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Automatically detecting and understanding the perception of COVID-19 vaccination: a middle east case study.

Wajdi AljedaaniIbrahem AbuhaimedFurqan RustamMohamed Wiem MkaouerAli OuniIlyes Jenhani
Published in: Social network analysis and mining (2022)
Generally, we found that the highest positive sentiments were registered for Pfizer-BioNTech, followed by Sinopharm-BIBP and Oxford-AstraZeneca. In addition, we found that 38% of the overall tweets showed negative sentiment, and only 12% had a positive sentiment. It is important to note that the majority of the sentiments vary between neutral and negative, showing the lack of conviction of the importance of vaccination among the large majority of tweeters. This paper extracts the top concerns raised by the tweets and advocates for taking them into account when advertising for the vaccination. Regarding the identification of vaccine-related tweets, the Logistic Regression model scored the highest accuracy of 0.82. Our findings are concluded with implications for public health authorities and the scholarly community to take into account to improve the vaccine's acceptance.
Keyphrases
  • public health
  • coronavirus disease
  • sars cov
  • healthcare
  • mental health
  • global health