Spatially disaggregated income indicators are typically estimated by using model-based methods that assume access to auxiliary information from population micro-data. In many countries like Germany and the UK population micro-data are not publicly available. In this work we propose small area methodology when only aggregate population-level auxiliary information is available. We use data-driven transformations of the response to satisfy the parametric assumptions of the used models. In the absence of population micro-data, appropriate bias-corrections for small area prediction are needed. Under the approach we propose in this paper, aggregate statistics (means and covariances) and kernel density estimation are used to resolve the issue of n...
Rising poverty and inequality increases the risk of social instability in countries all around the ...
Measuresofeconomicwell-beingareoftenneededforgeographicallysmallareas,as economic indicators may be ...
This paper evaluates the performance of different small area estimation methods using model and desi...
In the last decades policy decisions are often based on statistical measures. The more detailed this...
The availability of reliable estimates of income distribution parameters at a sub-national level is ...
Small area estimation (SAE) plays a crucial role in the social sciences due to the growing need for ...
Small area estimation is a research area in official and survey statistics of great practical releva...
Small area estimation is a research area in official and survey statistics of great practical releva...
Poverty and living conditions are always at the forefront of analyses and discussions carried out by...
Large-scale sample surveys are not designed to produce reliable estimates for small areas. Here, sma...
The R package emdi offers a methodological and computational framework for the estimation of region...
Average incomes and poverty proportions are additive parameters obtained as averages of a given func...
In this chapter, we used EU-SILC data, Income Tax Office data and Population Census data to estimate...
© 2018-IOS Press and the authors. All rights reserved. The use of model-based small area estimation ...
This report constitutes Deliverables 9.8 for Work Package 9 of the InGRID-2 project. Small area est...
Rising poverty and inequality increases the risk of social instability in countries all around the ...
Measuresofeconomicwell-beingareoftenneededforgeographicallysmallareas,as economic indicators may be ...
This paper evaluates the performance of different small area estimation methods using model and desi...
In the last decades policy decisions are often based on statistical measures. The more detailed this...
The availability of reliable estimates of income distribution parameters at a sub-national level is ...
Small area estimation (SAE) plays a crucial role in the social sciences due to the growing need for ...
Small area estimation is a research area in official and survey statistics of great practical releva...
Small area estimation is a research area in official and survey statistics of great practical releva...
Poverty and living conditions are always at the forefront of analyses and discussions carried out by...
Large-scale sample surveys are not designed to produce reliable estimates for small areas. Here, sma...
The R package emdi offers a methodological and computational framework for the estimation of region...
Average incomes and poverty proportions are additive parameters obtained as averages of a given func...
In this chapter, we used EU-SILC data, Income Tax Office data and Population Census data to estimate...
© 2018-IOS Press and the authors. All rights reserved. The use of model-based small area estimation ...
This report constitutes Deliverables 9.8 for Work Package 9 of the InGRID-2 project. Small area est...
Rising poverty and inequality increases the risk of social instability in countries all around the ...
Measuresofeconomicwell-beingareoftenneededforgeographicallysmallareas,as economic indicators may be ...
This paper evaluates the performance of different small area estimation methods using model and desi...