
A Primer for Spatial Econometrics
With Applications in R, STATA and Python
- English
- ePUB (mobile friendly)
- Available on iOS & Android
About this book
This textbook offers a practical and engaging introduction to spatial econometric modelling, detailing the key models, methodologies and tools required to successfully apply a spatial approach.
The second edition contains new methodological developments, new references and new software routines in R that have emerged since the first edition published in 2014. It also extends practical applications with the use of the software STATA and of the programming language Python. The first software is used increasingly by many economists, applied econometricians and social scientists while the software Python is becoming the elective choice in many scientific applications. With new statistical appendices in R, STATA and Python, as well as worked examples, learning questions, exercises and technical definitions, this is a significantly expanded second edition that will be a valuable resource for advanced students of econometrics.
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Information
Table of contents
- Cover
- Front Matter
- 1. The Classical Linear Regression Model
- 2. Some Important Spatial Definitions
- 3. Spatial Linear Regression Models
- 4. Further Topics in Spatial Econometrics
- 5. Alternative Model Specifications for Big Datasets
- 6. Conclusions: Whatâs Next?
- Back Matter