基于Transformer的巴西葡萄牙语临床词性标注器的开发

Elisa Terumi Rubel Schneider, Yohan Bonescki Gumiel, L. A. F. D. Oliveira, Carolina de Oliveira Montenegro, Laura Rubel Barzotto, C. Moro, A. Pagano, E. Paraiso
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引用次数: 0

摘要

电子健康记录是一种有价值的信息来源,可以通过自然语言处理(NLP)任务(如形态句法词标记)进行提取。尽管在健康NLP方面取得了重大进展,例如Transformer架构,但葡萄牙语等语言的代表性仍然不足。本文介绍了为葡萄牙语文本开发的标记器,在pos标记的语料库上使用BioBERtpt(临床/生物医学)和BERTimbau(通用)模型进行微调。我们实现了0.9826的准确率,对于所使用的语料库来说是最先进的。此外,我们使用真实的临床叙述,对经过训练的模型和文献中的其他模型进行了基于人类的评估。我们的临床模型的准确率为0.8145,而通用模型的准确率为0.7656。与专门用临床文本训练的模型相比,它还显示了竞争性结果,证明了领域对NLP任务中基础模型的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a Transformer-based Clinical Part-of-Speech Tagger for Brazilian Portuguese
Electronic Health Records are a valuable source of information to be extracted by means of natural language processing (NLP) tasks, such as morphosyntactic word tagging. Although there have been significant advances in health NLP, such as the Transformer architecture, languages such as Portuguese are still underrepresented. This paper presents taggers developed for Portuguese texts, fine-tuned using BioBERtpt (clinical/biomedical) and BERTimbau (generic) models on a POS-tagged corpus. We achieved an accuracy of 0.9826, state-of-the-art for the corpus used. In addition, we performed a human-based evaluation of the trained models and others in the literature, using authentic clinical narratives. Our clinical model achieved 0.8145 in accuracy compared to 0.7656 for the generic model. It also showed competitive results compared to models trained specifically with clinical texts, evidencing domain impact on the base model in NLP tasks.
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