Small area estimation (SAE) plays a crucial role in the social sciences due to the growing need for reliable and accurate estimates for small domains. In the study of well-being, for example, policy makers need detailed information about the geographical distribution of a range of social indicators. We investigate data dimensionality reduction using factor analysis models and implement SAE on the factor scores under the empirical best linear unbiased prediction approach. We contrast this approach with the standard approach of providing a dashboard of indicators or a weighted average of indicators at the local level. We demonstrate the approach in a simulation study and a real data application based on the European Union Statistics for Incom...
The Europe 2020 Strategy has formulated key policy objectives or so-called "headline targets" which ...
In the last decades policy decisions are often based on statistical measures. The more detailed this...
Sample survey data are broadly used to provide direct estimates of poverty for the whole population ...
© The Author(s) 2019. Small area estimation (SAE) plays a crucial role in the social sciences due to...
© 2019 The Authors. International Statistical Review © 2019 International Statistical Institute Fact...
In this chapter, we used EU-SILC data, Income Tax Office data and Population Census data to estimate...
Spatial microsimulation encompasses a range of alternative methodological approaches for the small a...
Spatial microsimulation encompasses a range of alternative methodological approaches for the small a...
Large-scale sample surveys are not designed to produce reliable estimates for small areas. Here, sma...
Poverty and living conditions are always at the forefront of analyses and discussions carried out by...
The aim of this paper is to highlight some key issues and challenges in the analysis of poverty at t...
Spatially disaggregated income indicators are typically estimated by using model-based methods that ...
The Europe 2020 Strategy has formulated key policy objectives or so-called "headline targets" which ...
The Europe 2020 Strategy has formulated key policy objectives or so-called "headline targets" which ...
In the last decades policy decisions are often based on statistical measures. The more detailed this...
Sample survey data are broadly used to provide direct estimates of poverty for the whole population ...
© The Author(s) 2019. Small area estimation (SAE) plays a crucial role in the social sciences due to...
© 2019 The Authors. International Statistical Review © 2019 International Statistical Institute Fact...
In this chapter, we used EU-SILC data, Income Tax Office data and Population Census data to estimate...
Spatial microsimulation encompasses a range of alternative methodological approaches for the small a...
Spatial microsimulation encompasses a range of alternative methodological approaches for the small a...
Large-scale sample surveys are not designed to produce reliable estimates for small areas. Here, sma...
Poverty and living conditions are always at the forefront of analyses and discussions carried out by...
The aim of this paper is to highlight some key issues and challenges in the analysis of poverty at t...
Spatially disaggregated income indicators are typically estimated by using model-based methods that ...
The Europe 2020 Strategy has formulated key policy objectives or so-called "headline targets" which ...
The Europe 2020 Strategy has formulated key policy objectives or so-called "headline targets" which ...
In the last decades policy decisions are often based on statistical measures. The more detailed this...
Sample survey data are broadly used to provide direct estimates of poverty for the whole population ...