CLAIMay 24, 2023

STAR: Boosting Low-Resource Information Extraction by Structure-to-Text Data Generation with Large Language Models

arXiv:2305.15090v322 citations
Originality Highly original
AI Analysis

This addresses the costly need for human-annotated data in information extraction, offering a scalable solution for real-world applications.

The authors tackled the problem of low-resource information extraction by proposing STAR, a method that uses large language models to generate synthetic training data from limited seed demonstrations, resulting in performance improvements that surpass human-curated data in event and relation extraction tasks.

Information extraction tasks such as event extraction require an in-depth understanding of the output structure and sub-task dependencies. They heavily rely on task-specific training data in the form of (passage, target structure) pairs to obtain reasonable performance. However, obtaining such data through human annotation is costly, leading to a pressing need for low-resource information extraction approaches that require minimal human labeling for real-world applications. Fine-tuning supervised models with synthesized training data would be a generalizable method, but the existing data generation methods either still rely on large-scale ground-truth data or cannot be applied to complicated IE tasks due to their poor performance. To address these challenges, we propose STAR, a data generation method that leverages Large Language Models (LLMs) to synthesize data instances given limited seed demonstrations, thereby boosting low-resource information extraction performance. Our approach involves generating target structures (Y) followed by generating passages (X), all accomplished with the aid of LLMs. We design fine-grained step-by-step instructions to obtain the initial data instances. We further reduce errors and improve data quality through self-reflection error identification and self-refinement with iterative revision. Our experiments show that the data generated by STAR significantly improve the performance of low-resource event extraction and relation extraction tasks, even surpassing the effectiveness of human-curated data. Human assessment of the data quality shows STAR-generated data exhibits higher passage quality and better align with the task definitions compared with the human-curated data.

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