Teddysum at MEDIQA-Chat 2023: an analysis of fine-tuning strategy for long dialog summarization

Yongbin Jeong, J. Han, Kyung Min Chae, Yousang Cho, Hyun-Kyoung Seo, Kyungtae Lim, Key-sun Choi, YoungGyun Hahm
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引用次数: 1

Abstract

In this paper, we introduce the design and various attempts for TaskB of MEDIQA-Chat 2023. The goal of TaskB in MEDIQA-Chat 2023 is to generate full clinical note from doctor-patient consultation dialogues. This task has several challenging issues, such as lack of training data, handling long dialogue inputs, and generating semi-structured clinical note which have section heads. To address these issues, we conducted various experiments and analyzed their results. We utilized the DialogLED model pre-trained on long dialogue data to handle long inputs, and we pre-trained on other dialogue datasets to address the lack of training data. We also attempted methods such as using prompts and contrastive learning for handling sections. This paper provides insights into clinical note generation through analyzing experimental methods and results, and it suggests future research directions.
Teddysum在MEDIQA-Chat 2023:长对话摘要的微调策略分析
本文介绍了MEDIQA-Chat 2023的任务kb的设计和各种尝试。MEDIQA-Chat 2023中taskkb的目标是从医患咨询对话中生成完整的临床记录。这项任务有几个具有挑战性的问题,例如缺乏训练数据,处理长对话输入,以及生成具有部分标题的半结构化临床记录。为了解决这些问题,我们进行了各种实验并分析了它们的结果。我们利用对长对话数据进行预训练的DialogLED模型来处理长输入,并对其他对话数据集进行预训练以解决训练数据的缺乏问题。我们还尝试了使用提示和对比学习等方法来处理章节。本文通过对实验方法和结果的分析,对临床笔记生成提出了一些见解,并提出了未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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