Towards Intelligent Ontology Alignment Systems for Question Answering: Challenges and Roadblocks
Maria Vargas-Vera and Miklos Nagy
Open University, Walton Hall, Milton Keynes, MK7 6AA, England, UK
Abstract—This paper introduces the main challenges and future research directions for the Ontology Alignment problem. To date a good number of ontology alignment solutions have been proposed. These solutions utilise a wide variety of techniques from machine learning to uncertain reasoning. However, none of the approaches have proved to be an integrated solution, which can be used by different communities. Since 2004, the Ontology Alignment Initiative (OAEI) has established an annual evaluation for systems that could be tested using the same datasets. This, of course, has helped to improve the work on ontology alignment, as the ontology community now has a set of common datasets to make comparisons on the performance of different algorithms for ontology alignment. In this paper we discuss the main challenges and roadblocks that need to be addressed in order to built successful mapping frameworks. Finally this paper presents DSSim and our results on the ontology evaluation 2008.
Index Terms—ontology mapping, uncertain reasoning
Cite: Maria Vargas-Vera and Miklos NagyMaria Vargas-Vera and Miklos Nagy, "Towards Intelligent Ontology Alignment Systems for Question Answering: Challenges and Roadblocks," Journal of Emerging Technologies in Web Intelligence, Vol. 2, No. 3, pp. 244-257, August 2010. doi:10.4304/jetwi.2.3.244-257
Index Terms—ontology mapping, uncertain reasoning
Cite: Maria Vargas-Vera and Miklos NagyMaria Vargas-Vera and Miklos Nagy, "Towards Intelligent Ontology Alignment Systems for Question Answering: Challenges and Roadblocks," Journal of Emerging Technologies in Web Intelligence, Vol. 2, No. 3, pp. 244-257, August 2010. doi:10.4304/jetwi.2.3.244-257
Array
Previous paper:GPS Talking For Blind People
Next paper:A Survey of Text Summarization Extractive Techniques
Next paper:A Survey of Text Summarization Extractive Techniques