HealthMavericks@MEDIQA-Chat 2023:基于临床对话总结的不同Transformer模型的基准测试

Kunal Suri, Saumajit Saha, Ashutosh Kumar Singh
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引用次数: 1

摘要

近年来,我们已经看到许多基于Transformer的模型被创建来解决Dialog summary问题。虽然在理解这些模型如何在总结常规对话(如在DialogSum数据集中发现的对话)时相互堆叠方面已经做了很多工作,但在临床对话总结上还没有对这些模型进行很多分析。在本文中,我们描述了我们对MEDIQA-Chat 2023共享任务的解决方案,作为ACL-ClinicalNLP 2023研讨会的一部分,该研讨会对一些流行的转换器架构(如BioBart, Flan-T5, DialogLED和OpenAI GPT3)进行了临床对话摘要问题的基准测试。我们分析了他们在两项任务上的表现——总结短对话和长对话。除此之外,我们还对两种流行的汇总集成方法进行了基准测试,并报告了它们的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HealthMavericks@MEDIQA-Chat 2023: Benchmarking different Transformer based models for Clinical Dialogue Summarization
In recent years, we have seen many Transformer based models being created to address Dialog Summarization problem. While there has been a lot of work on understanding how these models stack against each other in summarizing regular conversations such as the ones found in DialogSum dataset, there haven’t been many analysis of these models on Clinical Dialog Summarization. In this article, we describe our solution to MEDIQA-Chat 2023 Shared Tasks as part of ACL-ClinicalNLP 2023 workshop which benchmarks some of the popular Transformer Architectures such as BioBart, Flan-T5, DialogLED, and OpenAI GPT3 on the problem of Clinical Dialog Summarization. We analyse their performance on two tasks - summarizing short conversations and long conversations. In addition to this, we also benchmark two popular summarization ensemble methods and report their performance.
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