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Geographically weighted principal components analysis
Authors:Paul Harris  Chris Brunsdon  Martin Charlton
Institution:1. National Centre for Geocomputation, National University of Ireland Maynooth, Maynooth, Co. , Kildare, Ireland paul.harris@nuim.ie;3. Department of Geography , University of Leicester , Leicester, UK;4. National Centre for Geocomputation, National University of Ireland Maynooth, Maynooth, Co. , Kildare, Ireland
Abstract:Principal components analysis (PCA) is a widely used technique in the social and physical sciences. However in spatial applications, standard PCA is frequently applied without any adaptation that accounts for important spatial effects. Such a naive application can be problematic as such effects often provide a more complete understanding of a given process. In this respect, standard PCA can be (a) replaced with a geographically weighted PCA (GWPCA), when we want to account for a certain spatial heterogeneity; (b) adapted to account for spatial autocorrelation in the spatial process; or (c) adapted with a specification that represents a mixture of both (a) and (b). In this article, we focus on implementation issues concerning the calibration, testing, interpretation and visualisation of the location-specific principal components from GWPCA. Here we initially consider the basics of (global) principal components, then consider the development of a locally weighted PCA (for the exploration of local subsets in attribute-space) and finally GWPCA. As an illustration of the use of GWPCA (with respect to the implementation issues we investigate), we apply this technique to a study of social structure in Greater Dublin, Ireland.
Keywords:PCA  GWPCA  bandwidth selection  visualisation  nonstationarity  GWR
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