2021
DOI: 10.2196/24435
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COVID-19 Vaccine–Related Discussion on Twitter: Topic Modeling and Sentiment Analysis

Abstract: Background Vaccination is a cornerstone of the prevention of communicable infectious diseases; however, vaccines have traditionally met with public fear and hesitancy, and COVID-19 vaccines are no exception. Social media use has been demonstrated to play a role in the low acceptance of vaccines. Objective The aim of this study is to identify the topics and sentiments in the public COVID-19 vaccine–related discussion on social media and discern the salie… Show more

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Cited by 260 publications
(242 citation statements)
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“…We therefore wanted to evaluate the public's initial reaction and response to COVID-19 vaccination. Few prior studies have included this time frame during the analysis period [30,[34][35][36].…”
Section: Study Datamentioning
confidence: 99%
“…We therefore wanted to evaluate the public's initial reaction and response to COVID-19 vaccination. Few prior studies have included this time frame during the analysis period [30,[34][35][36].…”
Section: Study Datamentioning
confidence: 99%
“…The virus outbreak has demonstrated how interconnected the globe has become, as well as vaccination has therefore become a worldwide problem which a nation cannot attain a specific level of vaccination among its citizenry, it faces a significant risk of disruption as well as virus mutation; as a result, it will be challenging for the country to reclaim its positions in the international economy, as well as global cooperation, will be required to overcome the deadly virus. As a result, the pandemic's economic consequences and vaccine research are critical concerns [33][34][35]. The current study included sentiment and opinion analysis of huge tweets about COVID-19 vaccines.…”
Section: Limitationsmentioning
confidence: 99%
“…For the given tweet document sentiment, analysis plays a vital task in classifying the polarity score which indicates to express the people opinion like positive, negative or neutral. Beyond that sentiment analysis people can share their emotions like anticipation, anger, fear, sadness, joy, trust and disgust [18,19]. From this tweet information public health authorities can monitor, behaviors, surveillance of health information and it reduce the pandemic's impact.…”
Section: Related Workmentioning
confidence: 99%