ChicHealth @ MEDIQA 2021:探索预先训练的seq2seq模型用于医学总结的局限性

Liwen Xu, Yan Zhang, Lei Hong, Yi Cai, Szui Sung
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引用次数: 9

摘要

在本文中,我们将描述MEDIQA2021共享任务的系统。首先,我们将描述第二个任务的方法,多答案总结(MAS)。摘要的提取遵循(CITATION)的规则。首先,使用Roberta模型对候选句子进行粗略估计。然后使用马尔可夫链模型对句子进行细粒度评估。我们的团队在综合成绩上获得了第一名,MAS任务第四名,RRS任务第七名,QS任务第十一名。对于QS和RRS任务,我们研究了端到端预训练seq2seq模型的性能。实验表明,对抗训练和反向翻译的方法有利于提高微调性能。
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ChicHealth @ MEDIQA 2021: Exploring the limits of pre-trained seq2seq models for medical summarization
In this article, we will describe our system for MEDIQA2021 shared tasks. First, we will describe the method of the second task, multiple answer summary (MAS). For extracting abstracts, we follow the rules of (CITATION). First, the candidate sentences are roughly estimated by using the Roberta model. Then the Markov chain model is used to evaluate the sentences in a fine-grained manner. Our team won the first place in overall performance, with the fourth place in MAS task, the seventh place in RRS task and the eleventh place in QS task. For the QS and RRS tasks, we investigate the performanceS of the end-to-end pre-trained seq2seq model. Experiments show that the methods of adversarial training and reverse translation are beneficial to improve the fine tuning performance.
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