Abstract Domestic climate migration is likely to increase in the future, but we know little about public perceptions and attitudes about climate migrants and migration. Understanding how perceptions and attitudes are formed is a critical task in assessing public support for assistance policies and developing effective messaging campaigns. In this paper, we aim to better understand how the U.S. public perceives domestic climate migrants. We use novel survey data to identify the relationship between climate change risk perceptions and awareness of “climate migrants,” belief that domestic climate migration is currently happening in the United States, perceived voluntariness of domestic climate migrant relocation, and support for the development of assistance programs for domestic climate migrants. We utilize a large, nationally representative panel of U.S. adults (N= 4074) collected over three waves in 2022. We find that climate change risk perceptions and perceptions of whether migration is voluntary are key drivers of perceptions and attitudes toward domestic climate migrants. We provide key suggestions to policy makers and decision-makers to improve outcomes for host and migrant communities. Significance StatementThis study illuminates factors that influence the how the public forms perceptions and attitudes about domestic climate migrants in the United States. For the first time, we offer insight into the drivers of public opinion toward domestic climate migrants and migration. Our results indicate that the various perceptions of climate migrants are largely driven by preexisting climate change risk perceptions and respondent characteristics. Our findings create a new connection with the existing literature on climate change risk perceptions and offer an opportunity for decision-makers and policy makers to create effective messaging campaigns on topics related to domestic climate migration in the United States.
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Participating in a climate prediction market increases concern about global warming
Modifying attitudes and behaviours related to climate change is difficult. Attempts to offer information, appeal to values and norms or enact policies have shown limited success. Here we examine whether participation in a climate prediction market can shift attitudes by having the market act as a non-partisan adjudicator and by prompting participants to put their ‘money where their mouth is’. Across two field studies, we show that betting on climate events alters: (1) participants’ concern about climate change, (2) support for remedial climate action and (3) knowledge about climate issues. While the effects were dependent on participants’ betting performance in Study 1, they were independent of betting outcomes in Study 2. Overall, our findings suggest that climate prediction markets could offer a promising path to changing people’s climate-related attitudes and behaviour.
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- Award ID(s):
- 1835389
- PAR ID:
- 10481399
- Publisher / Repository:
- Nature
- Date Published:
- Journal Name:
- Nature Climate Change
- Volume:
- 13
- Issue:
- 6
- ISSN:
- 1758-678X
- Page Range / eLocation ID:
- 523 to 531
- Format(s):
- Medium: X
- Sponsoring Org:
- National Science Foundation
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