Knowledge Agora



Scientific Article details

Title An ontology matching approach for semantic modeling: A case study in smart cities
ID_Doc 39665
Authors Djenouri, Y; Belhadi, H; Akli-Astouati, K; Cano, A; Lin, JCW
Title An ontology matching approach for semantic modeling: A case study in smart cities
Year 2022
Published Computational Intelligence, 38, 3
DOI 10.1111/coin.12474
Abstract This paper investigates the semantic modeling of smart cities and proposes two ontology matching frameworks, called Clustering for Ontology Matching-based Instances (COMI) and Pattern mining for Ontology Matching-based Instances (POMI). The goal is to discover the relevant knowledge by investigating the correlations among smart city data based on clustering and pattern mining approaches. The COMI method first groups the highly correlated ontologies of smart-city data into similar clusters using the generic k-means algorithm. The key idea of this method is that it clusters the instances of each ontology and then matches two ontologies by matching their clusters and the corresponding instances within the clusters. The POMI method studies the correlations among the data properties and selects the most relevant properties for the ontology matching process. To demonstrate the usefulness and accuracy of the COMI and POMI frameworks, several experiments on the DBpedia, Ontology Alignment Evaluation Initiative, and NOAA ontology databases were conducted. The results show that COMI and POMI outperform the state-of-the-art ontology matching models regarding computational cost without losing the quality during the matching process. Furthermore, these results confirm the ability of COMI and POMI to deal with heterogeneous large-scale data in smart-city environments.
Author Keywords clustering; ontology Matching; pattern mining; semantic modeling; smart city
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000673479500001
WoS Category Computer Science, Artificial Intelligence
Research Area Computer Science
PDF https://sintef.brage.unit.no/sintef-xmlui/bitstream/11250/3013825/1/Djenouri_2021_An_ontology.pdf
Similar atricles
Scroll