The presence of outliers is a common feature in real data applications. It has been well established that outliers can severely affect the parameter estimates of statistical models, for example random effects models, which can in turn affect the small area estimates pro- duced using these models. Two outlier robust methodologies have been recently proposed in the small area literature. These are the M-quantile approach (Chambers and Tzavidis, 2006) and the robust random effects approach (Sinha and Rao, 2009). The M-quantile and robust random effects approaches are two distinct outlier robust small area methods and as Sinha and Rao (2009) point out, a comparison between these two methodologies is required. The present paper sets to fulfill t...
Small area estimation with M-quantile models was proposed by Chambers and Tzavidis (2006). The key t...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small area estimation techniques typically rely on regression models that use both covariates and ra...
The presence of outliers is a common feature in real data applications. It has been well established...
When using small area estimation models, the presence of outlying observations in the response and/o...
Over the last decade there has been growing demand for estimates of population characteristics at sm...
Over the last decade there has been growing demand for estimates ofpopulation characteristics at sma...
Several methods have been devised to mitigate the effects of outlier values on survey estimates. If ...
Small area estimation techniques typically rely on regression models that use both covariates and ra...
Small area estimation techniques are employed when sample data are insufficient for acceptably preci...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
Small area inference based on mixed models, i.e. models that contain both fixed and random effects, ...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...
Small area estimation with M-quantile models was proposed by Chambers and Tzavidis (2006). The key t...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small area estimation techniques typically rely on regression models that use both covariates and ra...
The presence of outliers is a common feature in real data applications. It has been well established...
When using small area estimation models, the presence of outlying observations in the response and/o...
Over the last decade there has been growing demand for estimates of population characteristics at sm...
Over the last decade there has been growing demand for estimates ofpopulation characteristics at sma...
Several methods have been devised to mitigate the effects of outlier values on survey estimates. If ...
Small area estimation techniques typically rely on regression models that use both covariates and ra...
Small area estimation techniques are employed when sample data are insufficient for acceptably preci...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
Small area inference based on mixed models, i.e. models that contain both fixed and random effects, ...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...
Small area estimation with M-quantile models was proposed by Chambers and Tzavidis (2006). The key t...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small area estimation techniques typically rely on regression models that use both covariates and ra...