TY - JOUR
T1 - Same concerns, same responses? A Bayesian quantile regression analysis of the determinants for supporting nuclear power generation in Japan
AU - Omata, Yukiko
AU - Katayama, Hajime
AU - Arimura, Toshi H.
N1 - Funding Information:
This research is supported by a Grant-in-Aid for Scientific Research (B) 15H03352. Toshi Arimura is grateful for the financial support of the Environment Research and Technology Development Fund (2-1501) of the Ministry of the Environment, Japan. Toshi Arimura and Hajime Katayama also appreciate financial support from the Center for Global Partnership of the Japan Foundation. We appreciated comments from Kazu Iwata, Robert O. Mendelsohn, Chao-Ning Liao, Midori Aoyagi, Minoru Morita and Hanae Katayama.
Publisher Copyright:
© 2016, Society for Environmental Economics and Policy Studies and Springer Japan.
PY - 2017/7/1
Y1 - 2017/7/1
N2 - Using the Internet survey data from 6500 individuals, this study examines the determinants for supporting the restart of nuclear power plants operation in Japan. The variable of interest is the level of support that is measured as a categorical and ordered variable, for which ordered logit or probit is commonly estimated. This study departs from the literature using Bayesian ordinal quantile regression (Rahman 2015, Bayesian Anal. doi:10.1214/15-BA939) to address whether covariates have differential effects at various conditional quantiles of the latent response variable. This approach allows us to explore, for example, whether three otherwise identical individuals, the first with an average unobserved preference for the restart, the second with a low unobserved preference, and the third with a high unobserved preference, respond similarly or differently to a change in a covariate. The results show that for most of the covariates examined, including concerns about meltdowns and concerns about global warming, the effects differ across conditional quantiles of the latent response variable. In other words, the covariate effects depend crucially on individuals’ unobserved preferences for the restart (conditional on observables). The results also show that there are considerable gender differences in response to changes in covariates.
AB - Using the Internet survey data from 6500 individuals, this study examines the determinants for supporting the restart of nuclear power plants operation in Japan. The variable of interest is the level of support that is measured as a categorical and ordered variable, for which ordered logit or probit is commonly estimated. This study departs from the literature using Bayesian ordinal quantile regression (Rahman 2015, Bayesian Anal. doi:10.1214/15-BA939) to address whether covariates have differential effects at various conditional quantiles of the latent response variable. This approach allows us to explore, for example, whether three otherwise identical individuals, the first with an average unobserved preference for the restart, the second with a low unobserved preference, and the third with a high unobserved preference, respond similarly or differently to a change in a covariate. The results show that for most of the covariates examined, including concerns about meltdowns and concerns about global warming, the effects differ across conditional quantiles of the latent response variable. In other words, the covariate effects depend crucially on individuals’ unobserved preferences for the restart (conditional on observables). The results also show that there are considerable gender differences in response to changes in covariates.
KW - Energy
KW - Nuclear power
KW - Ordinal data
KW - Public attitude
KW - Quantile regression
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U2 - 10.1007/s10018-016-0167-0
DO - 10.1007/s10018-016-0167-0
M3 - Article
AN - SCOPUS:84980009940
SN - 1432-847X
VL - 19
SP - 581
EP - 608
JO - Environmental Economics and Policy Studies
JF - Environmental Economics and Policy Studies
IS - 3
ER -