This study introduces a novel ontology matching model designed to address ontology heterogeneity by leveraging both textual and structural information within ontologies, alongside external data. The model employs a word embedding approach to refine word vectors for enhanced discrimination between semantically similar and associative descriptions. Additionally, it adopts BERT for generating dynamic word vectors, enabling the nuanced distinction of polysemous terms. Our model calculates structural similarity by transforming ontologies into graph structures and applying the SimRank algorithm to calculate the entities' structural similarity within these graphs. The matching process employs a stable matching algorithm to secure stable one-to-one correspondences, while one-to-many matches are determined through similarity thresholds and comparative analysis
목차
Abstract 1. Introduction 2. Related Work 3. Ontology Matching Model 3.1 Model Overview 3.2 Preprocessing 3.3 Text Similarity Calculation 3.4 Improvement of Word Vectors 3.5 BERT generates Word Vectors 3.6 Structural Similarity Calculation 4. Performance Analysis 4.1 Experimental Datasets and Evaluation indicators 4.2 Experimental Results and Analysis 5. Conclusion Acknowledgement References
키워드
Ontology MatchingWord EmbeddingBERTSimRank AlgorithmOne-to-many Match
저자
Hongzhou Duan [ PhD Student, School of Computer Science and Engineering, Kyungpook National University, Korea ]
Yongju Lee [ Professor, School of Computer Science and Engineering, Kyungpook National University, Korea ]
Corresponding Author