A retrieval-augmented multi-agent system creates evidence-based, fine-grained rubrics for medical LLM evaluation, achieving 50.20% and 31.90% CIA scores on HealthBench and LLMEval-Med while outperforming GPT-4o baselines.
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Automated Rubrics for Reliable Evaluation of Medical Dialogue Systems
A retrieval-augmented multi-agent system creates evidence-based, fine-grained rubrics for medical LLM evaluation, achieving 50.20% and 31.90% CIA scores on HealthBench and LLMEval-Med while outperforming GPT-4o baselines.