When the probabilities of selecting the individuals for the sample depend on the outcome values, we say that the selection mechanism is informative. Under informative selection, individuals with certain outcome values appear more often in the sample and therefore the sample is not representative of the population. As a consequence, usual model-based inference based on the actual sample without appropriate weighting might be strongly biased. For estimation of general non-linear parameters in small areas, we propose a model-based pseudo empirical best (PEB) method that incorporates the sampling weights and reduces considerably the bias of the unweighted empirical best (EB) estimators under informative selection mechanisms. We analyze ...
This paper introduces small area estimators of poverty indexes, with special attention to the povert...
Model-based small-area estimation methods have received considerable importance over the last two de...
We have studied optimal sample allocation, associated with small area estimation, when the objective...
When the probabilities of selecting the individuals for the sample depend on the outcome values, we...
The aim of this thesis is the study of small area estimation methods under outcome-dependent samplin...
We propose to estimate non-linear small area population quantities by using Empirical Best (EB) esti...
In this article we show how to predict small area means and obtain valid MSE estimators and confiden...
This article proposes two approaches for small area estimation under informative sampling. The semi-...
We propose to estimate non-linear small area population quantities by using Empirical Best (EB) est...
This paper evaluates the performance of different small area estimation methods using model and desi...
This paper evaluates the performance of different small area estimation methods using model and desi...
In the dissertation special problems that may be encountered in finding optimal estimation strategy ...
Sample surveys are widely used to obtain information about totals, means and other parameters of fin...
This paper compares five small area estimators. We use Monte Carlo simulation in the context of both...
This paper introduces small area estimators of poverty indexes, with special attention to the povert...
Model-based small-area estimation methods have received considerable importance over the last two de...
We have studied optimal sample allocation, associated with small area estimation, when the objective...
When the probabilities of selecting the individuals for the sample depend on the outcome values, we...
The aim of this thesis is the study of small area estimation methods under outcome-dependent samplin...
We propose to estimate non-linear small area population quantities by using Empirical Best (EB) esti...
In this article we show how to predict small area means and obtain valid MSE estimators and confiden...
This article proposes two approaches for small area estimation under informative sampling. The semi-...
We propose to estimate non-linear small area population quantities by using Empirical Best (EB) est...
This paper evaluates the performance of different small area estimation methods using model and desi...
This paper evaluates the performance of different small area estimation methods using model and desi...
In the dissertation special problems that may be encountered in finding optimal estimation strategy ...
Sample surveys are widely used to obtain information about totals, means and other parameters of fin...
This paper compares five small area estimators. We use Monte Carlo simulation in the context of both...
This paper introduces small area estimators of poverty indexes, with special attention to the povert...
Model-based small-area estimation methods have received considerable importance over the last two de...
We have studied optimal sample allocation, associated with small area estimation, when the objective...