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Maximum Getis–Ord Statistic Adjusted for Spatially Autocorrelated Data

机译:针对空间自相关数据调整的最大Getis–Ord统计量

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摘要

Local statistics test the null hypothesis of no spatial association or clustering around the vicinity of a location. To carry out statistical tests, it is assumed that the observations are independent and that they exhibit no global spatial autocorrelation. In this article, approaches to account for global spatial autocorrelation are described and illustrated for the case of the Getis–Ord statistic with binary weights. Although the majority of current applications of local statistics assume that the spatial scale of the local spatial association (as specified via weights) is known, it is more often the case that it is unknown. The approaches described here cover the cases of testing local statistics for the cases of both known and unknown weights, and they are based upon methods that have been used with aspatial data, where the objective is to find changepoints in temporal data. After a review of the Getis–Ord statistic, the article provides a review of its extension to the case where the objective is to choose the best set of binary weights to estimate the spatial scale of the local association and assess statistical significance. Modified approaches that account for spatially autocorrelated data are then introduced and discussed. Finally, the method is illustrated using data on leukemia in central New York, and some concluding comments are made.
机译:本地统计数据检验了零位假设,即在某个位置附近没有空间关联或聚类。为了进行统计检验,假设观测值是独立的,并且它们不显示全局空间自相关。在本文中,描述和说明了具有二进制权重的Getis-Ord统计情况下解决全局空间自相关的方法。尽管当前大多数本地统计应用假定本地空间关联的空间比例(通过权重指定)是已知的,但更常见的情况是未知。此处介绍的方法涵盖了针对已知权重和未知权重的情况测试本地统计信息的情况,并且这些方法基于已与空间数据一起使用的方法,其目的是在时间数据中查找变化点。在对Getis-Ord统计信息进行回顾之后,本文对它的扩展进行了回顾,该案例的目的是选择最佳的二元权重集以估计本地关联的空间规模并评估统计意义。然后介绍和讨论解决空间自相关数据的改进方法。最后,使用纽约中部的白血病数据说明了该方法,并提出了一些结论性意见。

著录项

  • 来源
    《Geographical analysis》 |2015年第1期|1-14|共14页
  • 作者

    Peter A. Rogerson;

  • 作者单位

    Departments of Geography and Biostatistics University at Buffalo Buffalo NY USA;

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  • 原文格式 PDF
  • 正文语种 eng
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