This article considers a robust hierarchical Bayesian approach to deal with random effects of small area means when some of these effects assume extreme values, resulting in outliers. In the presence of outliers, the standard Fay-Herriot model, used for modeling area-level data, under normality assumptions of random effects may overestimate the random effects variance, thus providing less than ideal shrinkage towards the synthetic regression predictions and inhibiting the borrowing of information. Even a small number of substantive outliers of random effects results in a large estimate of the random effects variance in the Fay-Herriot model, thereby achieving little shrinkage to the synthetic part of the model or little reduction in the pos...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
We propose a Bayesian test of normality of univariate or multivariate data against alternative nonpa...
We model a regression density nonparametrically so that at each value of the covariates the density ...
This article considers a robust hierarchical Bayesian approach to deal with random effects of small ...
Empirical and Hierarchical Bayes methods are often used to improve the precision of design-based est...
Hierarchical model such as Fay-Herriot (FH) model is often used to develop small area estimates. It ...
Hierarchical models are popular in many applied statistics fields including Small Area Estimation. A...
Availability of survey data allows users to obtain estimates for a whole variety of subpopulations, ...
AbstractA robust hierarchical Bayes method is developed to smooth small area means when a number of ...
In survey sampling, interest often lies in unplanned domains (or small areas), whose sample sizes ma...
Hierarchical model such as Fay–Herriot (FH) model is often used in small area estimation. The method...
Hierarchical models are popular in many applied statistics fields including Small Area Estimation. O...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
In this thesis we develop a two component mixture model to perform a Bayesian regression. We impleme...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
We propose a Bayesian test of normality of univariate or multivariate data against alternative nonpa...
We model a regression density nonparametrically so that at each value of the covariates the density ...
This article considers a robust hierarchical Bayesian approach to deal with random effects of small ...
Empirical and Hierarchical Bayes methods are often used to improve the precision of design-based est...
Hierarchical model such as Fay-Herriot (FH) model is often used to develop small area estimates. It ...
Hierarchical models are popular in many applied statistics fields including Small Area Estimation. A...
Availability of survey data allows users to obtain estimates for a whole variety of subpopulations, ...
AbstractA robust hierarchical Bayes method is developed to smooth small area means when a number of ...
In survey sampling, interest often lies in unplanned domains (or small areas), whose sample sizes ma...
Hierarchical model such as Fay–Herriot (FH) model is often used in small area estimation. The method...
Hierarchical models are popular in many applied statistics fields including Small Area Estimation. O...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
In random effect models, error variance (stage 1 variance) and scalar random effect variance compone...
In this thesis we develop a two component mixture model to perform a Bayesian regression. We impleme...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
We propose a Bayesian test of normality of univariate or multivariate data against alternative nonpa...
We model a regression density nonparametrically so that at each value of the covariates the density ...