Litcius/Paper detail

Contextual semantic embeddings for ontology subsumption prediction

Jiaoyan Chen, Yuan He, Yuxia Geng, Ernesto Jiménez-Ruiz, Hang Dong, Ian Horrocks

2023World Wide Web45 citationsDOIOpen Access PDF

Abstract

Automating ontology construction and curation is an important but challenging task in knowledge engineering and artificial intelligence. Prediction by machine learning techniques such as contextual semantic embedding is a promising direction, but the relevant research is still preliminary especially for expressive ontologies in Web Ontology Language (OWL). In this paper, we present a new subsumption prediction method named BERTSubs for classes of OWL ontology. It exploits the pre-trained language model BERT to compute contextual embeddings of a class, where customized templates are proposed to incorporate the class context (e.g., neighbouring classes) and the logical existential restriction. BERTSubs is able to predict multiple kinds of subsumers including named classes from the same ontology or another ontology, and existential restrictions from the same ontology. Extensive evaluation on five real-world ontologies for three different subsumption tasks has shown the effectiveness of the templates and that BERTSubs can dramatically outperform the baselines that use (literal-aware) knowledge graph embeddings, non-contextual word embeddings and the state-of-the-art OWL ontology embeddings.

Topics & Concepts

Computer scienceOntologyNatural language processingWeb Ontology LanguageArtificial intelligenceOntology engineeringUpper ontologyOWL-SOntology-based data integrationClass (philosophy)Context (archaeology)Ontology alignmentDescription logicSemantic WebProcess ontologyEmbeddingInformation retrievalSemantic Web StackPaleontologyPhilosophyEpistemologyBiologyTopic ModelingAdvanced Graph Neural NetworksSemantic Web and Ontologies