Understanding hesitancy with revealed preferences across COVID-19 vaccine types
Krist\'of Kutasi, J\'ulia Koltai, \'Agnes Szab\'o-Morvai, Gergely, R\"ost, M\'arton Karsai, P\'eter Bir\'o, Bal\'azs Lengyel

TL;DR
This study analyzes vaccine hesitancy across different COVID-19 vaccine types in Hungary, revealing how trust sources influence acceptance and how vaccine choice impacts public attitudes and population segmentation.
Contribution
It uniquely quantifies revealed preferences across vaccine types using survey data, highlighting the effects of information trust and vaccine rejection behaviors on hesitancy.
Findings
Trust in information sources affects vaccine acceptance.
Conspiracy believers prefer mRNA vaccines, politicians' followers accept other types.
Vaccine rejection and re-selection fragment the population and influence perceptions.
Abstract
Many countries have secured larger quantities of COVID-19 vaccines than their populace is willing to take. This abundance and variety of vaccines created a historical moment to understand vaccine hesitancy better. Never before were more types of vaccines available for an illness and the intensity of vaccine-related public discourse is unprecedented. Yet, the heterogeneity of hesitancy by vaccine types has been neglected so far, even though factual or believed vaccine characteristics and patient attributes are known to influence acceptance. We address this problem by analysing acceptance and assessment of five vaccine types using information collected with a nationally representative survey at the end of the third wave of the COVID-19 pandemic in Hungary, where a unique portfolio of vaccines were available to the public in large quantities. Our special case enables us to quantify…
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Taxonomy
TopicsVaccine Coverage and Hesitancy · Misinformation and Its Impacts · SARS-CoV-2 and COVID-19 Research
