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Monte Carlo integration strategies for design-based regression estimators of the spatial mean

✍ Scribed by L. Barabesi; M. Marcheselli


Publisher
John Wiley and Sons
Year
2005
Tongue
English
Weight
191 KB
Volume
16
Category
Article
ISSN
1180-4009

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✦ Synopsis


Abstract

When a continuous population is sampled, the spatial mean is often the target parameter if the design‐based approach is assumed. In this case, auxiliary information may be suitably used to increase the accuracy of the spatial mean estimators. To this end, regression models are usually considered at the estimation stage in order to implement regression estimators. Since the spatial mean may be obviously represented as a bivariate integral, the strategies for placing the sampling locations are actually Monte Carlo integration methods. Hence, the regression‐based estimation is equivalent to the control‐variate integration method. In this setting, we suggest more refined Monte Carlo integration strategies which may drastically increase the regression estimator accuracy. Copyright © 2005 John Wiley & Sons, Ltd.


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## Abstract This article develops a practical approach to undertaking systematic sampling for the estimation of the spatial mean of an attribute in a selected area. A design‐based approach is used to estimate population parameters, but it is combined with elements of a model‐based approach in order