使用情绪分析跟踪COVID-19大流行的机器学习方法

Tasnia Rahman, Sakifa Aktar
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摘要

冠状病毒病或COVID-19是21世纪最可怕的传染病之一。自新冠肺炎疫情在中国武汉爆发以来,这一领域开展了大量研究。在初步阶段,没有足够的数字数据进行研究,但当我们考虑社交媒体热门话题或患者分享症状经验等文本数据时,我们获得了足够的数据来导航冠状病毒(SARS-CoV-2)。除了与COVID-19相关的健康并发症外,大流行之后也出现了巨大的公众恐慌。情绪分析有助于了解大量人对任何特定话题的情绪。在本文中,我们使用情绪分析方法观察公众对COVID-19大流行的反应以及人们对正在进行的疫苗接种过程的体验。实现了基于机器学习的文本分类算法。最后,对分类模型的准确率进行了计算,便于进一步预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach to Track COVID-19 Pandemic using Sentiment Analysis
Coronavirus disease or COVID-19 is one of the most frightening and infectious diseases of the twenty-first century. Since the outbreak of COVID-19 in Wuhan, China, numerous researches are conducted in this sector. At the preliminary stage, there was not sufficient numeric data for research but when we consider the text data such as trending topics of Social Media or patients sharing experiences about their symptoms, we get enough data to ace the navigation of the Coronavirus (SARS-CoV-2). Keeping aside the health complications related to COVID-19, there also has been huge public panic following the pandemic. Sentiment analysis helps to learn the emotions of a vast number of people about any particular topic. In this paper, we have used sentiment analysis methods to observe the public reaction to the COVID-19 pandemic and people’s experience of the ongoing vaccination process. Machine Learning-based (ML-based) classification algorithms are implemented for text classification. Finally, the accuracy of the classification models is also calculated for further prediction.
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