<span>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 deve
Spatial Econometrics: Statistical Foundations and Applications to Regional Convergence (Advances in Spatial Science)
โ Scribed by Giuseppe Arbia
- Year
- 2006
- Tongue
- English
- Leaves
- 220
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This book bridges the gap between economic theory and spatial econometric techniques. It is accessible to those with only a basic statistical background and no prior knowledge of spatial econometric methods. It provides a comprehensive treatment of the topic, motivating the reader with examples and analysis. The volume provides a rigorous treatment of the basic spatial linear model, and it discusses the violations of the classical regression assumptions that occur when dealing with spatial data.
๐ SIMILAR VOLUMES
<p>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 develop
<p><P>Advances in Spatial Science</P><P></P><P>This series of books is dedicated to reporting on recent advances in spatial science. It contains scientific studies focusing on spatial phenomena, utilising theoretical frameworks, analytical methods, and empirical procedures specifically designed for
Globalization is affecting regional economies in a broad spectrum of aspects, from labor market conditions and development policies to climate change. To understand better how this works, we need both conceptual and methodological contributions. We need new schemes to organize our thinking, direct o
This textbook is a comprehensive introduction to applied spatial data analysis using R. Each chapter walks the reader through a different method, explaining how to interpret the results and what conclusions can be drawn. The author team showcases key topics, including unsupervised learning, causal i