Lightweight LLMs reach competitive performance on biomedical named entity recognition with select output formats, while instruction tuning across many formats shows no benefit.
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Analysing Lightweight Large Language Models for Biomedical Named Entity Recognition on Diverse Ouput Formats
Lightweight LLMs reach competitive performance on biomedical named entity recognition with select output formats, while instruction tuning across many formats shows no benefit.