A wide range of user groups from policy makers to media commentators demand ever more spatially detailed information yet the desired data are often not available at fine spatial scales. Increasingly, small area estimation (SAE) techniques are called upon to fill in these informational gaps by downscaling survey outcome variables of interest based on the relationships seen with key covariate data. In the process SAE techniques both rely extensively on small area Census data to enable their estimation and offer potential future substitute data sources in the event of Census data becoming unavailable. Whilst statistical approaches to SAE routinely incorporate intervals of uncertainty around central point estimates in order to indicate their li...
This report constitutes Deliverables 9.8 for Work Package 9 of the InGRID-2 project. Small area est...
© 2019 The Ohio State University A range of data is of geographic interest but is not available at a...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
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...
This article deals with the use of sample size dependent composite estimators in spatial microsimula...
This paper extends a spatial microsimulation model to test how the model behaves after adding differ...
A range of data is of geographic interest but is not available at a small area level from existing d...
The purpose of this paper is to provide a critical review of the main advances in small area estimat...
Small area estimation is a research area in official and survey statistics of great practical releva...
This paper examines the secondary data requirements for multilevel small area synthetic estimation (...
This report constitutes Deliverables 9.8 for Work Package 9 of the InGRID-2 project. Small area est...
© 2019 The Ohio State University A range of data is of geographic interest but is not available at a...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
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...
This article deals with the use of sample size dependent composite estimators in spatial microsimula...
This paper extends a spatial microsimulation model to test how the model behaves after adding differ...
A range of data is of geographic interest but is not available at a small area level from existing d...
The purpose of this paper is to provide a critical review of the main advances in small area estimat...
Small area estimation is a research area in official and survey statistics of great practical releva...
This paper examines the secondary data requirements for multilevel small area synthetic estimation (...
This report constitutes Deliverables 9.8 for Work Package 9 of the InGRID-2 project. Small area est...
© 2019 The Ohio State University A range of data is of geographic interest but is not available at a...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...