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新冠病毒与黑真菌:通过机器学习分析公众认知

COVID-19 and black fungus: Analysis of the public perceptions through machine learning.

作者信息

Imtiaz Khan Nafiz, Mahmud Tahasin, Nazrul Islam Muhammad

机构信息

Department of Computer Science and Engineering Military Institute of Science and Technology (MIST) Dhaka Bangladesh.

出版信息

Eng Rep. 2022 Apr;4(4):e12475. doi: 10.1002/eng2.12475. Epub 2021 Nov 14.

Abstract

While COVID-19 is ravaging the lives of millions of people across the globe, a second pandemic "black fungus" has surfaced robbing people of their lives especially people who are recovering from coronavirus. Thus, the objective of this article is to analyze public perceptions through sentiment analysis regarding black fungus during the COVID-19 pandemic. To attain the objective, first, a support vector machine (SVM) model, with an average AUC of 82.75%, was developed to classify user sentiments in terms of anger, fear, joy, and sad. Next, this SVM model was used to predict the class labels of the public tweets ( = 6477) related to COVID-19 and black fungus. As outcome, this article found public perceptions towards black fungus during COVID-19 pandemic belong mostly to sad (= 2370, 36.59%), followed by joy ( = 2095, 32.34%), fear ( = 1914, 29.55%) and anger ( = 98, 1.51%). This article also found that public perceptions are varied to some critical concerns like education, lockdown, hospital, oxygen, quarantine, and vaccine. For example, people mostly exhibited fear in social media about education, hospital, vaccine while some people expressed joy about education, hospital, vaccine, and oxygen. Again, it was found that mass people have an ignorance tendency to lockdown, COVID-19 restrictions, and prescribed hygiene rules although the coronavirus and black fungus infection rates broke the previous infection records.

摘要

当新冠病毒正在肆虐全球数百万人的生活时,第二种大流行病“黑真菌”出现了,它正在夺走人们的生命,尤其是那些正在从新冠病毒中康复的人。因此,本文的目的是通过情感分析来剖析新冠疫情期间公众对黑真菌的看法。为实现这一目标,首先,开发了一个平均曲线下面积(AUC)为82.75%的支持向量机(SVM)模型,用于将用户情感分类为愤怒、恐惧、喜悦和悲伤。接下来,使用这个SVM模型来预测与新冠病毒和黑真菌相关的公众推文(n = 6477)的类别标签。结果,本文发现新冠疫情期间公众对黑真菌的看法大多属于悲伤(n = 2370,36.59%),其次是喜悦(n = 2095,32.34%)、恐惧(n = 1914,29.55%)和愤怒(n = 98,1.51%)。本文还发现,公众对教育、封锁、医院、氧气、隔离和疫苗等一些关键问题的看法各不相同。例如,人们在社交媒体上大多对教育、医院、疫苗表现出恐惧,而一些人对教育、医院、疫苗和氧气表达了喜悦。此外,还发现尽管新冠病毒和黑真菌的感染率打破了之前的感染记录,但大多数人对封锁、新冠疫情限制措施和规定的卫生规则存在无知倾向。

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