Bayesian Spatial Modeling of Housing Prices Subject to a Localized Externality

This work proposes a non stationary random field model to describe the spatial variability of housing prices that are affected by a localized externality. The model allows for the effect of the localized externality on house prices to be represented in the mean function and/or the covariance functio...

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Bibliographic Details
Published inCommunications in statistics. Theory and methods Vol. 37; no. 13; pp. 2066 - 2078
Main Authors Ecker, Mark D., Oliveira, Victor De
Format Journal Article
LanguageEnglish
Published Philadelphia, PA Taylor & Francis Group 09.05.2008
Taylor & Francis
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ISSN0361-0926
1532-415X
DOI10.1080/03610920701858404

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Summary:This work proposes a non stationary random field model to describe the spatial variability of housing prices that are affected by a localized externality. The model allows for the effect of the localized externality on house prices to be represented in the mean function and/or the covariance function of the random field. The correlation function of the proposed model is a mixture of an isotropic correlation function and a correlation function that depends on the distances between home sales and the localized externality. The model is fit using a Bayesian approach via a Markov chain Monte Carlo algorithm. A dataset of 437 single family home sales during 2001 in the city of Cedar Falls, Iowa, is used to illustrate the model.
ISSN:0361-0926
1532-415X
DOI:10.1080/03610920701858404