Abstract
The use of indicator variables for computing predictions for the linear model is a well known technique. Fuller (Fuller, W. A. (1980). The use of indicator variables in computing predictions. J. Econometrics2: 231–243.) extends this to predictions for models with a general covariance structure and nonlinear models. In this work we use indicator variables for spatial data models with trend and a parametrized but unknown covariance function. We show that Restricted Maximum Likelihood (REML) estimates are a natural way to estimate the covariance parameters under this schema. We use dummy variables to predict the response at any number of sites, on a random Gaussian field. A simulation study was conducted to study the performance of the estimate and predictor when we consider indicator variables in the model.
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