Faculty of Technology, Policy, and Management, Delft University of Technology, The Netherlands"/> Jheronimus Academy of Data Science, Technical University of Eindhoven, The Netherlands"/> The Netherlands Institute of Applied Technology (TNO), Eindhoven, The Netherlands e-mails: m.mohammadi@tudelft.nl, y.tan@tudelft.nl, wout.hofman@tno.nl"/>
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2020 Volume 35
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RESEARCH ARTICLE   Open Access    

SANOM-HOBBIT: simulated annealing-based ontology matching on HOBBIT platform

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  • Abstract: Ontology alignment is an important and inescapable problem for the interconnections of two ontologies stating the same concepts. Ontology alignment evaluation initiative (OAEI) has been taken place for more than a decade to monitor and help the progress of the field and to compare systematically existing alignment systems. As of 2018, the evaluation of systems is partly transitioned to the HOBBIT platform. This paper contains the description of our alignment system, simulated annealing-based ontology matching (SANOM), and its adaption into the HOBBIT platform. The outcomes of SANOM on the HOBBIT for several OAEI tracks are reported, and the results are compared with other competing systems in the corresponding tracks.
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  • Cite this article

    Majid Mohammadi, Wout Hofman, Yao-Hua Tan. 2020. SANOM-HOBBIT: simulated annealing-based ontology matching on HOBBIT platform. The Knowledge Engineering Review 35(1), doi: 10.1017/S026988892000017X
    Majid Mohammadi, Wout Hofman, Yao-Hua Tan. 2020. SANOM-HOBBIT: simulated annealing-based ontology matching on HOBBIT platform. The Knowledge Engineering Review 35(1), doi: 10.1017/S026988892000017X

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RESEARCH ARTICLE   Open Access    

SANOM-HOBBIT: simulated annealing-based ontology matching on HOBBIT platform

Abstract: Abstract: Ontology alignment is an important and inescapable problem for the interconnections of two ontologies stating the same concepts. Ontology alignment evaluation initiative (OAEI) has been taken place for more than a decade to monitor and help the progress of the field and to compare systematically existing alignment systems. As of 2018, the evaluation of systems is partly transitioned to the HOBBIT platform. This paper contains the description of our alignment system, simulated annealing-based ontology matching (SANOM), and its adaption into the HOBBIT platform. The outcomes of SANOM on the HOBBIT for several OAEI tracks are reported, and the results are compared with other competing systems in the corresponding tracks.

    • Stands for Simulated Annealing-based Ontology Matching.

    • http://ir.dcs.gla.ac.uk/resources/linguistic_utils/stop_words.

    • This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
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    Majid Mohammadi, Wout Hofman, Yao-Hua Tan. 2020. SANOM-HOBBIT: simulated annealing-based ontology matching on HOBBIT platform. The Knowledge Engineering Review 35(1), doi: 10.1017/S026988892000017X
    Majid Mohammadi, Wout Hofman, Yao-Hua Tan. 2020. SANOM-HOBBIT: simulated annealing-based ontology matching on HOBBIT platform. The Knowledge Engineering Review 35(1), doi: 10.1017/S026988892000017X
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