Benchmarking Large Language Models with Augmented Instructions for Fine-grained Information Extraction (2310.05092v1)
Abstract: Information Extraction (IE) is an essential task in Natural Language Processing. Traditional methods have relied on coarse-grained extraction with simple instructions. However, with the emergence of LLMs, there is a need to adapt IE techniques to leverage the capabilities of these models. This paper introduces a fine-grained IE benchmark dataset tailored for LLMs, employing augmented instructions for each information type, which includes task descriptions, extraction rules, output formats, and examples. Through extensive evaluations, we observe that encoder-decoder models, particularly T5 and FLAN-T5, perform well in generalizing to unseen information types, while ChatGPT exhibits greater adaptability to new task forms. Our results also indicate that performance is not solely dictated by model scale, and highlight the significance of architecture, data diversity, and learning techniques. This work paves the way for a more refined and versatile utilization of LLMs in Information Extraction.
- Jun Gao (267 papers)
- Huan Zhao (109 papers)
- Yice Zhang (7 papers)
- Wei Wang (1793 papers)
- Changlong Yu (22 papers)
- Ruifeng Xu (66 papers)