LLMs4OL 2024 Datasets: Toward Ontology Learning with Large Language Models

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DOI10.5281/zenodo.13851373Zenodo13851373MaRDI QIDQ6724230

Dataset published at Zenodo repository.

Author name not available (Why is that?)

Publication date: 27 September 2024

Copyright license: No records found.



Ontology learning (OL) from unstructured data has evolved significantly, with recent advancements integrating large language models (LLMs) to enhance various aspects of the process. The LLMs4OL 2024 datasets, were developed to benchmark and advance research in OL using LLMs. This dataset as a key component of the LLMs4OL Challenge, targets three primary OL tasks: Term Typing, Taxonomy Discovery, and Non-Taxonomic Relation Extraction. It encompasses seven domains, i.e. lexosemantics and biological functions, offering a comprehensive resource for evaluating LLM-based OL approaches Each task within the dataset is carefully crafted to facilitate both Few-Shot (FS) and Zero-Shot (ZS) evaluation scenarios, allowing for robust assessment of model performance across different knowledge domains to address a critical gap in the field by offering standardized benchmarks for fair comparison for evaluating LLM applications in OL.






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