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Learning Objectives:
Describe how data mining can be used for geospatial intelligence
Explain how the analytical reasoning techniques, visual representations, and interaction techniques that make up the domain of visual analytics have a strong spatial component
Demonstrate how cluster analysis can be used as a data mining tool
Interpret patterns in space and time using Dorling and Openshaw’s geographical analysis machine (GAM) demonstration of disease incidence diffusion
Differentiate between data mining approaches used for spatial and non-spatial applications
Explain how spatial statistics techniques are used in spatial data mining
Compare and contrast the primary types of data mining: summarization/characterization, clustering/categorization, feature extraction, and rule/relationships extraction
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Keywords: