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Spatial association measures for an ESDA-GIS framework: Developments, significance tests, and applications to spatio-temporal income dynamics of United States labor market areas, 1969--1999.

机译:ESDA-GIS框架的空间关联度量:1969--1999年美国劳动力市场区域的时空收入动态的发展,意义检验及其应用。

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摘要

This study is concerned with developing new spatial association measures (SAMs), elaborating generalized significance testing methods, proposing associated graphical and mapping techniques for an ESDA-GIS (Exploratory Spatial Data Analysis-Geographic Information Systems) framework, and applying those techniques to spatio-temporal income dynamics across U.S. labor market areas, 1969–1999. It is argued that SAMs play a central role in obtaining a seamless integration between ESDA and GIS where the cross-fertilization between them is highly achieved in such a way that ESDA takes advantage of GIS's data manipulation and visualization capabilities and a GIS utilizes ESDA's statistical integrity and computational efficiency.; Two sets of new SAMs are developed: global S and local Si as univariate SAMs, and global L and local Li as bivariate SAMs. Global S, spatial smoothing scalar, captures the degree of spatial smoothing when a geographical variable is transformed to its spatially smoothed vector in which each observation is re-computed in conjunction with its neighbors as defined in a spatial weights matrix. If a spatial pattern is more spatially clustered, it is given a higher value of S. Local Si, defined as an observation's relative contribution to the corresponding global S, allows a researcher to detect spatial clusters with effectively avoiding the tyranny of reference observations that preexisting univariate SAMs have suffered from.; Global L and local Li are devised to conform to two concepts of association involved in comparing two spatial patterns in a simultaneous fashion: pairwise point-to-point association and univariate spatial association. Whereas aspatial bivariate association measure, such as Pearson's correlation coefficient, is dedicated solely to the first type of association, global L captures numerical co-variances conditioned by topological relationships among observations to parameterize bivariate spatial dependence and to calibrate the degree of spatial co-patterning. Local Li, a localized spatial correlation, captures the degree to which each location conforms to or deviates from the corresponding global L, and allows for exploring spatial heterogeneity in a bivariate relation. (Abstract shortened by UMI.)
机译:这项研究涉及开发新的空间关联度量(SAM),阐述广义重要性测试方法,为ESDA-GIS(探索性空间数据分析-地理信息系统)框架提出相关的图形和制图技术,以及将这些技术应用于时空分析。 1969-1999年,美国劳动力市场区域的时间收入动态。有人认为,SAM在ESDA与GIS之间的无缝集成中起着中心作用,在这种情况下,它们之间的互用性很高,以致ESDA利用GIS的数据处理和可视化功能,而GIS利用ESDA的统计完整性和计算效率。开发了两组新的SAM:作为单变量SAM的全局 S 和局部 S i ,以及全局 L 和本地 L i 作为二元SAM。全局 S 是空间平滑标量,可将地理变量转换为其空间平滑矢量后捕获空间平滑程度,在该空间矢量中,每个观测值连同其邻域(如空间权重)一起重新计算矩阵。如果空间模式在空间上更聚类,则将赋予它更高的 S 值。局部 S i (定义为观测值对相应全局 S 的相对贡献)使研究人员能够有效地避免对已有单变量SAM遭受的参考观察。全局 L 和局部 L i 的设计符合两个关联概念,该概念涉及同时比较两种空间模式:成对点点关联和单变量空间关联。诸如Pearson的相关系数之类的空间二元关联量度仅专用于第一类关联,而全局 L 捕获由观测值之间的拓扑关系所限制的数值协方差,以参数化二元空间依赖性并进行校准空间协同构图的程度。局部 L i 是一种局部空间相关性,它捕获每个位置符合或偏离相应全局 L 的程度,并允许探索双变量关系中的空间异质性。 (摘要由UMI缩短。)

著录项

  • 作者

    Lee, Sang-Il.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Geography.; Statistics.; Urban and Regional Planning.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 231 p.
  • 总页数 231
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然地理学;统计学;区域规划、城乡规划;
  • 关键词

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