Open Access Open Access  Restricted Access Subscription Access

Optimizing Ontology Mapping Using Genetic Algorithms (OOMGA)


Affiliations
1 Department of Computer Science, Guru Nanak Girls College, Yamuna Nagar, Haryana, India
 

Ontologies play a vital role in knowledge representation in artificial intelligent systems. With emergence and acceptance of semantic web and associated services offered to the users, more and more ontologies have been developed by various stack-holders. Different ontologies need to be mapped for various systems to communicate with each other. Ontology mapping is an open research issue in web semantics. Exact mapping of ontologies is rare to achieve so it’s an optimization problem. This work presents and optimized ontology mapping mechanism which deploys genetic algorithm.

Keywords

Genetic Algorithm, Ontology, Ontology Alignment, Ontology Mapping, Optimized Ontology Mapping.
User
Notifications
Font Size

  • Maedche, A., &Staab, S. (2001). Comparing ontologies-similarity measures and a comparison study (p. 16). AIFB.
  • Martinez-Gil, J., Alba, E., & Aldana-Montes, J. F. (2008, October). Optimizing ontology alignments by using genetic algorithms. In Proceedings of the workshop on nature based reasoning for the semantic Web. Karlsruhe, Germany.
  • Hartung, M., Kolb, L., Groß, A., & Rahm, E. (2013, January). Optimizing Similarity Computations for Ontology Matching-Experiences from GOMMA. In Data Integration in the Life Sciences (pp. 81-89).
  • Springer Berlin Heidelberg.
  • Wiesman, F., & Roos, N. (2004, July). Domain independent learning of ontology mappings. In Proceedings of the Third International Joint Conference on Autonomous Agents and Multiagent Systems-Volume 2 (pp. 846-853). IEEE Computer Society.
  • Euzenat J. (2004), ‘Evaluating Ontology Alignment Methods’. Published in proceedings of Dagstuhl Seminar on Semantic Interoperability and Integration, September 2004, Wadern, Germany.
  • Malhotra R., Singh N. and Singh Y. (2011), ‘Genetic Algorithms: Concepts, Design for Optimization of Process Controllers’. Published by Canadian Center of Science and Education in International Journal of Computer and Information Science, Vol. 4, No.2, March 2011,pp. 39-54.
  • Man, K.,F., Tang, K.,S. and Kwong, S. (1996). Genetic Algorithms: Concepts and Applications. IEEE Transactions on Industrial Electronics, 43(5),519-534, OCTOBER 1996.
  • Wang, J., Ding, Z., & Jiang, C. (2006, December). GAOM: Genetic algorithm based ontology matching.
  • In Services Computing, 2006. APSCC'06. IEEE Asia-Pacific Conference on (pp. 617-620). IEEE.
  • Doan, A., Madhavan, J., Domingos, P., & Halevy, A. (2004). Ontology matching: A machine learning approach. In Handbook on ontologies (pp. 385-403). Springer Berlin Heidelberg. (GLUE Approach)
  • Singh, A., Juneja, D., & Sharma, A. K. (2011). Design of an Intelligent and Adaptive Mapping Mechanism for Multiagent Interface. In High Performance Architecture and Grid Computing (pp. 373-384). Springer Berlin Heidelberg.
  • Singh, A., Juneja, D., & Sharma, A. K. (2010). General Design Structure of Ontological Databases in Semantic Web. International Journal of Engineering Science and Technology, 2(5), 12271232.
  • Singh, A. and Anand,P.(2013). State of Art in Ontology Development Tools. International Journal of Advances in Computer Science & Technology, 2(7),96-101, July 2013.
  • Singh, A. and Anand,P. (2013). Automatic Domain Ontology Construction Mechanism.
  • Lin, F., &Sandkuhl, K. (2008). A survey of exploiting wordnet in ontology matching. In Artificial Intelligence in Theory and Practice II (pp. 341-350). Springer US.
  • Ehrig, M., & Sure, Y. (2004). Ontology Mapping-an integrated approach. In the Semantic Web: Research and Applications (pp. 76-91). Springer Berlin Heidelberg.
  • Lee, W. N., Shah, N., Sundlass, K., &Musen, M. (2008). Comparison of ontology-based semanticsimilarity measures. In AMIA annual symposium proceedings (Vol. 2008, p. 384). American Medical Informatics Association.
  • Gruber, T. R. (1995). Toward principles for the design of ontologies used for knowledge sharing. International journal of human-computer studies, 43(5), 907-928.
  • Gao, Y., & Gao, W. (2012). Ontology similarity measure and ontology mapping via learning optimization similarity function. International Journal of Machine Learning and Computing, 2(2), 107-112.
  • Turney, P. D., &Pantel, P. (2010). From frequency to meaning: Vector space models of semantics. Journal of artificial intelligence research, 37(1), 141-188.
  • Chitra, S., &Aghila, G. (2014). A survey on tools and algorithms of ontology operations. Research Journal of Engineering Sciences, 3(5), 12-25, May 2014.
  • Jing, L., Zhou, L., Ng, M. K., & Huang, J. Z. (2006, April). Ontology-based distance measure for text clustering. In Proceedings of the Text Mining Workshop, SIAM International Conference on Data Mining (Vol. 23).
  • Thada, V., &Jaglan, V. (2013). Comparison of Jaccard, Dice, Cosine similarity coefficient to find best fitness value for web retrieved documents using genetic algorithm. International journal of Innovations in Engineering and Technology (IJIET), 2(4), 202-205, August 2013.
  • Renjith, S., & Chandrika, A. (2013). Fitness function in genetic algorithm based information filtering- a survey. International Journal of Computer Science and Mobile Computing, 80-86, December 2013.
  • http://www.merriam-webster.com/dictionary/ optimization

Abstract Views: 197

PDF Views: 0




  • Optimizing Ontology Mapping Using Genetic Algorithms (OOMGA)

Abstract Views: 197  |  PDF Views: 0

Authors

Aarti Singh
Department of Computer Science, Guru Nanak Girls College, Yamuna Nagar, Haryana, India

Abstract


Ontologies play a vital role in knowledge representation in artificial intelligent systems. With emergence and acceptance of semantic web and associated services offered to the users, more and more ontologies have been developed by various stack-holders. Different ontologies need to be mapped for various systems to communicate with each other. Ontology mapping is an open research issue in web semantics. Exact mapping of ontologies is rare to achieve so it’s an optimization problem. This work presents and optimized ontology mapping mechanism which deploys genetic algorithm.

Keywords


Genetic Algorithm, Ontology, Ontology Alignment, Ontology Mapping, Optimized Ontology Mapping.

References