David Manzano-Macho


2008

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Unsupervised and Domain Independent Ontology Learning: Combining Heterogeneous Sources of Evidence
David Manzano-Macho | Asunción Gómez-Pérez | Daniel Borrajo
Proceedings of the Sixth International Conference on Language Resources and Evaluation (LREC'08)

Acquiring knowledge from the Web to build domain ontologies has become a common practice in the Ontological Engineering field. The vast amount of freely available information allows collecting enough information about any domain. However, the Web usually suffers a lack of structure, untrustworthiness and ambiguity of the content. These drawbacks hamper the application of unsupervised methods of building ontologies demanded by the increasingly popular applications of the Semantic Web. We believe that the combination of several processing mechanisms and complementary information sources may potentially solve the problem. The analysis of different sources of evidence allows determining with greater reliability the validity of the detected knowledge. In this paper, we present GALeOn (General Architecture for Learning Ontologies) that combines sources and processing resources to provide complementary and redundant evidence for making better estimations about the relevance of the extracted knowledge and their relationships. Our goal in this paper is to show how combining several information sources and extraction mechanisms is possible to build a taxonomy of concepts with a higher accuracy than if only one of them is applied. The experimental results show how this combination notably increases the precision of the obtained results with minimum user intervention.

2006

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Multilingual Lexical Semantic Resources for Ontology Translation
Thierry Declerck | Asunción Gómez Pérez | Ovidiu Vela | Zeno Gantner | David Manzano-Macho
Proceedings of the Fifth International Conference on Language Resources and Evaluation (LREC’06)

We describe the integration of some multilingual language resources in ontological descriptions, with the purpose of providing ontologies, which are normally using concept labels in just one (natural) language, with multilingual facility in their design and use in the context of Semantic Web applications, supporting both the semantic annotation of textual documents with multilingual ontology labels and ontology extraction from multilingual text sources.