EMPOWER: Evolutionary Medical Prompt Optimization With Reinforcement Learning
EMPOWER: Evolutionary Medical Prompt Optimization With Reinforcement Learning
Prompt engineering significantly influences the reliability and clinical utility of Large Language Models (LLMs) in medical applications. Current optimization approaches inadequately address domain-specific medical knowledge and safety requirements. This paper introduces EMPOWER, a novel evolutionary framework that enhances medical prompt quality through specialized representation learning, multi-dimensional evaluation, and structure-preserving algorithms. Our methodology incorporates: (1) a medical terminology attention mechanism, (2) a comprehensive assessment architecture evaluating clarity, specificity, clinical relevance, and factual accuracy, (3) a component-level evolutionary algorithm preserving clinical reasoning integrity, and (4) a semantic verification module ensuring adherence to medical knowledge. Evaluation across diagnostic, therapeutic, and educational tasks demonstrates significant improvements: 24.7% reduction in factually incorrect content, 19.6% enhancement in domain specificity, and 15.3% higher clinician preference in blinded evaluations. The framework addresses critical challenges in developing clinically appropriate prompts, facilitating more responsible integration of LLMs into healthcare settings.
Yinda Chen、Yangfan He、Jing Yang、Dapeng Zhang、Zhenlong Yuan、Muhammad Attique Khan、Jamel Baili、Por Lip Yee
医学研究方法医药卫生理论
Yinda Chen,Yangfan He,Jing Yang,Dapeng Zhang,Zhenlong Yuan,Muhammad Attique Khan,Jamel Baili,Por Lip Yee.EMPOWER: Evolutionary Medical Prompt Optimization With Reinforcement Learning[EB/OL].(2025-08-25)[2025-09-06].https://arxiv.org/abs/2508.17703.点此复制
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