Xiangru Tang, Andrew Tran, Jeffrey Tan, Mark B. Gerstein
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引用次数: 4
摘要
本文介绍了我们对MEDIQA-2023 dialog - 2note共享任务的贡献,包括子任务A和子任务b。我们将该任务视为对话摘要问题,并实现两个不同的管道:(A)对预训练的对话摘要模型和GPT-3进行微调,以及(b)使用大型语言模型GPT-4进行少镜头上下文学习(ICL)。两种方法在ROUGE-1 F1、BERTScore F1 (deberta-xlarge-mnli)和BLEURT上均取得了优异的成绩,得分分别为0.4011、0.7058和0.5421。此外,我们使用基于RoBERTa和SciBERT的分类模型预测相关的节头。我们的团队在所有团队中排名第四,而每个团队被允许提交三次运行作为他们提交的一部分。我们还使用专家注释来证明通过ICL GPT-4生成的注释比所有其他基线都要好。我们提交的代码是可用的。
GersteinLab at MEDIQA-Chat 2023: Clinical Note Summarization from Doctor-Patient Conversations through Fine-tuning and In-context Learning
This paper presents our contribution to the MEDIQA-2023 Dialogue2Note shared task, encompassing both subtask A and subtask B. We approach the task as a dialogue summarization problem and implement two distinct pipelines: (a) a fine-tuning of a pre-trained dialogue summarization model and GPT-3, and (b) few-shot in-context learning (ICL) using a large language model, GPT-4. Both methods achieve excellent results in terms of ROUGE-1 F1, BERTScore F1 (deberta-xlarge-mnli), and BLEURT, with scores of 0.4011, 0.7058, and 0.5421, respectively. Additionally, we predict the associated section headers using RoBERTa and SciBERT based classification models. Our team ranked fourth among all teams, while each team is allowed to submit three runs as part of their submission. We also utilize expert annotations to demonstrate that the notes generated through the ICL GPT-4 are better than all other baselines. The code for our submission is available.