Towards Complex Ontology Alignment using Large Language Models

Amini, Reihaneh, Norouzi, Sanaz Saki, Hitzler, Pascal, Amini, Reza

arXiv.org Artificial Intelligence 

Ontology alignment, a critical process in the Semantic Web for detecting relationships between different ontologies, has traditionally focused on identifying so-called "simple" 1-to-1 relationships through class labels and properties comparison. The more practically useful exploration of more complex alignments remains a hard problem to automate, and as such is largely underexplored, i.e. in application practice it is usually done manually by ontology and domain experts. Recently, the surge in Natural Language Processing (NLP) capabilities, driven by advancements in Large Language Models (LLMs), presents new opportunities for enhancing ontology engineering practices, including ontology alignment tasks. This paper investigates the application of LLM technologies to tackle the complex ontology alignment challenge. Leveraging a prompt-based approach and integrating rich ontology content - so-called modules - our work constitutes a significant advance towards automating the complex alignment task.

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