Empirical Bayes approaches have often been applied to the problem of estimating small-area parameters. As a compromise between synthetic and direct survey estimators, an estimator based on an empirical Bayes procedure is not subject to the large bias that is sometimes associated with a synthetic estimator, nor is it as variable as a direct survey estimator. Although the point estimates perform very well, naïve empirical Bayes confidence intervals tend to be too short to attain the desired coverage probability, since they fail to incorporate the uncertainty which results from having to estimate the prior distribution. Several alternative methodologies for interval estimation which correct for the deficiencies associated with the naïve approa...
In the small area estimation, the empirical best linear unbiased predictor (EBLUP) or the empirical ...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
Model-based small-area estimation methods have received considerable importance over the last two de...
The importance of small area estimation as a facet of survey sampling cannot be over-emphasized. Of ...
Due to the nature of survey design, the estimation of parameters associated with small areas is extr...
SUMMARY. Direct survey estimators for small areas are often unstable due to the small (or nonexisten...
We introduce a new adjusted residual maximum likelihood method in the context of producing an empiri...
Empirical Bayes techniques are applied to the problem of "small area " estimation of propo...
Because it is difficult and complex to determine the probability distribution of small samples,it is...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
This dissertation concerns two problems in survey sampling: (a) small-area estimation and (b) estima...
The paper develops empirical Bayes (EB) confidence intervals for population means with distributions...
SUMMARY. Much of the recent research on small area estimation considers estimation of parameters of ...
We develop a method for bias correction, which models the error of the target estimator as a functio...
The parametric empirical Bayes, introduced by [12], [13], [14], and [34], is gaining more and more a...
In the small area estimation, the empirical best linear unbiased predictor (EBLUP) or the empirical ...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
Model-based small-area estimation methods have received considerable importance over the last two de...
The importance of small area estimation as a facet of survey sampling cannot be over-emphasized. Of ...
Due to the nature of survey design, the estimation of parameters associated with small areas is extr...
SUMMARY. Direct survey estimators for small areas are often unstable due to the small (or nonexisten...
We introduce a new adjusted residual maximum likelihood method in the context of producing an empiri...
Empirical Bayes techniques are applied to the problem of "small area " estimation of propo...
Because it is difficult and complex to determine the probability distribution of small samples,it is...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
This dissertation concerns two problems in survey sampling: (a) small-area estimation and (b) estima...
The paper develops empirical Bayes (EB) confidence intervals for population means with distributions...
SUMMARY. Much of the recent research on small area estimation considers estimation of parameters of ...
We develop a method for bias correction, which models the error of the target estimator as a functio...
The parametric empirical Bayes, introduced by [12], [13], [14], and [34], is gaining more and more a...
In the small area estimation, the empirical best linear unbiased predictor (EBLUP) or the empirical ...
Bayesian estimators of small area parameters may be very effective in improving the precision of “di...
Model-based small-area estimation methods have received considerable importance over the last two de...