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Estimation and Prediction in the Presence of Spatial Confounding for Spatial Linear Models
Authors:Garritt L Page  Yajun Liu  Zhuoqiong He  Donchu Sun
Institution:1. Department of StatisticsBrigham Young University;2. Wells Fargo Bank, Chapel Hill, North Carolina;3. Department of StatisticsUniversity of Missouri;4. East Chinese Normal University
Abstract:In studies that produce data with spatial structure, it is common that covariates of interest vary spatially in addition to the error. Because of this, the error and covariate are often correlated. When this occurs, it is difficult to distinguish the covariate effect from residual spatial variation. In an i.i.d. normal error setting, it is well known that this type of correlation produces biased coefficient estimates, but predictions remain unbiased. In a spatial setting, recent studies have shown that coefficient estimates remain biased, but spatial prediction has not been addressed. The purpose of this paper is to provide a more detailed study of coefficient estimation from spatial models when covariate and error are correlated and then begin a formal study regarding spatial prediction. This is carried out by investigating properties of the generalized least squares estimator and the best linear unbiased predictor when a spatial random effect and a covariate are jointly modelled. Under this setup, we demonstrate that the mean squared prediction error is possibly reduced when covariate and error are correlated.
Keywords:confounding bias  generalized least squares estimator  spatial prediction  spatial correlation
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