We describe a methodology for small area estimation of counts that assumes an area level version of a nonparametric generalized linear mixed model with a mean structure defined using spatial splines. The proposed method represents an alternative to other small area estimation methods based on area level spatial models that are designed for both spatially stationary and spatially non-stationary populations. We develop an estimator for the mean squared error of the proposed small area predictor as well as an approach for testing for the presence of spatial structure in the data and evaluate both the proposed small area predictor and its mean squared error estimator via simulations studies. Our empirical results show that when data are spatial...
A spatial regression model in a general mixed effects model framework has been proposed for the smal...
Additional information and borrowing strength from the related sites and other sources will improve ...
Nonparametric regression is widely used as a method of characterizing a non-linearrelationship betwe...
We describe a methodology for small area estimation of counts that assumes an area-level version of ...
Not AvailableWe describe a methodology for small area estimation of counts that assumes an arealevel...
There is a growing need for current and reliable counts at small area level. The empirical predictor...
The empirical predictor under an area level version of the generalized linear mixed model (GLMM) is ...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
Large-scale sample surveys are not designed to produce reliable estimates for small areas. Here, sma...
Linear mixed models underpin many small areas estimation (SAE) methods. In this paper with investiga...
The effective use of spatial information in a regression-based approach to small area estimation is ...
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 ...
Survey information is commonly collected to yield estimates of quantities for large geographic areas...
Geographically weighted small area methods have been studied in literature for small area estimation...
A spatial regression model in a general mixed effects model framework has been proposed for the smal...
Additional information and borrowing strength from the related sites and other sources will improve ...
Nonparametric regression is widely used as a method of characterizing a non-linearrelationship betwe...
We describe a methodology for small area estimation of counts that assumes an area-level version of ...
Not AvailableWe describe a methodology for small area estimation of counts that assumes an arealevel...
There is a growing need for current and reliable counts at small area level. The empirical predictor...
The empirical predictor under an area level version of the generalized linear mixed model (GLMM) is ...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
Large-scale sample surveys are not designed to produce reliable estimates for small areas. Here, sma...
Linear mixed models underpin many small areas estimation (SAE) methods. In this paper with investiga...
The effective use of spatial information in a regression-based approach to small area estimation is ...
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 ...
Survey information is commonly collected to yield estimates of quantities for large geographic areas...
Geographically weighted small area methods have been studied in literature for small area estimation...
A spatial regression model in a general mixed effects model framework has been proposed for the smal...
Additional information and borrowing strength from the related sites and other sources will improve ...
Nonparametric regression is widely used as a method of characterizing a non-linearrelationship betwe...