Introduction to Spatial EconometricsCRC Press, 20 gen 2009 - 340 pagine Although interest in spatial regression models has surged in recent years, a comprehensive, up-to-date text on these approaches does not exist. Filling this void, Introduction to Spatial Econometrics presents a variety of regression methods used to analyze spatial data samples that violate the traditional assumption of independence between observat |
Sommario
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Chapter 2 Motivating and Interpreting Spatial Econometric Models | 25 |
Chapter 3 Maximum Likelihood Estimation | 45 |
Chapter 4 Logdeterminants and Spatial Weights | 77 |
Chapter 5 Bayesian Spatial Econometric Models | 123 |
Chapter 6 Model Comparison | 155 |
Chapter 7 Spatiotemporal and Spatial Models | 189 |
Chapter 8 Spatial Econometric Interaction Models | 211 |
Chapter 9 Matrix Exponential Spatial Models | 237 |
Chapter 10 Limited Dependent Variable Spatial Models | 279 |
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Color Insert | 337 |
Back Cover | 339 |
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