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Ontology Embedding: A Survey of Methods, Applications and Resources

Abstract

Ontologies are widely used for representing domain knowledge and meta data, playing an increasingly important role in Information Systems, the Semantic Web, Bioinformatics and many other domains. However, logical reasoning that ontologies can directly support are quite limited in learning, approximation and prediction. One straightforward solution is to integrate statistical analysis and machine learning. To this end, automatically learning vector representation for knowledge of an ontology i.e., ontology embedding has been widely investigated. Numerous papers have been published on ontology embedding, but a lack of systematic reviews hinders researchers from gaining a comprehensive understanding of this field. To bridge this gap, we write this survey paper, which first introduces different kinds of semantics of ontologies and formally defines ontology embedding as well as its property of faithfulness. Based on this, it systematically categorizes and analyses a relatively complete set of over 80 papers, according to the ontologies they aim at and their technical solutions including geometric modeling, sequence modeling and graph propagation. This survey also introduces the applications of ontology embedding in ontology engineering, machine learning augmentation and life sciences, presents a new library mOWL and discusses the challenges and future directions.

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@article{chen2025_2406.10964,
  title={ Ontology Embedding: A Survey of Methods, Applications and Resources },
  author={ Jiaoyan Chen and Olga Mashkova and Fernando Zhapa-Camacho and Robert Hoehndorf and Yuan He and Ian Horrocks },
  journal={arXiv preprint arXiv:2406.10964},
  year={ 2025 }
}
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