Project for Applied Statistics
Using R (2.6.2)
Linear regression is among the most used techniques in statistics. Nevertheless, when it is used on a spatially distributed dataset, the resulting model is neglecting all information relative to the spatial correlation in the observations and its predictive power is sub-optimal. In particular, the regression error is spatially auto-correlated and the fundamental hypothesis that errors are independent is not satisfied.
SAR implements a sub-model for the regression error by means of a
distance matrix for which estimation