Recently proposed outlier robust small area estimators can be substantially biased when outliers are drawn from a distribution that has a different mean from that of the rest of the survey data. This naturally leads one to consider an outlier robust bias correction for these estimators. In this paper we develop this idea, proposing two different analytical mean squared error estimators for the ensuing bias corrected outlier robust estimators. Simulations based on realistic outlier contaminated data show that the proposed bias correction often leads to more efficient estimators. Furthermore, the proposed mean squared error estimation methods appear to perform well with a variety of outlier robust small area estimators
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small area estimation using linear area level models typically assumes normality of the area level r...
Recently proposed outlier robust small area estimators can be substantially biased when outliers are...
Several methods have been devised to mitigate the effects of outlier values on survey estimates. If ...
Small area inference based on mixed models, i.e. models that contain both fixed and random effects, ...
The presence of outliers is a common feature in real data applications. It has been well established...
Modern systems of official statistics require the estimation and publication of business statistics ...
When using small area estimation models, the presence of outlying observations in the response and/o...
Small area estimation with M-quantile models was proposed by Chambers and Tzavidis (2006). The key t...
When fitting models to data containing multiple structures, such as when fitting surface patches to ...
Modern systems of official statistics require the estimation and publication of business statistics ...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small area estimation using linear area level models typically assumes normality of the area level r...
Recently proposed outlier robust small area estimators can be substantially biased when outliers are...
Several methods have been devised to mitigate the effects of outlier values on survey estimates. If ...
Small area inference based on mixed models, i.e. models that contain both fixed and random effects, ...
The presence of outliers is a common feature in real data applications. It has been well established...
Modern systems of official statistics require the estimation and publication of business statistics ...
When using small area estimation models, the presence of outlying observations in the response and/o...
Small area estimation with M-quantile models was proposed by Chambers and Tzavidis (2006). The key t...
When fitting models to data containing multiple structures, such as when fitting surface patches to ...
Modern systems of official statistics require the estimation and publication of business statistics ...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small area estimation using linear area level models typically assumes normality of the area level r...