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Learning Objectives:
Explain how spatial dependence and spatial heterogeneity violate the Gauss-Markov assumptions of regression used in traditional econometrics
Demonstrate how the spatial weights matrix is fundamental in spatial econometrics models
Demonstrate why spatial autocorrelation among regression residuals can be an indication that spatial variables have been omitted from the models
Demonstrate how spatially lagged, trend surface, or dummy spatial variables can be used to create the spatial component variables missing in a standard regression analysis
Describe the general types of spatial econometric models
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