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Bayesians in Space: Using Bayesian Methods to Inform Choice of Spatial Weights Matrix in Hedonic Property Analyses

The Review of Regional Studies

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Title Bayesians in Space: Using Bayesian Methods to Inform Choice of Spatial Weights Matrix in Hedonic Property Analyses
 
Creator Mueller, Julie M
Loomis, John B.
 
Description The choice of weights is a non-nested problem in most applied spatial econometric models. Despite numerous recent advances in spatial econometrics, the choice of spatial weights remains exogenously determined by the researcher in empirical applications. Bayesian techniques provide statistical evidence regarding the simultaneous choice of model specification and spatial weights matrices by using posterior probabilities. This paper demonstrates the Bayesian estimation approach in a spatial hedonic property model estimating the impacts of repeated wildfires on house prices in Southern California. We find that improper choice of spatial model and weights can result in up to 5% difference in estimated coefficients and in our case study up to a $15 Million difference in total benefits of reducing wildfires in Los Angeles County.
 
Publisher Southern Regional Science Association
 
Contributor
 
Date 2012-04-19
 
Type info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion

 
Format application/pdf
 
Identifier http://journal.srsa.org/ojs/index.php/RRS/article/view/3
 
Source The Review of Regional Studies; Vol 40, No 3 (2010); 245-255
0048-749X
1553-0892
 
Language eng
 
Relation http://journal.srsa.org/ojs/index.php/RRS/article/view/3/115