OWL2Vec*: embedding of OWL ontologies

Jiaoyan Chen(University of Oxford), Pan Hu(University of Oxford), Ernesto Jiménez-Ruiz(City, University of London), Ole Magnus Holter(University of Oslo), Denvar Antonyrajah(Samsung (United Kingdom)), Ian Horrocks(University of Oxford)
Machine Learning
June 16, 2021
Cited by 144Open Access
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Abstract

Abstract Semantic embedding of knowledge graphs has been widely studied and used for prediction and statistical analysis tasks across various domains such as Natural Language Processing and the Semantic Web. However, less attention has been paid to developing robust methods for embedding OWL (Web Ontology Language) ontologies, which contain richer semantic information than plain knowledge graphs, and have been widely adopted in domains such as bioinformatics. In this paper, we propose a random walk and word embedding based ontology embedding method named , which encodes the semantics of an OWL ontology by taking into account its graph structure, lexical information and logical constructors. Our empirical evaluation with three real world datasets suggests that benefits from these three different aspects of an ontology in class membership prediction and class subsumption prediction tasks. Furthermore, often significantly outperforms the state-of-the-art methods in our experiments.


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