In this paper, we discuss the derivation of the first and second moments for the proposed small area estimators under a multivariate linear model for repeated measures data. The aim is to use these moments to estimate the mean-squared errors (MSE) for the predicted small area means as a measure of precision. At the first stage, we derive the MSE when the covariance matrices are known. At the second stage, a method based on parametric bootstrap is proposed for bias correction and for prediction error that reflects the uncertainty when the unknown covariance is replaced by its suitable estimator
In this paper, the issue of analysis of multivariate repeated measures data that follow a monotonic ...
stage est imat ion. SUMMARY A model involving random effects and autocorre-lated errors is proposed ...
AbstractMultivariate Fay–Herriot models for estimating small area indicators are introduced. Among t...
In this paper, we discuss the derivation of the first and second moments for the proposed small area...
In this paper, we discuss the derivation of the first and second moments for the proposed small area...
In this article, Small Area Estimation under a Multivariate Linear model for repeated measures data ...
In this article, we propose and compare some old and new parametric andnonparametric bootstrap metho...
In this paper, we consider small area estimation under a multivariate linear regression model for re...
This work deals with estimating the vector of means of characteristics of small areas. In this conte...
This work deals with estimating the vector of means of characteristics of small areas. In this conte...
Agencies and policy makers are interested in constructing reliable estimates for areas with small sa...
ABSTRACT. The article considers a new approach for small area estimation based on a joint modelling ...
We consider longitudinal data and the problem of prediction of subpopulation (domain) characteristic...
The particularly wide range of applications of small area prediction, e.g. in policy making decision...
Small area estimation has become a very active area of research in statistics. Many models studied i...
In this paper, the issue of analysis of multivariate repeated measures data that follow a monotonic ...
stage est imat ion. SUMMARY A model involving random effects and autocorre-lated errors is proposed ...
AbstractMultivariate Fay–Herriot models for estimating small area indicators are introduced. Among t...
In this paper, we discuss the derivation of the first and second moments for the proposed small area...
In this paper, we discuss the derivation of the first and second moments for the proposed small area...
In this article, Small Area Estimation under a Multivariate Linear model for repeated measures data ...
In this article, we propose and compare some old and new parametric andnonparametric bootstrap metho...
In this paper, we consider small area estimation under a multivariate linear regression model for re...
This work deals with estimating the vector of means of characteristics of small areas. In this conte...
This work deals with estimating the vector of means of characteristics of small areas. In this conte...
Agencies and policy makers are interested in constructing reliable estimates for areas with small sa...
ABSTRACT. The article considers a new approach for small area estimation based on a joint modelling ...
We consider longitudinal data and the problem of prediction of subpopulation (domain) characteristic...
The particularly wide range of applications of small area prediction, e.g. in policy making decision...
Small area estimation has become a very active area of research in statistics. Many models studied i...
In this paper, the issue of analysis of multivariate repeated measures data that follow a monotonic ...
stage est imat ion. SUMMARY A model involving random effects and autocorre-lated errors is proposed ...
AbstractMultivariate Fay–Herriot models for estimating small area indicators are introduced. Among t...