Overall and Pairwise Segregation Tests Based on Nearest Neighbor Contingency Tables
Elvan Ceyhan

TL;DR
This paper introduces new statistical tests based on nearest neighbor contingency tables to analyze spatial segregation and association patterns among classes, improving detection accuracy over existing methods.
Contribution
The paper develops novel NNCT-based tests for spatial interaction, compares them with Dixon's tests, and demonstrates their superior performance through simulations and real data applications.
Findings
New NNCT-tests outperform Dixon's tests in Type I error control
The tests effectively detect small-scale spatial interactions
Applications on real data illustrate practical utility
Abstract
Multivariate interaction between two or more classes (or species) has important consequences in many fields and causes multivariate clustering patterns such as segregation or association. The spatial segregation occurs when members of a class tend to be found near members of the same class (i.e., near conspecifics) while spatial association occurs when members of a class tend to be found near members of the other class or classes. These patterns can be studied using a nearest neighbor contingency table (NNCT). The null hypothesis is randomness in the nearest neighbor (NN) structure, which may result from -- among other patterns -- random labeling (RL) or complete spatial randomness (CSR) of points from two or more classes (which is called the CSR independence, henceforth). In this article, we introduce new versions of overall and cell-specific tests based on NNCTs (i.e., NNCT-tests) and…
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Taxonomy
TopicsSpatial and Panel Data Analysis · Economic and Environmental Valuation · Banana Cultivation and Research
