Title of article :
A BLUP Synthetic Versus an EBLUP Estimator: An Empirical Study of a Small Area Estimation Problem
Author/Authors :
A. F. Militino، نويسنده , , M. D. Ugarte & T. Goicoa، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Model-based estimators are becoming very popular in statistical offices because
Governments require accurate estimates for small domains that were not planned when the study
was designed, as their inclusion would have produced an increase in the cost of the study. The sample
sizes in these domains are very small or even zero; consequently, traditional direct design-based
estimators lead to unacceptably large standard errors. In this regard, model-based estimators that
‘borrow information’ from related areas by using auxiliary information are appropriate. This paper
reviews, under the model-based approach, a BLUP synthetic and an EBLUP estimator. The goal is
to obtain estimators of domain totals when there are several domains with very small sample sizes
or without sampled units.We also provide detailed expressions of the mean squared error at different
levels of aggregation. The results are illustrated with real data from the Basque Country Business
Survey
Keywords :
Mean squared error , Finite population , Prediction theory , businesssurvey , mixed models
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS