Ontology Alignment Method Based on Self-attention

With the development of knowledge graph in the field of artificial intelligence, there is an increasing demand to integrate knowledge graph from different sources to obtain a big knowledge graph with wider coverage.Ontology is the superstructure that can guide the construction of knowledge graph.To...

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Bibliographic Details
Published inJi suan ji ke xue Vol. 49; no. 9; pp. 215 - 220
Main Authors Wu, Zi-Yi, Li, Shao-mei, Jiang, Meng-han, Zhang, Jian-peng
Format Journal Article
LanguageChinese
Published Chongqing Guojia Kexue Jishu Bu 01.09.2022
Editorial office of Computer Science
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Summary:With the development of knowledge graph in the field of artificial intelligence, there is an increasing demand to integrate knowledge graph from different sources to obtain a big knowledge graph with wider coverage.Ontology is the superstructure that can guide the construction of knowledge graph.To solve the problem of ontology alignment in knowledge graph fusion, this paper proposes an ontology alignment method based on self-attention model to combine multidimensional similarities.Firstly, two concepts from two ontologies are multi-dimensional measured by string-based, semantic-based and structure-based similarities.Then, self-attention model is used to combine above similarity calculations to judge whether the two concepts are similar or not and align them.Experiments on public datasets show that, compared with existing ontology alignment methods, the proposed method can obtain better alignment results by aggregating multi-dimensional similarity features.
ISSN:1002-137X
DOI:10.11896/jsjkx.210700190