Dynamic Retrieval Augmented Generation of Ontologies using Artificial Intelligence (DRAGON-AI)
Sabrina Toro, Anna V Anagnostopoulos, Sue Bello, Kai Blumberg,, Rhiannon Cameron, Leigh Carmody, Alexander D Diehl, Damion Dooley, William, Duncan, Petra Fey, Pascale Gaudet, Nomi L Harris, Marcin Joachimiak, Leila, Kiani, Tiago Lubiana, Monica C Munoz-Torres, Shawn O'Neil

TL;DR
DRAGON-AI leverages large language models and retrieval techniques to automate parts of ontology creation, showing promising precision and utility in assisting domain experts, though human oversight remains crucial.
Contribution
This paper introduces DRAGON-AI, a novel AI-based method for generating ontology components by integrating LLMs and retrieval augmentation, advancing automated ontology development.
Findings
High precision in relationship generation
Generated definitions acceptable but less accurate than human ones
Effective incorporation of natural language instructions via GitHub issues
Abstract
Background: Ontologies are fundamental components of informatics infrastructure in domains such as biomedical, environmental, and food sciences, representing consensus knowledge in an accurate and computable form. However, their construction and maintenance demand substantial resources and necessitate substantial collaboration between domain experts, curators, and ontology experts. We present Dynamic Retrieval Augmented Generation of Ontologies using AI (DRAGON-AI), an ontology generation method employing Large Language Models (LLMs) and Retrieval Augmented Generation (RAG). DRAGON-AI can generate textual and logical ontology components, drawing from existing knowledge in multiple ontologies and unstructured text sources. Results: We assessed performance of DRAGON-AI on de novo term construction across ten diverse ontologies, making use of extensive manual evaluation of results. Our…
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Taxonomy
TopicsSemantic Web and Ontologies · Biomedical Text Mining and Ontologies · Topic Modeling
MethodsOntology
