Publication | Open Access
Testing spatial heterogeneity in geographically weighted principal components analysis
10
Citations
19
References
2016
Year
Spatial ScienceQuantitative Spatial ModelCovariance MatrixEnvironmental MonitoringEngineeringSpatial Statistical AnalysisSpatial HeterogeneitySpatial Distribution PatternsGeographyMultidimensional AnalysisSpatial VariabilityPublic HealthPrincipal Component AnalysisFunctional Data AnalysisStatisticsSpatial Statistics
We propose a method to evaluate the existence of spatial variability in the covariance structure in a geographically weighted principal components analysis (GWPCA). The method, that is extensive to locally weighted principal components analysis, is based on performing a statistical hypothesis test using the eigenvectors of the PCA scores covariance matrix. The application of the method to simulated data shows that it has a greater statistical power than the current statistical test that uses the eigenvalues of the raw data covariance matrix. Finally, the method was applied to a real problem whose objective is to find spatial distribution patterns in a set of soil pollutants. The results show the utility of GWPCA versus PCA.
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