DOI QR코드

DOI QR Code

Knowledge Conversion between Conceptual Graph Model and Resource Description Framework

  • Kim, Jin-Sung (School of Business Administration, Jeonju University)
  • Published : 2007.02.25

Abstract

On the Semantic Web, the content of the documents must be explicitly represented through metadata in order to enable contents-based inference. In this study, we propose a mechanism to convert the Conceptual Graph (CG) into Resource Description Framework (RDF). Quite a large number or representation languages for representing knowledge on the Web have been established over the last decade. Most of these researches are focused on design of independent knowledge description. On the Semantic Web, however, a knowledge conversion mechanism will be needed to exchange the knowledge used in independent devices. In this study, the CG could give an entire conceptual view of knowledge and RDF can represent that knowledge on the Semantic Web. Then the CG-based object oriented PROLOG could support the natural inference based on that knowledge. Therefore, our proposed knowledge conversion mechanism will be used in the designing of Semantic Web-based knowledge representation and inference systems.

Keywords

References

  1. Yao, H. and Etzkorn, L., Automated conversion between different knowledge representation formats, KnowledgeBased Systems, 19,404-412, 2006
  2. Sowa, J.P., Conceptual graph standard, working document: ISO/JTCl/SC 32/WG2 N 000, 2001-04-02, http://www.jfsowa.com/cg/cgstand.htm. 2001
  3. Kabbaj, A. and Petersen, D., PROLOG+CG version 2.0 user's manual, http://prologpluscg.sourceforge.net, 2006
  4. Corby, O., Dieng, R., Hebert, C., A conceptual graph model for W3C resource description framework, Proceedings of the 8th International Conference on Conceptual Structures (ICCS '2000), Berlin, August 2000
  5. Loke, S.W., Declarative programming of integrated peerto-peer and Web bases systems: the case of Prolog, The Journal of Systems and Software, 79, 523-536, 2006 https://doi.org/10.1016/j.jss.2005.04.005
  6. Dibie-Barthelemy, J., Haernmerle, O., and Salvat, E., A semantic validation of conceptual graphs, Knowledge Based Systems, 19, 489-510, 2006 https://doi.org/10.1016/j.knosys.2006.04.013
  7. Sowa, J.F., Conceptual structures: Information processing in minds and machines, Addison- Wesley, Reading, MA, 1984
  8. Kayed, A. and Colomb, R.M., Using BWW model to evaluate building ontologies in CGs formalism, Information Systems, 30, 379-398, 2005 https://doi.org/10.1016/j.is.2004.03.002
  9. Jena, A Semantic Web framework for Java, http://jena.sourceforge.net, accessed Sep. 11, 2006
  10. Southey, F. and Linders, lo', Notio - A Java API for developing CG tools, Proceedings of the 9th International Conference on Conceptual Structures (ICCS '99), Springer- Verlag, 1999

Cited by

  1. A New Evolutionary Particle Filter for the Prevention of Sample Impoverishment vol.13, pp.4, 2009, https://doi.org/10.1109/TEVC.2008.2011729