Reducing fluctuations in the sample variogram
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Abstract
In the analysis of regionalized data, irregular sampling patterns are often responsible for large deviations (fluctuations) between the theoretical and sample semi-variograms. This article proposes a new semi-variogram estimator that is unbiased irrespective of the actual multivariate distribution of the data (provided an assumption of stationarity) and has the minimal variance under a given multivariate distribution model. Such an estimator considerably reduces fluctuations in the sample semi-variogram when the data are strongly correlated and clustered in space, and proves to be robust to a misspecification of the multivariate distribution model. The traditional and proposed semi-variogram estimators are compared through an application to a pollution dataset.
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Publicación ISI
Identifier
URI: https://repositorio.uchile.cl/handle/2250/124734
Quote Item
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT Vol. 21 MAY 2007 4 391-403
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