A Generalization of Ripley's K Function for the Detection of Spatial Clustering in Areal Data
Stella Self, Anna Overby, Anja Zgodic, David White, Alexander McLain,, Caitlin Dyckman

TL;DR
This paper introduces a new generalized Ripley's K function tailored for areal data to improve spatial clustering detection, addressing limitations of existing point process methods.
Contribution
The paper develops a novel generalization of Ripley's K function specifically for areal data, enhancing accuracy in spatial clustering analysis.
Findings
The new method outperforms traditional Ripley's K in simulations.
It reduces false positives compared to existing methods.
Effective in real-world land and health data applications.
Abstract
Spatial clustering detection has a variety of applications in diverse fields, including identifying infectious disease outbreaks, assessing land use patterns, pinpointing crime hotspots, and identifying clusters of neurons in brain imaging applications. While performing spatial clustering analysis on point process data is common, applications to areal data are frequently of interest. For example, researchers might wish to know if census tracts with a case of a rare medical condition or an outbreak of an infectious disease tend to cluster together spatially. Since few spatial clustering methods are designed for areal data, researchers often reduce the areal data to point process data (e.g., using the centroid of each areal unit) and apply methods designed for point process data, such as Ripley's K function or the average nearest neighbor method. However, since these methods were not…
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Taxonomy
TopicsData-Driven Disease Surveillance · Spatial and Panel Data Analysis · Land Use and Ecosystem Services
