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COVID-19 risk perception measures: factoring and prediction of behavioral intentions and policy support

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  • Branden B. Johnson
  • Byungdoo Kim

Abstract

Although early concepts of risk perception measures distinguished cognitive from affective items, until recently multi-dimensional taxonomies were absent from risk perception studies, and even more from tests of their association with behavior or policy support. Six longitudinal panel surveys on U.S. COVID-19 views (n = 2004 February 2020, ending April 2021) allowed testing of these relationships among ≤ 10 risk perception items measured in each wave. Confirmatory factor analyses revealed consistent distinctions between personal (conditioning perceived risk on taking further or no further protective action), collective (U.S., global), affective (concern, dread), and severity (estimates of eventual total U.S. infections and deaths) measures, while affect (good-bad feelings) and duration (how long people expect the outbreak to last) did not fit with their assumed affective and severity (respectively) parallels. Collective and affective/affect risk perceptions most strongly predicted both behavioral intentions and policy support for mask wearing, avoidance of large public gatherings, and vaccination, controlling for personal risk perception (which might be partly reflected in the affective/affect effects) and other measures. These findings underline the importance of multi-dimensionality (e.g. not just asking about personal risk perceptions) in designing risk perception research, even when trying to explain personal protective actions.

Suggested Citation

  • Branden B. Johnson & Byungdoo Kim, 2023. "COVID-19 risk perception measures: factoring and prediction of behavioral intentions and policy support," Journal of Risk Research, Taylor & Francis Journals, vol. 26(11), pages 1191-1212, November.
  • Handle: RePEc:taf:jriskr:v:26:y:2023:i:11:p:1191-1212
    DOI: 10.1080/13669877.2023.2264301
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