Topics covered include:
- Exploratory methods for spatial data including outlier detection, (semi)variograms, Moran's I, and Geary's c.
- Ordinary and generalized least squares regression methods and their application to spatial data.
- Suitable parametric models for the mean and covariance structure of geostatistical and areal data.
- Model-fitting, including inference methods for explanatory variables and likelihood-based methods for covariance parameters.
- Practical use of spatial linear models including prediction (kriging), spatial sampling, and spatial design of experiments for solving real world problems.
All concepts are introduced in a natural order and illustrated throughout the book using four datasets. All analyses, tables, and figures are completely reproducible using open-source R code provided at a GitHub site. Exercises are given at the end of each chapter, with full solutions provided on an instructor's FTP site supplied by the publisher.
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