cs.AI updates on arXiv.org 08月20日
A Comparative Study of Decoding Strategies in Medical Text Generation
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本文研究了解码策略对医疗领域大型语言模型(LLM)性能的影响,通过对比11种解码策略在五项医疗任务上的表现,发现确定性策略优于随机策略,大型模型在整体得分上较高但推理时间更长,解码策略对性能的影响有时甚至超过模型选择。

arXiv:2508.13580v1 Announce Type: cross Abstract: Large Language Models (LLMs) rely on various decoding strategies to generate text, and these choices can significantly affect output quality. In healthcare, where accuracy is critical, the impact of decoding strategies remains underexplored. We investigate this effect in five open-ended medical tasks, including translation, summarization, question answering, dialogue, and image captioning, evaluating 11 decoding strategies with medically specialized and general-purpose LLMs of different sizes. Our results show that deterministic strategies generally outperform stochastic ones: beam search achieves the highest scores, while {\eta} and top-k sampling perform worst. Slower decoding methods tend to yield better quality. Larger models achieve higher scores overall but have longer inference times and are no more robust to decoding. Surprisingly, while medical LLMs outperform general ones in two of the five tasks, statistical analysis shows no overall performance advantage and reveals greater sensitivity to decoding choice. We further compare multiple evaluation metrics and find that correlations vary by task, with MAUVE showing weak agreement with BERTScore and ROUGE, as well as greater sensitivity to the decoding strategy. These results highlight the need for careful selection of decoding methods in medical applications, as their influence can sometimes exceed that of model choice.

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解码策略 医疗LLM 性能影响 模型选择 解码方法
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