Robust Resampling Confidence Intervals for Empirical Variograms

被引:0
|
作者
Robert Graham Clark
Samuel Allingham
机构
[1] University of Wollongong,Centre for Statistical and Survey Methodology
[2] University of Wollongong,Centre for Health Services Development
来源
Mathematical Geosciences | 2011年 / 43卷
关键词
Spatial analysis; Variograms; Bootstrap; Jackknife; Block bootstrap; Block jackknife;
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中图分类号
学科分类号
摘要
The variogram function is an important measure of the spatial dependencies of a geostatistical or other spatial dataset. It plays a central role in kriging, designing spatial studies, and in understanding the spatial properties of geological and environmental phenomena. It is therefore important to understand the variability attached to estimates of the variogram. Existing methods for constructing confidence intervals around the empirical variogram either rely on strong assumptions, such as normality or known variogram function, or are based on resampling blocks and subject to edge effect biases. This paper proposes two new procedures for addressing these concerns: a quasi-block-bootstrap and a quasi-block-jackknife. The new methods are based on transforming the data to decorrelate it based on a fitted variogram model, resampling blocks from the decorrelated data, and then recorrelating. The coverage properties of the new confidence intervals are compared by simulation to a number of existing resampling-based intervals. The proposed quasi-block-jackknife confidence interval is found to have the best properties of all of the methods considered across a range of scenarios, including normally and lognormally distributed data and misspecification of the variogram function used to decorrelate the data.
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页码:243 / 259
页数:16
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