Ontology matching is the process of finding correspondences between entities belonging to different ontologies. This paper describes a set of algorithms that exploit upper ontologies as semantic bridges in the ontology matching process and presents a systematic analysis of the relationships among features of matched ontologies (number of simple and composite concepts, stems, concepts at the top level, common English suffixes and prefixes, and ontology depth), matching algorithms, used upper ontologies, and experiment results. This analysis allowed us to state under which circumstances the exploitation of upper ontologies gives significant advantages with respect to traditional approaches that do no use them. We run experiments with SUMO-OWL (a restricted version of SUMO), OpenCyc, and DOLCE. The experiments demonstrate that when our structural matching method via upper ontology uses an upper ontology large enough (OpenCyc, SUMO-OWL), the recall is significantly improved while preserving the precision obtained without upper ontologies. Instead, our nonstructural matching method via OpenCyc and SUMO-OWL improves the precision and maintains the recall. The mixed method that combines the results of structural alignment without using upper ontologies and structural alignment via upper ontologies improves the recall and maintains the F-measure independently of the used upper ontology. © 2006 IEEE

Mascardi, V., Locoro, A., Rosso, P. (2010). Automatic ontology matching via upper ontologies: A systematic evaluation. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 22(5), 609-623 [10.1109/TKDE.2009.154].

Automatic ontology matching via upper ontologies: A systematic evaluation

LOCORO, ANGELA
Secondo
;
2010

Abstract

Ontology matching is the process of finding correspondences between entities belonging to different ontologies. This paper describes a set of algorithms that exploit upper ontologies as semantic bridges in the ontology matching process and presents a systematic analysis of the relationships among features of matched ontologies (number of simple and composite concepts, stems, concepts at the top level, common English suffixes and prefixes, and ontology depth), matching algorithms, used upper ontologies, and experiment results. This analysis allowed us to state under which circumstances the exploitation of upper ontologies gives significant advantages with respect to traditional approaches that do no use them. We run experiments with SUMO-OWL (a restricted version of SUMO), OpenCyc, and DOLCE. The experiments demonstrate that when our structural matching method via upper ontology uses an upper ontology large enough (OpenCyc, SUMO-OWL), the recall is significantly improved while preserving the precision obtained without upper ontologies. Instead, our nonstructural matching method via OpenCyc and SUMO-OWL improves the precision and maintains the recall. The mixed method that combines the results of structural alignment without using upper ontologies and structural alignment via upper ontologies improves the recall and maintains the F-measure independently of the used upper ontology. © 2006 IEEE
Articolo in rivista - Articolo scientifico
Ontology matching; Upper ontology; Computational Theory and Mathematics; Information Systems; Computer Science Applications1707 Computer Vision and Pattern Recognition
English
2010
22
5
609
623
5156500
none
Mascardi, V., Locoro, A., Rosso, P. (2010). Automatic ontology matching via upper ontologies: A systematic evaluation. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 22(5), 609-623 [10.1109/TKDE.2009.154].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/136677
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