Automatic Text Summarization of COVID-19 Scientific Research Topics Using Pre-trained Models from Hugging Face

Sakdipat Ontoum, Jonathan H. Chan
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引用次数: 3

Abstract

Automated text summarizing helps the scientific and medical sectors by identifying and extracting relevant information from articles. Automatic text summarization is a way of compressing text documents so that users may find important and useful information in the original text in reduced time. We will first review some new works in the field of summarization that uses deep learning approaches, and then we will explain the application to COVID-19 related research papers. The ease with which a reader can grasp written text is referred to as the readability test. The substance of text determines its readability in natural language processing. We constructed word clouds using the abstracts’ most commonly used text. By looking at those three measurements, we can determine the performance measures of ROUGE-1, ROUGE-2, ROUGE-L, ROUGE-L-SUM. Our findings indicated that Distilbart-mnli-12-6 and GPT2-large outperform than others considered.
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基于拥抱脸预训练模型的COVID-19科研主题自动文本摘要
自动文本摘要通过从文章中识别和提取相关信息来帮助科学和医学部门。自动文本摘要是一种对文本文档进行压缩的方法,使用户可以在更短的时间内从原始文本中找到重要和有用的信息。我们将首先回顾总结领域使用深度学习方法的一些新作品,然后解释其在COVID-19相关研究论文中的应用。读者掌握书面文本的难易程度被称为可读性测试。在自然语言处理中,文本的内容决定了文本的可读性。我们使用摘要中最常用的文本来构建词云。通过查看这三个测量值,我们可以确定ROUGE-1、ROUGE-2、ROUGE-L、ROUGE-L- sum的性能测量值。我们的研究结果表明,蒸馏酒-mnli-12-6和GPT2-large比其他考虑的要好。
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