In business surveys, data typically are skewed and the standard approach for small area estimation (SAE) based on linear mixed models lead to inefficient estimates. In this paper, we discuss SAE techniques for skewed data that are linear following a suitable transformation. In this context, implementation of the empirical best linear unbiased prediction (EBLUP) approach under transformation to a linear mixed model is complicated. However, this is not the case with the model-based direct (MBD) approach (Chambers and Chandra, 2006), which is based on weighted linear estimators. We extend the MBD approach to skewed data using sample weights derived via model calibration based on a log transform model with random area effects. Our results show ...
This chapter focuses on small area inference methods for a unit level income-type response that is s...
Small area estimation in sample surveys can be addressed using mixed models for binary data. Methods...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
In business surveys, data typically are skewed and the standard approach for small area estimation b...
Small area estimation based on linear mixed models can be inefficient when the underlying relationsh...
Binary data are often of interest in business surveys, particularly when the aim is to characterize ...
Binary data are often of interest in business surveys, particularly when the aim is to characterize ...
Small area estimation methods are generally based on models which have assumptions of normal errors,...
In business surveys, estimates of means and totals for subnational regions, industries and business ...
Small area (or small domain) estimation is still rarely applied in business statistics, because of c...
The positive skewness of study variables is a peculiarity a of business survey data. It is due to th...
AbstractPreviously, the nested error linear regression models using survey weights have been studied...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
Small area models typically depend on the validity of model assumptions. For example, a commonly use...
Not AvailableUnit level linear mixed models are often used in small area estimation (SAE), and the ...
This chapter focuses on small area inference methods for a unit level income-type response that is s...
Small area estimation in sample surveys can be addressed using mixed models for binary data. Methods...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
In business surveys, data typically are skewed and the standard approach for small area estimation b...
Small area estimation based on linear mixed models can be inefficient when the underlying relationsh...
Binary data are often of interest in business surveys, particularly when the aim is to characterize ...
Binary data are often of interest in business surveys, particularly when the aim is to characterize ...
Small area estimation methods are generally based on models which have assumptions of normal errors,...
In business surveys, estimates of means and totals for subnational regions, industries and business ...
Small area (or small domain) estimation is still rarely applied in business statistics, because of c...
The positive skewness of study variables is a peculiarity a of business survey data. It is due to th...
AbstractPreviously, the nested error linear regression models using survey weights have been studied...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...
Small area models typically depend on the validity of model assumptions. For example, a commonly use...
Not AvailableUnit level linear mixed models are often used in small area estimation (SAE), and the ...
This chapter focuses on small area inference methods for a unit level income-type response that is s...
Small area estimation in sample surveys can be addressed using mixed models for binary data. Methods...
Linear mixed models underpin many small area estimation (SAE) methods. In this paper we investigate ...