Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices
Introduction: The COVID-19 pandemic caused a widespread public health and financial crisis. The rapid vaccine development generated extensive discussions in both mainstream and social media, sparking optimism in the global financial markets. This study aims to explore the key themes from mainstream...
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sg-ntu-dr.10356-1818272024-12-23T04:22:51Z Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices Bai, Shun Yao Lee, Edmund Wei Jian College of Computing and Data Science Computer and Information Science COVID-19 Stock market Introduction: The COVID-19 pandemic caused a widespread public health and financial crisis. The rapid vaccine development generated extensive discussions in both mainstream and social media, sparking optimism in the global financial markets. This study aims to explore the key themes from mainstream media’s coverage of COVID-19 vaccines on Facebook and examine how public interactions and responses on Facebook to mainstream media’s posts are associated with daily stock prices and trade volume of major vaccine manufacturers. Methods: We obtained mainstream media’s coverage of COVID-19 vaccines and major vaccine manufacturers on Facebook from CrowdTangle, a public insights tool owned and operated by Facebook, as well as the corresponding trade volume and daily closing prices from January 2020 to December 2021. Structural topic modelling was used to analyze social media posts while regression analysis was conducted to determine the impact of Facebook reactions on stock prices and trade volume. Results: 10 diverse topics ranging from vaccine trials and their politicization (note: check that we use American spelling throughout), to stock market discussions were found to evolve over the pandemic. Although Facebook reactions were not consistently associated with vaccine manufacturers’ stock prices, ‘Haha’ and ‘Angry’ reactions showed the strongest association with stock price fluctuations. In comparison, social media reactions had little observable impact on trading volume. Discussion: Topics generated reflect both actual events during vaccine development as well as its political and economic impact. The topics generated in this study reflect both the actual events surrounding vaccine development and its broader political and economic impact. While we anticipated a stronger correlation, our findings suggest a limited relationship between emotional reactions on Facebook and vaccine manufacturers’ stock prices and trading volume. We also discussed potential technical enhancements for future studies, including the integration of large language models. Nanyang Technological University Published version The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. This project was supported by Nanyang Technological University (NTU) under the URECA Undergraduate Research Programme as well as NTU’s Start Up Grant (grant number: 020154-00001). 2024-12-23T04:22:51Z 2024-12-23T04:22:51Z 2024 Journal Article Bai, S. Y. & Lee, E. W. J. (2024). Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices. Frontiers in Public Health, 12, 1411345-. https://dx.doi.org/10.3389/fpubh.2024.1411345 2296-2565 https://hdl.handle.net/10356/181827 10.3389/fpubh.2024.1411345 39193202 2-s2.0-85202075604 12 1411345 en NTU SUG 020154-00001 URECA Frontiers in Public Health © 2024 Bai and Lee. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. application/pdf |
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Computer and Information Science COVID-19 Stock market Bai, Shun Yao Lee, Edmund Wei Jian Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
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Introduction: The COVID-19 pandemic caused a widespread public health and financial crisis. The rapid vaccine development generated extensive discussions in both mainstream and social media, sparking optimism in the global financial markets. This study aims to explore the key themes from mainstream media’s coverage of COVID-19 vaccines on Facebook and examine how public interactions and responses on Facebook to mainstream media’s posts are associated with daily stock prices and trade volume of major vaccine manufacturers. Methods: We obtained mainstream media’s coverage of COVID-19 vaccines and major vaccine manufacturers on Facebook from CrowdTangle, a public insights tool owned and operated by Facebook, as well as the corresponding trade volume and daily closing prices from January 2020 to December 2021. Structural topic modelling was used to analyze social media posts while regression analysis was conducted to determine the impact of Facebook reactions on stock prices and trade volume. Results: 10 diverse topics ranging from vaccine trials and their politicization (note: check that we use American spelling throughout), to stock market discussions were found to evolve over the pandemic. Although Facebook reactions were not consistently associated with vaccine manufacturers’ stock prices, ‘Haha’ and ‘Angry’ reactions showed the strongest association with stock price fluctuations. In comparison, social media reactions had little observable impact on trading volume. Discussion: Topics generated reflect both actual events during vaccine development as well as its political and economic impact. The topics generated in this study reflect both the actual events surrounding vaccine development and its broader political and economic impact. While we anticipated a stronger correlation, our findings suggest a limited relationship between emotional reactions on Facebook and vaccine manufacturers’ stock prices and trading volume. We also discussed potential technical enhancements for future studies, including the integration of large language models. |
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College of Computing and Data Science |
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College of Computing and Data Science Bai, Shun Yao Lee, Edmund Wei Jian |
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Article |
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Bai, Shun Yao Lee, Edmund Wei Jian |
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Bai, Shun Yao |
title |
Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
title_short |
Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
title_full |
Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
title_fullStr |
Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
title_full_unstemmed |
Examining media's coverage of COVID-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
title_sort |
examining media's coverage of covid-19 vaccines and social media sentiments on vaccine manufacturers' stock prices |
publishDate |
2024 |
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https://hdl.handle.net/10356/181827 |
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1820027761854513152 |