Spatial Data, Analysis and Regression mini course
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README.md

README.md

SDAR-Mini

This resource contains the materials and structure suggested to run a mini course on spatial data, analysis and regression of approximately 14 hours. The course is structured along four lectures and four labs that require the use of computers.

Lectures present an introductory overview of why it is important to explictly consider space in quantitative analysis. The first session covers different types of spatial data and motivates spatial analysis, introducing the concept of spatial dependence and stressing its differences spatial heterogeneity. The next session introduces spatial weights, the spatial lag operator and provides an overview of the most basic tools of exploratory spatial data analysis (ESDA). Third and fourth lectures delve into spatial regression. After a motivation, time is spent on model specification, diagnostics and estimation, concluding with an overview of software implementations of spatial econometric techniques.

Computer labs provide practical lessons that solidify the concepts explained in the lectures and allow the student to learn some of the main tools available to carry out spatial analysis. The first session uses QGIS to open, manipulate and transform spatial data. The second lab uses GeoDa as an interactive tool to explore data and perform the main ESDA techniques. The third lab covers the specification and estimation of spatial econometric models using GeoDaSpace, while the fourth replicates its results using the open-source Python library PySAL.

As a whole, this resource is intended for both instructors and students. The latter can follow the structure of the sessions, get a sense of the main topics through the slides provided and continue with the suggested readings. The former can take it as an initial material and adapt it to their own teaching practices, extending in areas they consider more relevant, or skipping parts deemed inneccesary for their own needs. To that end, the course is released as an open-source software project and licensed using Creative-Commons, which allows reuse, remix and redistribution.

Bugs, improvements and contributions

“Spatial Data, Analysis, and Regression - A mini course” is released as if it was a piece of open-source software. As such, it is available in an open repository at GitHub and all the powerful tools that come with it are available as well. If you find any bug or mistake you would like to fix, please open an issue; if you would like to contribute materials or modifications to the existing contents, please submit a pull request. If you are not familiar with standard open-source development practices, have a read here or send me an email.

Citation

This resource has been published in the Open Access journal REGION (link). If you use of refer to materials in this course, please give it appropriate credit by citing it as:

@article{arribas2014spatial,
  title={Spatial data, analysis, and regression-a mini course},
  author={Arribas-Bel, Dani},
  journal={REGION},
  volume={1},
  number={1}.
  pages={R1}
  year={2014},
  publisher={European Regional Science Association}
  url = "{ http://darribas.org/sdar_mini}",
}

License

“Spatial Data, Analysis, and Regression - A mini course” has been developed by Dani Arribas-Bel and is released under Creative Commons BY-NC-SA 4.0