Ontology Matching Based on Maintaining Local Similarity of Information Using Propagation Technique
Subject Areas : electrical and computer engineeringNazarMohammad Parsa 1 , Asieh Ghanbarpour 2
1 - ُStudent
2 - دانشگاه سيستان و بلوچستان
Keywords: Semantic web, ontology, mapping, property, matching,
Abstract :
In recent years, ontologies, as one of the most important components of the semantic web, have expanded in various fields. The problem of ontology matching has been raised with the aim of creating a set of mappings between entities of ontologies. This problem is classified as an NP-hard problem. Therefore, greedy methods have been proposed to solve it in different ways. Selecting the appropriate lexical, structural and semantic similarity criteria and using an effective combination method to obtain the final mapping is one of the most important challenges of these methods. In this paper, an automatic method of matching ontologies is proposed to provide a one-to-one mapping set. This method detects primary mappings based on a new lexical similarity criterion, which is accordance with the descriptive essence of entities and combining this similarity with semantic similarity obtained from external semantic sources. By locally propagating the score of initial mappings in the class hierarchy graph, structurally matching entities are identified. In this method, property matching is examined in a separate step. In the final step, the mapping filter is applied in order to maintain the consistency of the final mapping set. In the evaluation section, comparing the performance of the lexical similarity measure compared to other proposed textual similarity measures, indicates the efficiency of this measure in the problem of ontology matching. In addition, the results of the proposed matching system compared to the results of the set of participating systems in the OAEI competitions shows this system in the second place and higher than many complex matching systems.
[1] W. Huang and L. Harrie, "Towards knowledge-based geovisualisation using semantic web technologies: a knowledge representation approach coupling ontologies and rules," International J. of Digital Earth, vol. 13, no. 9, pp. 976-997, 2020.
[2] A. Sołtysik-Piorunkiewicz and M. Krysiak, "Development trends of semantic web information technology: the case study of organisational structure ontology," Information Systems in Management, vol. 6, no. 2, pp. 154-165, 2017.
[3] Z. Lv and R. Peng, "A novel meta-matching approach for ontology alignment using grasshopper optimization," Knowledge-Based Systems, vol. 201, Article ID: 106050, 2020.
[4] X. Xue, Q. Wu, M. Ye, and J. Lv, "Efficient ontology meta-matching based on interpolation model assisted evolutionary algorithm," Mathematics, vol. 10, no. 17, Article ID: 3212, 20 pp., 2022.
[5] B. Lima, D. Faria, F. M. Couto, I. F. Cruz, and C. Pesquita, "OAEI 2020 results for AML and AMLC," in Proc. of the 15th Int. Workshop on Ontology Matching, pp. 154-160, Athens, Greece, 2-2 Nov. 2020.
[6] J. da Silva, F. A. Baiao, and K. Revoredo, "ALIN results for OAEI 2017," in Proc. the Twelfth Int. Workshop on Ontology Matching Collocated with the 16th Int. Semantic Web Conf., pp. 114-121, Vienna, Austria, 21-21 Oct. 2017.
[7] J. Chen, et al., "Augmenting ontology alignment by semantic embedding and distant supervision," In: R. Verborgh, et al., Proc. European Semantic Web Conf., vol 12731. Springer, pp. 392-408, 2021.
[8] Y. He, J. Chen, D. Antonyrajah, and I. Horrocks, "BERTMap: a BERT-based ontology alignment system," in Proc. of the AAAI Conf. on Artificial Intelligence, pp. 5684-5691, 22 Feb.-1 Mar. 2022.
[9] S. Hertling, "WikiV3 results for OAEI 2017," in Proc. the Twelfth Int. Workshop on Ontology Matching Collocated with the 16th In. Semantic Web Conf., ISW'17C, pp. 190-195, Vienna, Austria, 21-21 Oct. 2017.
[10] F. Ardjani, D. Bouchiha, and M. Malki, "Ontology-alignment techniques: survey and analysis," International J. of Modern Education & Computer Science, vol. 7, no. 11, pp. 67-78, 2015.
[11] I. Ouali, F. Ghozzi, R. Taktak, and M. S. H. Sassi, "Ontology alignment using stable matching," Procedia Computer Science, vol. 159, no. pp. 746-755, 2019.
[12] M. Mohammadi and J. Rezaei, "Evaluating and comparing ontology alignment systems: an MCDM approach," J. of Web Semantics, vol. 64, Article ID: 100592, Oct. 2020.
[13] M. Tounsi Dhouib, C. Faron Zucker, and A. G. Tettamanzi, "An ontology alignment approach combining word embedding and the radius measure," In: M. Acosta, et al. (eds), Semantic Systems, The Power of AI and Knowledge Graphs, SEMANTiCS 2019, Lecture Notes in Computer Science, vol. 11702, pp. 191-197, Springer, 2019.
[14] E. Jiménez-Ruiz and B. Cuenca Grau, "Logmap: logic-based and scalable ontology matching," In: L. Aroyo, et al., The Semantic Web, ISWC'11, Lecture Notes in Computer Science, vol 7031, pp. 273-288, Springer, 2011.
[15] M. Kachroudi, G. Diallo, and S. B. Yahia, "KEPLER at OAEI 2018," in Proc. of the 13th Int. Workshop on Ontology Matching Co-located with the 17th Int. Semantic Web Conf., pp. 173-178, Monterey, CA, USA, 8-8 Oct. 2018.
[16] M. Biniz and M. Fakir, "An ontology alignment hybrid method based on decision rules," The Int. Arab J. of Information Technology, vol. 16, no. 6, pp. 1114-1120, Nov. 2019.
[17] M. Mao, Y. Peng, and M. Spring, "An adaptive ontology mapping approach with neural network based constraint satisfaction," J. of Web Semantics, vol. 8, no. 1, pp. 14-25, Mar. 2010.
[18] J. Gracia and K. Asooja, "Monolingual and cross-lingual ontology matching with CIDER-CL: evaluation report for OAEI 2013," in Proc. of 8th Ontology Matching Workshop, at 12th Int. Semantic Web Conf., pp. 109-116, Sydney. Australia, 21-21 Oct. 2013.
[19] M. Mohammadi, W. Hofman, and Y. H. Tan, "SANOM results for OAEI 2018," in Proc. of the 13th Int. Workshop on Ontology Matching Co-located with the 17th Int. Semantic Web Conf., pp. 205-209, Monterey, CA, USA, 8-8 Oct. 2018.
[20] X. Xue and X. Wu, "Optimizing biomedical ontology alignment in lexical vector space," J. of Intelligent & Fuzzy Systems, vol. 38, no. 5, pp. 5609-5614, 2020.
[21] S. C. Chu, X. Xue, J. S. Pan, and X. Wu, "Optimizing ontology alignment in vector space," J. of Internet Technology, vol. 21, no. 1, pp. 15-22, Jan. 2020.
[22] L. Bulygin, "Combining lexical and semantic similarity measures with machine learning approach for ontology and schema matching problem," in Proc. of Int. Conf. Data Analytics and Management in Data Intensive Domainspp. 245-249, Moscow, Russia, 9-12 Oct. 2018.
[23] J. Wang, Z. Ding, and C. Jiang, "GAOM: genetic algorithm based ontology matching," in Proc. IEEE Asia-Pacific Conf. on Services Computing, APSCC'06, pp. 617-620, Guangzhou, China, 12-15 Dec. 2006.
[24] A. Algergawy, et al., "Results of the ontology alignment evaluation initiative 2019," in Proc. Int. Workshop on Ontology Matching Co-located with the 18th Int. Semantic Web Conf., pp. 46-85, Auckland, New Zealand, 26-26 Oct. 2019.
[25] M. Abd Nikooie Pour, et al., "Results of the ontology alignment evaluation initiative 2020," in Proc. CEUR Workshop Proc., RWTH, vol. 2788, pp. 92-138, 15-15 Oct. 2020.
[26] M. Abd Nikooie Pour, et al., "Results of the ontology alignment evaluation initiative 2021," in Proc. CEUR Workshop, vol. 3063, pp. 62-108, 2021.
[27] I. Nkisi-Orji, N. Wiratunga, S. Massie, K. Y. Hui, and R. Heaven, "Ontology alignment based on word embedding and random forest classification," In: M. Berlingerio, F. Bonchi, and T. Gärtner (eds.), Machine Learning and Knowledge Discovery in Databases, Lecture Notes in Computer Science, vol. 11051, pp. 557-572, Springer, 2018.
[28] P. Ochieng and S. Kyanda, "A K-way spectral partitioning of an ontology for ontology matching," Distributed and Parallel Databases, vol. 36, no. 4, pp. 643-673, 2018.
[29] X. Xue and J. Chen, "Optimizing sensor ontology alignment through compact co-firefly algorithm," Sensors, vol. 20, no. 7, Article ID: 2056, 2020.
[30] P. Shvaiko and J. Euzenat, "A survey of schema-based matching approaches," J. on Data Semantics IV, vol. 3730, pp. 146-171, 2005.
[31] M. Maroun, "A survey on ontology operations techniques," Mathematical and Software Engineering, vol. 7, no. 1-2, pp. 7-28, 2021.
[32] M. Vijaymeena and K. Kavitha, "A survey on similarity measures in text mining," Machine Learning and Applications: An International J., vol. 3, no. 1, pp. 19-28, Mar. 2016.
[33] M. A. Yulianto and N. Nurhasanah, "The hybrid of Jaro-Winkler and Rabin-Karp algorithm in detecting Indonesian text similarity," J. Online Informatika, vol. 6, no. 1, pp. 88-95, 2021.
[34] J. L. Peterson, "Computer programs for detecting and correcting spelling errors," Communications of the ACM, vol. 23, no. 12, pp. 676-687, Dec. 1980.
[35] İ. Kabasakal and H. Soyuer, "A Jaccard similarity-based model to match stakeholders for collaboration in an industry-driven portal," in Proceeding, vol. 74, no. 1, 9 pp., 2021.
[36] A. Essayeh and M. Abed, "Towards ontology matching based system through terminological, structural and semantic level," Procedia Computer Science, vol. 60, pp. 403-412, 2015.
[37] S. Melnik, H. Garcia-Molina, and E. Rahm, "Similarity flooding: a versatile graph matching algorithm and its application to schema matching," in Proc. 18th IEEE Int. Conf. on Data Engineering, pp. 117-128, San Jose, CA, USA, 26 Feb.-1 Mar. 2002.
[38] E. Jiménez-Ruiz, "LogMap family participation in the OAEI 2020," in Proc. of the 15th Int. Workshop on Ontology Matching, vol. 2788, pp. 201-203, 2020.
[39] I. F. Cruz, F. P. Antonelli, and C. Stroe, "AgreementMaker: efficient matching for large real-world schemas and ontologies," Proceedings of the VLDB Endowment, vol. 2, no. 2, pp. 1586-1589, 2009.
[40] D. Faria, et al., "The agreementmakerlight ontology matching system," In R., Meersman, et al., On the Move to Meaningful Internet Systems: OTM 2013 Conf., Lecture Notes in Computer Science, vol. 8185, pp. 527-541, Springer, 2013.
[41] Y. An, A. Kalinowski, and J. Greenberg, "OTMapOnto: optimal transport-based ontology matching," in Proc. of the 16th Int. Workshop on Ontology Matching, pp. 185-192, Oct. 2021.