cs.AI updates on arXiv.org 09月05日
LLMs医疗知识更新问题研究
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本文探讨了大型语言模型在医疗领域的应用及其对静态训练数据的依赖问题,分析了LLMs在医疗知识更新上的风险,并提出了基于系统综述的新型问答数据集和未来发展方向。

arXiv:2509.04304v1 Announce Type: cross Abstract: The growing capabilities of Large Language Models (LLMs) show significant potential to enhance healthcare by assisting medical researchers and physicians. However, their reliance on static training data is a major risk when medical recommendations evolve with new research and developments. When LLMs memorize outdated medical knowledge, they can provide harmful advice or fail at clinical reasoning tasks. To investigate this problem, we introduce two novel question-answering (QA) datasets derived from systematic reviews: MedRevQA (16,501 QA pairs covering general biomedical knowledge) and MedChangeQA (a subset of 512 QA pairs where medical consensus has changed over time). Our evaluation of eight prominent LLMs on the datasets reveals consistent reliance on outdated knowledge across all models. We additionally analyze the influence of obsolete pre-training data and training strategies to explain this phenomenon and propose future directions for mitigation, laying the groundwork for developing more current and reliable medical AI systems.

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LLMs 医疗知识 数据更新 人工智能
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