Nowadays the information extracted from data should be the key to good policy, therefore, analysts must make the best possible use of all available information. However, data availability often is limited by cost or for other reasons. Consequently, there is the need to use data from different sources. Our goals are to develop hierarchical models and to demonstrate their ability to improve inferences about quantities for which there are meager data. When a hierarchical model can be found to represent the situation properly, analysis of that model often can be used to extract most or all of the relevant information and so provide the best possible estimates. The application considered will include small area estimation in the context of the E...
This survey paper reviews the recent Bayesian literature on poverty measurement. After introducing B...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
Small area estimation (SAE) tackles the problem of providing reliable estimates for small areas, i.e...
Nowadays the information extracted from data should be the key to good policy, therefore, analysts m...
Nowadays the information extracted from data should be the key to good policy, therefore, analysts m...
A model-based small area method for calculating estimates of poverty rates based on different thresh...
Poverty mapping can be defined as the disaggregated spatial representation (estimation) of poverty, ...
National statistical offices are often required to provide statistical information at several admini...
Area level models, such as the Fay–Herriot model, aim to improve direct survey estimates for small a...
The aim of this work is to propose a methodology for estimating domains’ poverty rates. SAE model of...
Poverty incidence is defined as the inability of a household to meet the poverty threshold. In order...
The wealth of timely and detailed information provided by sample surveys (see Survey Sampling; Finit...
Model-based small-area estimation methods have received considerable importance over the last two de...
This dissertation attempts to gather the main research topics I engaged during the past four years, ...
SUMMARY. Direct survey estimators for small areas are often unstable due to the small (or nonexisten...
This survey paper reviews the recent Bayesian literature on poverty measurement. After introducing B...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
Small area estimation (SAE) tackles the problem of providing reliable estimates for small areas, i.e...
Nowadays the information extracted from data should be the key to good policy, therefore, analysts m...
Nowadays the information extracted from data should be the key to good policy, therefore, analysts m...
A model-based small area method for calculating estimates of poverty rates based on different thresh...
Poverty mapping can be defined as the disaggregated spatial representation (estimation) of poverty, ...
National statistical offices are often required to provide statistical information at several admini...
Area level models, such as the Fay–Herriot model, aim to improve direct survey estimates for small a...
The aim of this work is to propose a methodology for estimating domains’ poverty rates. SAE model of...
Poverty incidence is defined as the inability of a household to meet the poverty threshold. In order...
The wealth of timely and detailed information provided by sample surveys (see Survey Sampling; Finit...
Model-based small-area estimation methods have received considerable importance over the last two de...
This dissertation attempts to gather the main research topics I engaged during the past four years, ...
SUMMARY. Direct survey estimators for small areas are often unstable due to the small (or nonexisten...
This survey paper reviews the recent Bayesian literature on poverty measurement. After introducing B...
The sampling designs of the national surveys are usually determined so as to produce reliable estima...
Small area estimation (SAE) tackles the problem of providing reliable estimates for small areas, i.e...