jmlr jmlr2009 jmlr2009-20 jmlr2009-20-reference knowledge-graph by maker-knowledge-mining
Source: pdf
Author: Jens Lehmann
Abstract: In this paper, we introduce DL-Learner, a framework for learning in description logics and OWL. OWL is the ofÄ?Ĺš cial W3C standard ontology language for the Semantic Web. Concepts in this language can be learned for constructing and maintaining OWL ontologies or for solving problems similar to those in Inductive Logic Programming. DL-Learner includes several learning algorithms, support for different OWL formats, reasoner interfaces, and learning problems. It is a cross-platform framework implemented in Java. The framework allows easy programmatic access and provides a command line interface, a graphical interface as well as a WSDL-based web service. Keywords: concept learning, description logics, OWL, classiÄ?Ĺš cation, open-source
F. Baader, D. Calvanese, D. L. McGuinness, D. Nardi, and P. F. Patel-Schneider, editors. The Description Logic Handbook: Theory, Implementation, and Applications, 2007. Cambridge University Press. ISBN 0-521-78176-0. L. Badea and S.-H. Nienhuys-Cheng. A reÄ?Ĺš nement operator for description logics. In Proc. of the 10th Int. Conf. on Inductive Logic Programming, volume 1866 of Lecture Notes in ArtiÄ?Ĺš cial Intelligence, pages 40–59. Springer, 2000. P. Buitelaar, P. Cimiano, and B. Magnini, editors. Ontology Learning from Text: Methods, Evaluation and Applications, volume 123 of Frontiers in ArtiÄ?Ĺš cial Intelligence. IOS, 2007. F. Esposito, N. Fanizzi, L. Iannone, I. Palmisano, and G. Semeraro. Knowledge-intensive induction of terminologies from metadata. In Proc. of 3rd Int. Semantic Web Conf., pages 441–455. Springer, 2004. S. Hellmann, J. Lehmann, and S. Auer. Learning of OWL class descriptions on very large knowledge bases. International Journal On Semantic Web and Information Systems, Special Issue on Scalability and Performance of Semantic Web Systems, 5:25–48, 2009. J. Lehmann. Hybrid learning of ontology classes. In Proc. of 5th Int. Conf. on Machine Learning and Data Mining in Pattern Recognition, volume 4571 of Lecture Notes in Computer Science, pages 883–898. Springer, 2007. J. Lehmann and P. Hitzler. A reÄ?Ĺš nement operator based learning algorithm for the ALC description logic. In Proc. of 17th Int. Conf. on Inductive Logic Programming, volume 4894 of Lecture Notes in Computer Science, pages 147–160. Springer, 2008. Awarded. F.A. Lisi and F. Esposito. Foundations of onto-relational learning. In Proc. of 18th Int. Conf. on Inductive Logic Programming, volume 5194 of Lecture Notes in Computer Science, pages 158– 175. Springer, 2008. 10. The OntoWiki homepage is http://ontowiki.net. 11. The Prot´ g´ homepage is http://protege.stanford.edu. e e 2642