Improving Open Information Extraction with Large Language Models: A Study on Demonstration Uncertainty

Open Information Extraction (OIE) task aims at extracting structured facts from unstructured text, typically in the form of (subject, relation, object) triples. Despite the potential of large language models (LLMs) like ChatGPT as a general task solver, they lag behind state-of-the-art (supervised) methods in OIE tasks due to two key issues. First, LLMs struggle to distinguish irrelevant context from relevant relations and generate structured output due to the restrictions on fine-tuning the model. Second, LLMs generates responses autoregressively based on probability, which makes the predicted relations lack confidence. In this paper, we assess the capabilities of LLMs in improving the OIE task. Particularly, we propose various in-context learning strategies to enhance LLM's instruction-following ability and a demonstration uncertainty quantification module to enhance the confidence of the generated relations. Our experiments on three OIE benchmark datasets show that our approach holds its own against established supervised methods, both quantitatively and qualitatively.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Open Information Extraction CaRB GPT-3.5-Turbo w/ Selected Demo & Uncertainty F1 52.1 # 9
Open Information Extraction CaRB LLaMA-2-70B w/ Selected Demo & Uncertainty F1 51.5 # 12
Open Information Extraction CaRB LLaMA-2-13B w/ Selected Demo & Uncertainty F1 36.2 # 26
Open Information Extraction OIE2016 GPT-3.5-Turbo w/ Selected Demo & Uncertainty F1 65.1 # 7
Open Information Extraction OIE2016 LLaMA-2-70B w/ Selected Demo & Uncertainty F1 65.8 # 6
Open Information Extraction OIE2016 LLaMA-2-13B w/ Selected Demo & Uncertainty F1 36.9 # 11

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