Political Partisanship and Trust in Government Predict Popular Support for COVID-19 Vaccine Mandates for Various Professions and Demographic Groups: A Research Note
- PMID: 38603210
- PMCID: PMC9364069
- DOI: 10.1177/1532673X221118888
Political Partisanship and Trust in Government Predict Popular Support for COVID-19 Vaccine Mandates for Various Professions and Demographic Groups: A Research Note
Abstract
Due to the slow rate of COVID-19 vaccine uptake and the spread of the highly contagious Omicron variant, governments are considering mandating COVID-19 vaccination for specific professions and demographic groups. This study evaluates popular attitudes toward such policies. We fielded a survey of 535 registered voters in South Dakota to examine popular attitudes towards vaccine mandates for five groups-children 12 and older, K-12 teachers, medical staff, nursing homes staff, and police personnel. We estimated a series of logistic regression models and presented predicted probabilities to find the primary determinants of these attitudes. Results revealed that political partisanship and trust in government are strong predictors of support for vaccine mandates across all models. Should government and public health officials wish to increase the proportion of people vaccinated for COVID-19, they must recognize the limitations of current public health campaigns, and reshape their efforts in congruence with scientific findings.
Keywords: COVID-19; public opinion; vaccine mandate.
© The Author(s) 2022.
Conflict of interest statement
The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.
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