Learning Different Concept Hierarchies and the Relations between them from Classified Data

Author:

Benites Fernando1,Sapozhnikova Elena1

Affiliation:

1. University of Konstanz, Germany

Abstract

Methods for the automatic extraction of taxonomies and concept hierarchies from data have recently emerged as essential assistance for humans in ontology construction. The objective of this chapter is to show how the extraction of concept hierarchies and finding relations between them can be effectively coupled with a multi-label classification task. The authors introduce a data mining system which performs classification and addresses both issues by means of association rule mining. The proposed system has been tested on two real-world datasets with the class labels of each dataset coming from two different class hierarchies. Several experiments on hierarchy extraction and concept relation were conducted in order to evaluate the system and three different interestingness measures were applied, to select the most important relations between concepts. One of the measures was developed by the authors. The experimental results showed that the system is able to infer quite accurate concept hierarchies and associations among the concepts. It is therefore well suited for classification-based reasoning.

Publisher

IGI Global

Reference22 articles.

1. Bendaoud, R., & Hacene, M. Rouane, Toussaint, Y., Delecroix, B., & Napoli, A. (2007). Text-based ontology construction using relational concept analysis. In International Workshop on Ontology Dynamics. Innsbruck, Austria.

2. Multi-label classification and extracting predicted class hierarchies

3. A survey on ontology mapping

4. Learning concept hierarchies from text corpora using formal concept analysis.;P.Cimiano;Journal of Artificial Intelligence Research,2005

5. Doan, A., Madhavan, J., Domingos, P., & Halevy, A. (2002). Learning to map between ontologies on the semantic web. In Proceedings of the 11th International Conference on World Wide Web (pp. 662–673). New York, NY: ACM.

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