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Survey instructions bias perceptions of environmental health risks

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  • Shane Timmons
  • Alexandros Papadopoulos
  • Pete Lunn

Abstract

A basic function of government is to manage environmental risks. This requires measurement of how the public perceive different risks, but it is hard to measure risk perceptions in a neutral, unbiased way. In a pre-registered experiment with a nationally representative sample (N = 800), we tested the effects of survey instructions on perceived risk from common environmental health hazards. Participants were randomised to read instructions that made salient a relatively unfamiliar hazard (electromagnetic fields; EMFs), a familiar hazard (carbon monoxide) or no hazard (i.e. that the study was about environmental health risks in general) before rating the perceived risks of a series of hazards. Results revealed an asymmetric salience effect. Instructions that highlighted EMFs elicited higher perceived risk from EMFs, while perceptions of other hazards were unaffected. Instructions that made carbon monoxide salient did not affect perceptions of carbon monoxide, but diminished perceived risk from other hazards. Effects were observed using standard rating scales and via a novel policy budget allocation task. In exploratory analyses, we further tested the relationship between perceived risk as elicited by rating scales and revealed risk perceptions. How often respondents report thinking about a hazard day-to-day best predicted choices in a hypothetical budget task and self-reported mitigative behaviour, when controlling for other dimensions of perceived risk, such as perceived severity of the consequences of exposure. The results have implications for designing surveys to measure perceived risk of environmental health hazards.

Suggested Citation

  • Shane Timmons & Alexandros Papadopoulos & Pete Lunn, 2024. "Survey instructions bias perceptions of environmental health risks," Journal of Risk Research, Taylor & Francis Journals, vol. 27(8), pages 932-950, October.
  • Handle: RePEc:taf:jriskr:v:27:y:2024:i:8:p:932-950
    DOI: 10.1080/13669877.2024.2421006
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