AbstractA robust hierarchical Bayes method is developed to smooth small area means when a number of covariates are available. The method is particularly suited when one or more outliers are present in the data. It is well known that the regular Bayes estimators of small. area means, under normal prior distribution, perform poorly in presence of even one extreme observation. In this case the Bayes estimators collapse to the direct survey estimators. This paper introduces a general theory for robust hierarchical Bayes estimation procedure using a fairly rich class of scale mixtures of normal prior distributions. To retain maximum benefit from combining information from related sources, we suggest to use Cauchy prior distribution for the outly...
Linear mixed effects models such as the Fay-Herriot model (1979) and non-linear mixed effects models...
SUMMARY. The importance of small area estimation in survey sampling is increasing, due to the growin...
In Chapter 2, the robustness of Bayes analysis with reference to conjugate prior classes is discusse...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
In this paper, we study hierarchical Bayes (HB) estimators based on different priors for small area ...
In this paper we study a very basic Small Area model, the Battese-Harter-Fuller, applied to a log-tr...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
Bayesian approach in Small Area Estimation (SAE), namely Empirical Bayes (EB) and Hierarchical Bayes...
Model-based small-area estimation methods have received considerable importance over the last two de...
To studied Bayesian aspect of small area estimation using Unit level model. In this paper we propose...
SUMMARY. Direct survey estimators for small areas are often unstable due to the small (or nonexisten...
Empirical and Hierarchical Bayes methods are often used to improve the precision of design-based est...
In this paper, we address the issue of estimation of the hierarchical Bayesian models, especially fo...
This dissertation makes two important contributions to the development of Bayesian hierarchical mode...
This article considers a robust hierarchical Bayesian approach to deal with random effects of small ...
Linear mixed effects models such as the Fay-Herriot model (1979) and non-linear mixed effects models...
SUMMARY. The importance of small area estimation in survey sampling is increasing, due to the growin...
In Chapter 2, the robustness of Bayes analysis with reference to conjugate prior classes is discusse...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
In this paper, we study hierarchical Bayes (HB) estimators based on different priors for small area ...
In this paper we study a very basic Small Area model, the Battese-Harter-Fuller, applied to a log-tr...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
Bayesian approach in Small Area Estimation (SAE), namely Empirical Bayes (EB) and Hierarchical Bayes...
Model-based small-area estimation methods have received considerable importance over the last two de...
To studied Bayesian aspect of small area estimation using Unit level model. In this paper we propose...
SUMMARY. Direct survey estimators for small areas are often unstable due to the small (or nonexisten...
Empirical and Hierarchical Bayes methods are often used to improve the precision of design-based est...
In this paper, we address the issue of estimation of the hierarchical Bayesian models, especially fo...
This dissertation makes two important contributions to the development of Bayesian hierarchical mode...
This article considers a robust hierarchical Bayesian approach to deal with random effects of small ...
Linear mixed effects models such as the Fay-Herriot model (1979) and non-linear mixed effects models...
SUMMARY. The importance of small area estimation in survey sampling is increasing, due to the growin...
In Chapter 2, the robustness of Bayes analysis with reference to conjugate prior classes is discusse...