Revisiting Large Language Models as Zero-shot Relation Extractors
- URL: http://arxiv.org/abs/2310.05028v4
- Date: Fri, 24 Nov 2023 14:34:57 GMT
- Title: Revisiting Large Language Models as Zero-shot Relation Extractors
- Authors: Guozheng Li and Peng Wang and Wenjun Ke
- Abstract summary: Relation extraction (RE) consistently involves a certain degree of labeled or unlabeled data even if under zero-shot setting.
Recent studies have shown that large language models (LLMs) transfer well to new tasks out-of-the-box simply given a natural language prompt.
This work focuses on the study of exploring LLMs as zero-shot relation extractors.
- Score: 8.953462875381888
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Relation extraction (RE) consistently involves a certain degree of labeled or
unlabeled data even if under zero-shot setting. Recent studies have shown that
large language models (LLMs) transfer well to new tasks out-of-the-box simply
given a natural language prompt, which provides the possibility of extracting
relations from text without any data and parameter tuning. This work focuses on
the study of exploring LLMs, such as ChatGPT, as zero-shot relation extractors.
On the one hand, we analyze the drawbacks of existing RE prompts and attempt to
incorporate recent prompt techniques such as chain-of-thought (CoT) to improve
zero-shot RE. We propose the summarize-and-ask (\textsc{SumAsk}) prompting, a
simple prompt recursively using LLMs to transform RE inputs to the effective
question answering (QA) format. On the other hand, we conduct comprehensive
experiments on various benchmarks and settings to investigate the capabilities
of LLMs on zero-shot RE. Specifically, we have the following findings: (i)
\textsc{SumAsk} consistently and significantly improves LLMs performance on
different model sizes, benchmarks and settings; (ii) Zero-shot prompting with
ChatGPT achieves competitive or superior results compared with zero-shot and
fully supervised methods; (iii) LLMs deliver promising performance in
extracting overlapping relations; (iv) The performance varies greatly regarding
different relations. Different from small language models, LLMs are effective
in handling challenge none-of-the-above (NoTA) relation.
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