Numerical solution of optimal allocation problems in stratified sampling under box constraints
Modern sampling designs in survey statistics, in general, are constructed in order to optimize the accuracy of estimators such as totals, means and proportions. In stratified random sampling a variance minimal solution was introduced by Neyman and Tschuprov. However, practical constraints may lead t...
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Veröffentlicht in: | Advances in statistical analysis : AStA : a journal of the German Statistical Society 2012-07, Vol.96 (3), p.435-450 |
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Sprache: | eng |
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Zusammenfassung: | Modern sampling designs in survey statistics, in general, are constructed in order to optimize the accuracy of estimators such as totals, means and proportions. In stratified random sampling a variance minimal solution was introduced by Neyman and Tschuprov. However, practical constraints may lead to limitations of the domain of sampling fractions which have to be considered within the optimization process. Special attention on the complexity of numerical solutions has to be paid in cases with many strata or when the optimal allocation has to be applied repeatedly, such as in iterative solutions of stratification problems. The present article gives an overview of recent numerical algorithms which allow adequate inclusion of box constraints in the numerical optimization process. These box constraints may play an important role in statistical modeling. Furthermore, a new approach through a fixed point iteration with a finite termination property is presented. |
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ISSN: | 1863-8171 1863-818X |
DOI: | 10.1007/s10182-011-0176-z |