An Approximation to the Optimal Subsample Allocation for Small Areas
An Approximation to the Optimal Subsample Allocation for Small Areas
Author(s): W. B. Molefe, D. K. Shangodoyin, R. G. ClarkSubject(s): Economy
Published by: Główny Urząd Statystyczny
Keywords: composite estimation;mean squared error;sample design;small area estimation;sample size allocation;Taylor approximation
Summary/Abstract: This paper develops allocation methods for stratified sample surveys in which small area estimation is a priority. We assume stratified sampling with small areas as the strata. Similar to Longford (2006), we seek efficient allocation that minimizes a linear combination of the mean squared errors of composite small area estimators and of an estimator of the overall mean. Unlike Longford, we define mean-squared error in a model-assisted framework, allowing a more natural interpretation of results using an intra-class correlation parameter. This allocation has an analytical form for a special case, and has the unappealing property that some strata may be allocated no sample. We derive a Taylor approximation to the stratum sample sizes for small area estimation using composite estimation giving priority to both small area and national estimation.
Journal: Statistics in Transition. New Series
- Issue Year: 16/2015
- Issue No: 2
- Page Range: 163-182
- Page Count: 20
- Language: English