The effects of personal experience on choice-based preferences for wildfire protection programs
Thomas P. Holmes A D , Armando González-Cabán B , John Loomis C and José Sánchez BA Southern Research Station, USDA Forest Service, PO Box 12254, Research Triangle Park, NC 27709, USA.
B Pacific Southwest Research Station, USDA Forest Service, 4955 Canyon Crest Drive, Riverside, CA 92507, USA.
C Department of Agricultural and Resource Economics, Colorado State University, B310 Clark Building, Fort Collins, CO 80526, USA.
D Corresponding author. Email: tholmes@fs.fed.us
International Journal of Wildland Fire 22(2) 234-245 https://doi.org/10.1071/WF11182
Submitted: 24 December 2011 Accepted: 30 June 2012 Published: 14 September 2012
Abstract
In this paper, we investigate homeowner preferences and willingness to pay for wildfire protection programs using a choice experiment with three attributes: risk, loss and cost. Preference heterogeneity among survey respondents was examined using three econometric models and risk preferences were evaluated by comparing willingness to pay for wildfire protection programs against expected monetary losses. The results showed that while nearly all respondents had risk seeking preferences, a small segment of respondents were risk neutral or risk averse. Only respondents who had personal experience with the effects of wildfire consistently made trade-offs among risk, loss and cost and these respondents were willing to pay more for wildfire protection programs than were respondents without prior experience of the effects of wildfire. The degree to which people with prior experience with the effects of wildfire can effectively articulate an economic rationale for investing in wildfire protection to other members of their own or other communities facing the threat of wildfires may influence the overall success of wildfire protection programs.
Additional keywords: expected utility, heuristics, natural disasters, prospect theory, risk aversion, risk seeking.
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