We consider small area estimation under a nested error linear regression model with measurement errors in the covariates. We propose an objective Bayesian analysis of the model to estimate the finite population means of the small areas. In particular, we derive Jeffreys' prior for model parameters. We also show that Jeffreys' prior, which is improper, leads, under very general conditions, to a proper posterior distribution. We have also performed a simulation study where we have compared the Bayes estimates of the finite population means under the Jeffreys' prior with other Bayesian estimates obtained via the use of the standard flat prior and with non-Bayesian estimates, i.e., the corresponding empirical Bayes estimates and the direct esti...
The large need for small area data and limited auxiliary information drive the development of small ...
Bayesian approach in Small Area Estimation (SAE), namely Empirical Bayes (EB) and Hierarchical Bayes...
This work presents a Bayesian semiparametric approach for dealing with regression models where the c...
We consider small area estimation under a nested error linear regression model with measurement erro...
Area level models, such as the Fay–Herriot model, aim to improve direct survey estimates for small a...
AbstractPreviously, the nested error linear regression models using survey weights have been studied...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
Small area estimation has long been a popular and important research topic in survey statistics. For...
Model based small area estimation relies on mixed effects regression models that link the small area...
SUMMARY. The importance of small area estimation in survey sampling is increasing, due to the growin...
In this paper we focus on small area models with measurement error in covariates. Based on data from...
For small area estimation, model based methods are preferred to the tradi-tional design based method...
University of Minnesota Ph.D. dissertation. July 2012. Major: Statistics. Advisor: Professor Glen Me...
To studied Bayesian aspect of small area estimation using Unit level model. In this paper we propose...
Model-based small area estimation relies on mixed effects regression models that link the small area...
The large need for small area data and limited auxiliary information drive the development of small ...
Bayesian approach in Small Area Estimation (SAE), namely Empirical Bayes (EB) and Hierarchical Bayes...
This work presents a Bayesian semiparametric approach for dealing with regression models where the c...
We consider small area estimation under a nested error linear regression model with measurement erro...
Area level models, such as the Fay–Herriot model, aim to improve direct survey estimates for small a...
AbstractPreviously, the nested error linear regression models using survey weights have been studied...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
Small area estimation has long been a popular and important research topic in survey statistics. For...
Model based small area estimation relies on mixed effects regression models that link the small area...
SUMMARY. The importance of small area estimation in survey sampling is increasing, due to the growin...
In this paper we focus on small area models with measurement error in covariates. Based on data from...
For small area estimation, model based methods are preferred to the tradi-tional design based method...
University of Minnesota Ph.D. dissertation. July 2012. Major: Statistics. Advisor: Professor Glen Me...
To studied Bayesian aspect of small area estimation using Unit level model. In this paper we propose...
Model-based small area estimation relies on mixed effects regression models that link the small area...
The large need for small area data and limited auxiliary information drive the development of small ...
Bayesian approach in Small Area Estimation (SAE), namely Empirical Bayes (EB) and Hierarchical Bayes...
This work presents a Bayesian semiparametric approach for dealing with regression models where the c...