
        20. H. Zhang, et al., “Improved Ontology-based Semantic Similarity Calculation Algorithm,” Computer Engineering and Design, Vol. 36, No. 8, pp. 2206-2210, September 2015
        21. Y. X. He, B. M. Shi, and Y. Zhang, “Research on Ontology-based Semantic Similarity Algorithm,” Computer Applications and Software, Vol. 30, No. 11, pp. 312-315, December 2013

         

        Please note : You will need Adobe Acrobat viewer to view the full articles.Get Free Adobe Reader

         
        This site uses encryption for transmitting your passwords. ratmilwebsolutions.com