A geographical weighted empirical best linear unbiased predictor (GWEBLUP) for a small area average is proposed, and an estimator of its conditional mean squared error is developed. The popular empirical best linear unbiased predictor under the linear mixed model is obtained as a special case of the GWEBLUP. Empirical results using both model-based and design-based simulations, with the latter based on two real data sets, show that the GWEBLUP predictor can lead to efficiency gains when spatial nonstationarity is present in the data. A practical gain from using the GWEBLUP is in small area estimation for out of sample areas. In this case the efficient use of geographical information can potentially improve upon conventional synthetic estima...
A spatial regression model in a general mixed effects model framework has been proposed for the smal...
This work assumes that the small area quantities of interest follow a Fay-Herriot model with spatial...
Sample survey data can be used to derive a reliable estimate of a total mean for a large area. When ...
A geographical weighted empirical best linear unbiased predictor (GWEBLUP) for a small area average ...
Not AvailableA geographical weighted empirical best linear unbiased predictor (GWEBLUP) for a small ...
There is a growing need for current and reliable counts at small area level. The empirical predictor...
The effective use of spatial information in a regression-based approach to small area estimation is ...
We describe a methodology for small area estimation of counts that assumes an area-level version of ...
Geographically weighted small area methods have been studied in literature for small area estimation...
Small area estimates based on the widely-used area-level model proposed in Fay and Herriot (1979) as...
Small area estimates based on the widely used area-level model proposed in Fay and Herriot (1979) as...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
This work applies the Fay-Herriot model in which spatial information is introduced as auxiliary vari...
• This paper approaches the problem of small area estimation in the framework of spatially correlate...
A spatial regression model in a general mixed effects model framework has been proposed for the smal...
This work assumes that the small area quantities of interest follow a Fay-Herriot model with spatial...
Sample survey data can be used to derive a reliable estimate of a total mean for a large area. When ...
A geographical weighted empirical best linear unbiased predictor (GWEBLUP) for a small area average ...
Not AvailableA geographical weighted empirical best linear unbiased predictor (GWEBLUP) for a small ...
There is a growing need for current and reliable counts at small area level. The empirical predictor...
The effective use of spatial information in a regression-based approach to small area estimation is ...
We describe a methodology for small area estimation of counts that assumes an area-level version of ...
Geographically weighted small area methods have been studied in literature for small area estimation...
Small area estimates based on the widely-used area-level model proposed in Fay and Herriot (1979) as...
Small area estimates based on the widely used area-level model proposed in Fay and Herriot (1979) as...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
This work applies the Fay-Herriot model in which spatial information is introduced as auxiliary vari...
• This paper approaches the problem of small area estimation in the framework of spatially correlate...
A spatial regression model in a general mixed effects model framework has been proposed for the smal...
This work assumes that the small area quantities of interest follow a Fay-Herriot model with spatial...
Sample survey data can be used to derive a reliable estimate of a total mean for a large area. When ...