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Enhancing Large Language Models for Improved Accuracy and Safety in Medical Question Answering: Comparative Study
1
Zitationen
14
Autoren
2025
Jahr
Abstract
The Med-RISE framework significantly improves the accuracy and reduces the hallucinations of LLMs in medical question answering across benchmark datasets. By providing local and real-time information retrieval and fact and safety filtering, Med-RISE enhances the reliability and interpretability of LLMs in the medical domain, offering a promising tool for clinical practice and decision support.
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