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Deep Embedding Learning With Auto-Encoder for Large-Scale Ontology Matching

Deep Embedding Learning With Auto-Encoder for Large-Scale Ontology Matching

Meriem Ali Khoudja, Messaouda Fareh, Hafida Bouarfa
Copyright: © 2022 |Volume: 18 |Issue: 1 |Pages: 18
ISSN: 1552-6283|EISSN: 1552-6291|EISBN13: 9781799893967|DOI: 10.4018/IJSWIS.297042
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MLA

Khoudja, Meriem Ali, et al. "Deep Embedding Learning With Auto-Encoder for Large-Scale Ontology Matching." IJSWIS vol.18, no.1 2022: pp.1-18. http://doi.org/10.4018/IJSWIS.297042

APA

Khoudja, M. A., Fareh, M., & Bouarfa, H. (2022). Deep Embedding Learning With Auto-Encoder for Large-Scale Ontology Matching. International Journal on Semantic Web and Information Systems (IJSWIS), 18(1), 1-18. http://doi.org/10.4018/IJSWIS.297042

Chicago

Khoudja, Meriem Ali, Messaouda Fareh, and Hafida Bouarfa. "Deep Embedding Learning With Auto-Encoder for Large-Scale Ontology Matching," International Journal on Semantic Web and Information Systems (IJSWIS) 18, no.1: 1-18. http://doi.org/10.4018/IJSWIS.297042

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Abstract

Ontology matching is an efficient method to establish interoperability among heterogeneous ontologies. Large-scale ontology matching still remains a big challenge for its long time and large memory space consumption. The actual solution to this problem is ontology partitioning which is also challenging. This paper presents DeepOM, an ontology matching system to deal with this large-scale heterogeneity problem without partitioning using deep learning techniques. It consists on creating semantic embeddings for concepts of input ontologies using a reference ontology, and use them to train an auto-encoder in order to learn more accurate and less dimensional representations for concepts. The experimental results of its evaluation on large ontologies, and its comparison with different ontology matching systems which have participated to the same test challenge, are very encouraging with a precision score of 0.99. They demonstrate the higher efficiency of the proposed system to increase the performance of the large-scale ontology matching task.