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arXiv cs.CL·

Med-V1: Small Language Models for Zero-shot and Scalable Biomedical Evidence Attribution

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In three linesMed-V1 is a family of 3-billion-parameter language models trained on synthetic data for biomedical evidence attribution and fact verification. It outperforms base models by +27% to +71% on five benchmarks and rivals GPT-5 while being far more efficient. The study quantifies hallucinations in LLM-generated answers under different citation instructions.
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