Cover image for Spatial Econometrics Statistical Foundations and Applications to Regional Convergence
Spatial Econometrics Statistical Foundations and Applications to Regional Convergence
Title:
Spatial Econometrics Statistical Foundations and Applications to Regional Convergence
Author:
Arbia, Giuseppe. author.
ISBN:
9783540323051
Personal Author:
Physical Description:
XVIII, 207 p. 19 illus. online resource.
Series:
Advances in Spatial Science,
Contents:
Motivation -- Random Fields and Spatial Models -- Likelihood Function for Spatial Samples -- The Linear Regression Model with Spatial Data -- Italian and European ?-convergence Models Revisited -- Looking Ahead: A Review of More Advanced Topics in Spatial Econometrics.
Abstract:
In recent years the so-called new economic geography and the issue of regional economic convergence have increasingly drawn the interest of economists to the empirical analysis of regional and spatial data. However, even if the methodology for econometric treatment of spatial data is well developed, there does not exist a textbook theoretically grounded, well motivated and easily accessible to eco- mists who are not specialists. Spatial econometric techniques receive little or no attention in the major econometric textbooks. Very occasionally the standard econometric textbooks devote a few paragraphs to the subject, but most of them simply ignore the subject. On the other hand spatial econometric books (such as Anselin, 1988 or Anselin, Florax and Rey, 2004) provide comprehensive and - haustive treatments of the topic, but are not always easily accessible for people whose main degree is not in quantitative economics or statistics. This book aims at bridging the gap between economic theory and spatial stat- tical methods. It starts by strongly motivating the reader towards the problem with examples based on real data, then provides a rigorous treatment, founded on s- chastic fields theory, of the basic spatial linear model, and finally discusses the simpler cases of violation of the classical regression assumptions that occur when dealing with spatial data.
Added Corporate Author:
Holds: Copies: