A Hierarchical Bayes Unit-Level Small Area Estimation Model for Normal Mixture Populations

10/28/2019
by   Shuchi Goyal, et al.
0

National statistical agencies are regularly required to produce estimates about various subpopulations, formed by demographic and/or geographic classifications, based on a limited number of samples. Traditional direct estimates computed using only sampled data from individual subpopulations are usually unreliable due to small sample sizes. Subpopulations with small samples are termed small areas or small domains. To improve on the less reliable direct estimates, model-based estimates, which borrow information from suitable auxiliary variables, have been extensively proposed in the literature. However, standard model-based estimates rely on the normality assumptions of the error terms. In this research we propose a hierarchical Bayesian (HB) method for the unit-level nested error regression model based on a normal mixture for the unit-level error distribution. To implement our proposal we use a uniform prior for the regression parameters, random effects variance parameter, and the mixing proportion, and we use a partially proper non-informative prior distribution for the two unit-level error variance components in the mixture. We apply our method to two examples to predict summary characteristics of farm products at the small area level. One of the examples is prediction of twelve county-level crop areas cultivated for corn in some Iowa counties. The other example involves total cash associated in farm operations in twenty-seven farming regions in Australia. We compare predictions of small area characteristics based on the proposed method with those obtained by applying the Datta and Ghosh (1991) and the Chakraborty et al. (2018) HB methods. Our simulation study comparing these three Bayesian methods showed the superiority of our proposed method, measured by prediction mean squared error, coverage probabilities and lengths of credible intervals for the small area means.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/20/2023

A Two-Stage Bayesian Small Area Estimation Method for Proportions

With the rise in popularity of digital Atlases to communicate spatial va...
research
03/18/2019

Small area estimation for grouped data

This paper proposes a new model-based approach to small area estimation ...
research
02/07/2018

Interpolating Distributions for Populations in Nested Geographies using Public-use Data with Application to the American Community Survey

Statistical agencies often publish multiple data products from the same ...
research
11/24/2018

A General Bayesian Approach to Meet Different Inferential Goals in Poverty Research for Small Areas

Poverty mapping that displays spatial distribution of various poverty in...
research
08/29/2023

Small Area Estimation with Random Forests and the LASSO

We consider random forests and LASSO methods for model-based small area ...
research
06/28/2020

Improved Small Area Estimation via Compromise Regression Weights

Shrinkage estimates of small domain parameters typically utilize a combi...
research
05/12/2021

Synthetic Area Weighting for Measuring Public Opinion in Small Areas

The comparison of subnational areas is ubiquitous but survey samples of ...

Please sign up or login with your details

Forgot password? Click here to reset