Autors: Ivanova, T. I.
Title: Large Language Models and Ontology Learning
Keywords: agent-oriented archtiecture, Large language models, ontology integration, Ontology learning

Abstract: According to the most recent researches, Large Language Models (LLMs) can give new possibilities for automating ontology development. To make possible development of flexible ontology learning tools, that can use the whole power of LLMs, this paper proposes an agent -based architecture for step-by-step ontology learning, using LLMs.

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Issue

2025 39th International Conference on Information Technologies, InfoTech 2025 - Proceedings, 2025, Bulgaria, https://doi.org/10.1109/InfoTech67177.2025.11175968

Вид: публикация в международен форум, публикация в реферирано издание, индексирана в Scopus