2020
DOI: 10.2196/21978
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Public Perception of the COVID-19 Pandemic on Twitter: Sentiment Analysis and Topic Modeling Study

Abstract: Background COVID-19 is a scientifically and medically novel disease that is not fully understood because it has yet to be consistently and deeply studied. Among the gaps in research on the COVID-19 outbreak, there is a lack of sufficient infoveillance data. Objective The aim of this study was to increase understanding of public awareness of COVID-19 pandemic trends and uncover meaningful themes of concern posted by Twitter users in the English language during the pandem… Show more

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Cited by 385 publications
(281 citation statements)
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“…Subsequently, the themes changed to “conspiracy theories” and “symptoms and detection” in the stalemate period (T 5 -T 8 ), and then progressively concentrated on the themes “prevention action” in the control period (T 9 -T 15 ). Finally, in the recover period (T 16 -T 19 ), the theme changed to “vaccines and medicines.” This phenomenon is in line with the characteristic that public opinion online would result in a change in themes in a given period [ 45 , 46 ].…”
Section: Discussionsupporting
confidence: 71%
“…Subsequently, the themes changed to “conspiracy theories” and “symptoms and detection” in the stalemate period (T 5 -T 8 ), and then progressively concentrated on the themes “prevention action” in the control period (T 9 -T 15 ). Finally, in the recover period (T 16 -T 19 ), the theme changed to “vaccines and medicines.” This phenomenon is in line with the characteristic that public opinion online would result in a change in themes in a given period [ 45 , 46 ].…”
Section: Discussionsupporting
confidence: 71%
“…During the COVID-19 pandemic, people worldwide have widely used Twitter to follow news and express their opinions and responses to the pandemic [ 18 ]. Although Twitter users in the non-Ecig group had a neutral attitude toward COVID-19 during most of the study period (March 5 to April 3, 2020), Twitter users in the Ecig group had a negative attitude toward this pandemic.…”
Section: Discussionmentioning
confidence: 99%
“…Indian dataset came out to be almost balanced. Overall, the Indian dataset has 24,017 (50.87%) negative and 23,193 (49.12%) positive headlines. When it comes to the sentiments of various topics, all of the topics followed a different trend than overall sentiments.…”
Section: ) Sentiments Of Uk's Headlinesmentioning
confidence: 99%
“…Huang et al [22] presented sentiment convolutional neural networks to analyze the sentiment of sentences with both contextual and sentiment information of sentiment words. Boon-Itt, and Skunkan [23] investigated Twitter posts using sentiment analysis and topic modeling approach to find out the public perception during the COVID-19 pandemic. Das, and Dutta [24] characterized public emotions and sentiments in COVID-19 environment in India.…”
Section: B Sentiment Analysis and Emotion Detectionmentioning
confidence: 99%