Skewed distributions with representative outliers pose a problem in many surveys. Various small area prediction approaches for skewed data based on transformation models have been proposed. However, in certain applications of those predictors, the fact that the survey data also contain a non-negligible number of zero-valued observations is sometimes dealt with rather crudely, for instance by arbitrarily adding a constant to each value (to allow zeroes to be considered as "positive observations, only smaller", instead of acknowledging their qualitatively different nature). On the other hand, while a lognormal-logistic model has been proposed (to incorporate skewed distributions as well as zeroes), that model does not include any hierarchical...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small Area Estimation is concerned with producing estimates of descriptive quantities of sub-populat...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Skewed distributions with representative outliers pose a problem in many surveys. Various small area...
This chapter focuses on small area inference methods for a unit level income-type response that is s...
In business surveys, data typically are skewed and the standard approach for small area estimation (...
Small area models typically depend on the validity of model assumptions. For example, a commonly use...
Agencies and policy makers are interested in constructing reliable estimates for areas with small sa...
Not AvailableArea-level models are often used for small-area estimation when auxiliary data are ava...
ABSTRACT. The article considers a new approach for small area estimation based on a joint modelling ...
This paper promotes the use of random forests as versatile tools for estimating spatially disaggrega...
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...
Several methods have been devised to mitigate the effects of outlier values on survey estimates. If ...
The standard small area estimator, the empirical best linear unbiased predictor (EBLUP), estimates s...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small Area Estimation is concerned with producing estimates of descriptive quantities of sub-populat...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Skewed distributions with representative outliers pose a problem in many surveys. Various small area...
This chapter focuses on small area inference methods for a unit level income-type response that is s...
In business surveys, data typically are skewed and the standard approach for small area estimation (...
Small area models typically depend on the validity of model assumptions. For example, a commonly use...
Agencies and policy makers are interested in constructing reliable estimates for areas with small sa...
Not AvailableArea-level models are often used for small-area estimation when auxiliary data are ava...
ABSTRACT. The article considers a new approach for small area estimation based on a joint modelling ...
This paper promotes the use of random forests as versatile tools for estimating spatially disaggrega...
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...
Several methods have been devised to mitigate the effects of outlier values on survey estimates. If ...
The standard small area estimator, the empirical best linear unbiased predictor (EBLUP), estimates s...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small Area Estimation is concerned with producing estimates of descriptive quantities of sub-populat...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...