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Enhancements to a Geographically Weighted Principal Component Analysis in the Context of an Application to an Environmental Data Set

机译:在应用环境数据集的情况下增强地理加权主成分分析

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摘要

In many physical geography settings, principal component analysis (PCA) is applied without consideration for important spatial effects, and in doing so, tends to provide an incomplete understanding of a given process. In such circumstances, a spatial adaptation of PCA can be adopted, and to this end, this study focuses on the use of geographically weighted principal component analysis (GWPCA). GWPCA is a localized version of PCA that is an appropriate exploratory tool when a need exists to investigate for a certain spatial heterogeneity in the structure of a multivariate data set. This study provides enhancements to GWPCA with respect to: (i) finding the scale at which each localized PCA should operate; and (ii) visualizing the copious amounts of output that result from its application. An extension of GWPCA is also proposed, where it is used to detect multivariate spatial outliers. These advancements in GWPCA are demonstrated using an environmental freshwater chemistry data set, where a commentary on the use of preprocessed (transformed and standardized) data is also presented. The study is structured as follows: (1) the GWPCA methodology; (2) a description of the case study data; (3) the GWPCA application, demonstrating the value of the proposed advancements; and (4) conclusions. Most GWPCA functions have been incorporated within the GWmodel R package.
机译:在许多自然地理环境中,应用主成分分析(PCA)时不会考虑重要的空间影响,并且这样做往往会使人对给定过程的理解不完整。在这种情况下,可以采用PCA的空间适应性,为此,本研究着重于使用地理加权主成分分析(GWPCA)。 GWPCA是PCA的本地化版本,当需要调查多元数据集结构中的某些空间异质性时,它是一种合适的探索性工具。这项研究在以下方面增强了GWPCA:(i)确定每个本地PCA的运作规模; (ii)可视化其应用所产生的大量输出。还提出了GWPCA的扩展,用于检测多元空间离群值。 GWPCA的这些进步通过使用环境淡水化学数据集得到了证明,其中还对使用预处理(转换和标准化)数据提供了评论。该研究的结构如下:(1)GWPCA方法论; (2)案例研究数据的描述; (3)GWPCA申请书,证明拟议垫款的价值; (4)结论。 GWmodel R软件包中已包含大多数GWPCA功能。

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  • 来源
    《Geographical analysis》 |2015年第2期|1-27|共27页
  • 作者单位

    Sustainable Soils and Grassland Systems Rothamsted Research Okehampton Devon U.K.;

    APEM Ltd Llantrisant U.K.;

    School of Geography Politics and Sociology University of Newcastle Newcastle upon Tyne U.K.;

    National Centre for Geocomputation National University of Ireland Maynooth Maynooth Ireland;

    National Centre for Geocomputation National University of Ireland Maynooth Maynooth Ireland;

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