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Objective Bayesian analysis of spatial data with uncertain nugget and range parameters
Authors:Hannes Kazianka  Jürgen Pilz
Institution:1. Finance and Insurance Mathematics, Vienna University of Technology, Wiedner Hauptstra?e 8/105‐1, 1040 Vienna, Austria;2. Department of Statistics, University of Klagenfurt, Universit?tsstra?e 65‐67, 9020 Klagenfurt, Austria
Abstract:The authors develop default priors for the Gaussian random field model that includes a nugget parameter accounting for the effects of microscale variations and measurement errors. They present the independence Jeffreys prior, the Jeffreys‐rule prior and a reference prior and study posterior propriety of these and related priors. They show that the uniform prior for the correlation parameters yields an improper posterior. In case of known regression and variance parameters, they derive the Jeffreys prior for the correlation parameters. They prove posterior propriety and obtain that the predictive distributions at ungauged locations have finite variance. Moreover, they show that the proposed priors have good frequentist properties, except for those based on the marginal Jeffreys‐rule prior for the correlation parameters, and illustrate their approach by analyzing a dataset of zinc concentrations along the river Meuse. The Canadian Journal of Statistics 40: 304–327; 2012 © 2012 Statistical Society of Canada
Keywords:frequentist properties  Gaussian process  Jeffreys prior  nugget effect  posterior propriety  reference prior  MSC 2010: Primary 62F15  62M30  secondary 62M40
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