Understanding the COVID Vaccination Stances in Brazil: a Temporal Analysis using Twitter Data

Authors

  • André Mediote de Sousa Universidade Federal do Rio Grande do Sul
  • Karin Becker Universidade Federal do Rio Grande do Sul

DOI:

https://doi.org/10.5753/jidm.2022.2565

Keywords:

vaccination stances, COVID-19, temporal analysis, group behavior, Twitter, topic modeling, BERTopic

Abstract

Collective immunization is the only current solution available for combating COVID, but resistance towards vaccination have been observed in many countries. Brazil is a world-class reference on large-scale National Immunization Programs (NPI). However, the Federal Government was criticized for the delay and difficulties in developing a COVID NPI compatible with its large population. By May 2021, only 35 million Brazilians were vaccinated with at least one dose. This article developed a temporal analysis of pro/against stances towards COVID vaccination in Brazil. Considering tweets from February 2020 to May 2021, we summarized the main topics expressed by pro/anti-vaxxers using BERTopic, a dynamic topic modeling technique, and related them to events in the national scenario. The antivaxxers were more active throughout 2020, but the pro-vaxxers’ movement significantly increased by late 2020 with the begging of immunization, becoming prevalent in 2021. We conclude that anti-vaxxers reacted to isolated events (e.g., mandatory vaccination, political disputes) and do not constitute an effective campaign against vaccination. The pro-vaxxer’s stance denotes a continuous pro-vaccination advocacy effort, confirming that Brazil is among the most receptive countries regarding COVID vaccination.

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Published

2023-01-17

How to Cite

Mediote de Sousa, A., & Becker, K. (2023). Understanding the COVID Vaccination Stances in Brazil: a Temporal Analysis using Twitter Data. Journal of Information and Data Management, 13(6). https://doi.org/10.5753/jidm.2022.2565

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Section

KDMiLe 2021