IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Large-Scale Ontology Alignment- An Extraction Based Method to Support Information System Interoperability

Large-Scale Ontology Alignment- An Extraction Based Method to Support Information System Interoperability
View Sample PDF
Author(s): Mourad Zerhouni (EEDIS Lab., University Djilali Liabes, Sidi Bel Abbès, Algeria)and Sidi Mohamed Benslimane (LabRI Laboratory, Ecole Superieure en Informatique, Sidi Bel Abbes, Algeria)
Copyright: 2019
Volume: 10
Issue: 2
Pages: 26
Source title: International Journal of Strategic Information Technology and Applications (IJSITA)
DOI: 10.4018/IJSITA.2019040104

Purchase

View Large-Scale Ontology Alignment- An Extraction Based Method to Support Information System Interoperability on the publisher's website for pricing and purchasing information.

Abstract

Ontology alignment is an important way of establishing interoperability between Semantic Web applications that use different but related ontologies. Ontology alignment is the process of identifying semantically equivalent entities from multiple ontologies. This is not always obvious because technical constraints such as data volume and execution time are determining factors in the choice of an alignment algorithm. Nowadays, partitioning and modularization are two main strategies for breaking down large ontologies into blocks or ontology modules respectively to align ontologies. This article proposes ONTEM as an effective alignment method for large-scale ontology based on the ontology entities extraction. This article conducts a comprehensive evaluation using the datasets of the OAEI 2018 campaign. The obtained results are promising, and they revealed that ONTEM is one of the most effective systems.

Related Content

Julia Puaschunder. © 2019. 22 pages.
Isaac Kofi Mensah. © 2019. 17 pages.
Mohamed Hamroun, Sonia Lajmi, Henri Nicolas, Ikram Amous. © 2019. 20 pages.
Abdenour Lazeb, Riad Mokadem, Ghalem Belalem. © 2019. 20 pages.
Wafa Nebili, Brahim Farou, Hamid Seridi. © 2019. 23 pages.
Messaoud Babaghayou, Nabila Labraoui, Ado Adamou Abba Ari. © 2019. 15 pages.
Mourad Zerhouni, Sidi Mohamed Benslimane. © 2019. 26 pages.
Body Bottom