A range of data is of geographic interest but is not available at a small area level from existing data sources. Small area estimation (SAE) offers techniques to estimate population parameters of target variables to detailed scales based on relationships between those target variables and relevant auxiliary variables. The resulting indirect small area estimate can deliver a lower mean squared error compared to its direct survey estimate, given that variance can be reduced markedly even if bias increases. Spatial microsimulation SAE approaches are widely utilized but only beginning to engage with the potential of composite estimators that use a weighted combination of indirect and direct estimators to reduce further the mean squared error of...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
Linear mixed models underpin many small areas estimation (SAE) methods. In this paper with investiga...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
© 2019 The Ohio State University A range of data is of geographic interest but is not available at a...
A range of data is of geographic interest but is not available at a small area level from existing d...
This article deals with the use of sample size dependent composite estimators in spatial microsimula...
This paper investigates the comparative performance of five small area estimators. We use Monte Carl...
In this article we propose small area estimators for both the small and large area parameters. When ...
Spatial microsimulation encompasses a range of alternative methodological approaches for the small a...
The purpose of this paper is to provide a critical review of the main advances in small area estimat...
This paper compares five small area estimators. We use Monte Carlo simulation in the context of both...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
∗Detailed and very helpful comments by Nicholas T. Longford on a previous version of this paper are ...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
Linear mixed models underpin many small areas estimation (SAE) methods. In this paper with investiga...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
© 2019 The Ohio State University A range of data is of geographic interest but is not available at a...
A range of data is of geographic interest but is not available at a small area level from existing d...
This article deals with the use of sample size dependent composite estimators in spatial microsimula...
This paper investigates the comparative performance of five small area estimators. We use Monte Carl...
In this article we propose small area estimators for both the small and large area parameters. When ...
Spatial microsimulation encompasses a range of alternative methodological approaches for the small a...
The purpose of this paper is to provide a critical review of the main advances in small area estimat...
This paper compares five small area estimators. We use Monte Carlo simulation in the context of both...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...
∗Detailed and very helpful comments by Nicholas T. Longford on a previous version of this paper are ...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
AbstractA wide range of user groups from policy makers to media commentators demand ever more spatia...
Linear mixed models underpin many small areas estimation (SAE) methods. In this paper with investiga...
A wide range of user groups from policy makers to media commentators demand ever more spatially deta...