Volume 1
1: Introduction.
2: Basic Data Operations.
3: GIS Operations.
4: Geovisualization.
5: Statistical Maps.
6: Maps for Rates.
7: Univariate and Bivariate Data Exploration.
8: Multivariate Data Exploration.
9: Space-Time Exploration.
10: Contiguity-Based Spatial Weights.
11: Distance-Based Spatial Weights.
12: Special Weights Operations.
13: Spatial Autocorrelation.
14: Advanced Global Spatial Autocorrelation.
15: Nonparametric Spatial Autocorrelation.
16: LISA and Local Moran.
17: Other Local Spatial Autocorrelation Statistics.
18: Multivariate Local Spatial Autocorrelation.
19: LISA for Discrete Variables.
20: Density-Based Clustering Methods.
21: Postscript - The Limits of Exploration.
Appendices,
Bibliography
Volume 2
1. Introduction
Part 1: Dimension Reduction
2. Principal Component Analysis (PCA)
3. Multidimensional Scaling (MDS)
4. Stochastic Neighbor Embedding (SNE)
Part 2: Classic Clustering
5. Hierarchical Clustering Methods
6. Partioning Clustering Methods
7. Advanced Clustering Methods
8. Spectral Clustering
Part 3: Spatial Clustering
9. Spatializing Classic Clustering Methods
10. Spatially Constrained Clustering - Hierarchical Methods
11. Spatially Constrained Clustering - Partitioning Methods
Part 4: Assessment
12. Cluster Validation
Biography
Luc Anselin is the Founding Director of the Center for Spatial Data Science at the University of Chicago, where he is also Stein-Freiler Distinguished Service Professor of Sociology and the College, as well as a member of the Committee on Data Science. He is the creator of the GeoDa software and an active contributor to the PySAL Python open source software library for spatial analysis. He has written widely on topics dealing with the methodology of spatial data analysis, including his classic 1988 text on Spatial Econometrics. His work has been recognized by many awards, such as his election to the U.S. National Academy of Science and the American Academy of Arts and Science.






