Local Prediction of a Spatio-Temporal Process with an Application to Wet Sulfate Deposition
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Publication:3128736
DOI10.2307/2291511zbMath0864.62063OpenAlexW4242585099MaRDI QIDQ3128736
Publication date: 26 June 1997
Full work available at URL: https://doi.org/10.2307/2291511
long memorystandard errorslocal regressionlocal dataprediction methodresidual processsemivariogramgeneralized nonlinear least squareskriging predictionnonstationary spatio-temporal processsmall biasesspatially heterogeneous temporal drifttwo-stage generalized regression estimate
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