ABSTRACT

Spatial data is crucial to improve decision-making in a wide range of fields including environment, health, ecology, urban planning, economy, and society. Spatial Statistics for Data Science: Theory and Practice with R describes statistical methods, modeling approaches, and visualization techniques to analyze spatial data using R. The book provides a comprehensive overview of the varying types of spatial data, and detailed explanations of the theoretical concepts of spatial statistics, alongside fully reproducible examples which demonstrate how to simulate, describe, and analyze spatial data in various applications. Combining theory and practice, the book includes real-world data science examples such as disease risk mapping, air pollution prediction, species distribution modeling, crime mapping, and real state analyses. The book utilizes publicly available data and offers clear explanations of the R code for importing, manipulating, analyzing, and visualizing data, as well as the interpretation of the results. This ensures contents are easily accessible and fully reproducible for students, researchers, and practitioners.

Key Features:

  • Describes R packages for retrieval, manipulation, and visualization of spatial data.
  • Offers a comprehensive overview of spatial statistical methods including spatial autocorrelation, clustering, spatial interpolation, model-based geostatistics, and spatial point processes.
  • Provides detailed explanations on how to fit and interpret Bayesian spatial models using the integrated nested Laplace approximation (INLA) and stochastic partial differential equation (SPDE) approaches.

part I|80 pages

Spatial data

chapter 21|14 pages

Types of spatial data

chapter 2|10 pages

Spatial data in R

chapter 3|14 pages

The sf package for spatial vector data

chapter 5|18 pages

Making maps with R

chapter 6|12 pages

R packages to download open spatial data

part II|60 pages

Areal data

chapter 82Chapter 7|12 pages

Spatial neighborhood matrices

chapter 8|16 pages

Spatial autocorrelation

chapter 9|12 pages

Bayesian spatial models

chapter 10|16 pages

Disease risk modeling

chapter 11|2 pages

Areal data issues

part III|54 pages

Geostatistical data

chapter 142Chapter 12|10 pages

Geostatistical data

chapter 13|12 pages

Spatial interpolation methods

chapter 14|8 pages

Kriging

chapter 15|18 pages

Model-based geostatistics

chapter 16|4 pages

Methods assessment

part IV|62 pages

Spatial point patterns

chapter 19617|8 pages

Spatial point patterns

chapter 18|8 pages

The spatstat package

chapter 19|6 pages

Spatial point processes and simulation

chapter 20|8 pages

Complete spatial randomness

chapter 21|10 pages

Intensity estimation

chapter 22|6 pages

The K-function

chapter 23|14 pages

Point process modeling