cs.AI updates on arXiv.org 08月12日
Retrieval augmented generation based dynamic prompting for few-shot biomedical named entity recognition using large language models
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本文通过研究涉及检索增强生成的动态提示策略,解决了少量训练数据下大型语言模型在生物医学命名实体识别任务中的性能挑战,实验表明,动态提示策略可显著提升模型在生物医学NER任务上的F1分数。

arXiv:2508.06504v1 Announce Type: cross Abstract: Biomedical named entity recognition (NER) is a high-utility natural language processing (NLP) task, and large language models (LLMs) show promise particularly in few-shot settings (i.e., limited training data). In this article, we address the performance challenges of LLMs for few-shot biomedical NER by investigating a dynamic prompting strategy involving retrieval-augmented generation (RAG). In our approach, the annotated in-context learning examples are selected based on their similarities with the input texts, and the prompt is dynamically updated for each instance during inference. We implemented and optimized static and dynamic prompt engineering techniques and evaluated them on five biomedical NER datasets. Static prompting with structured components increased average F1-scores by 12% for GPT-4, and 11% for GPT-3.5 and LLaMA 3-70B, relative to basic static prompting. Dynamic prompting further improved performance, with TF-IDF and SBERT retrieval methods yielding the best results, improving average F1-scores by 7.3% and 5.6% in 5-shot and 10-shot settings, respectively. These findings highlight the utility of contextually adaptive prompts via RAG for biomedical NER.

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生物医学NER 动态提示策略 检索增强生成 大型语言模型 F1分数
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