A unit-level small area model with misclassified covariates

Type Working Paper
Title A unit-level small area model with misclassified covariates
Author(s)
Publication (Day/Month/Year) 2016
URL http://adsabs.harvard.edu/abs/2016arXiv161102845A
Abstract
Small area models are mixed effects regression models that link the small areas and
borrow strength from similar domains. When the auxiliary variables used in the models are
measured with error, small area estimators that ignore the measurement error may be worse
than direct estimators. Alternative small area estimators accounting for measurement error
have been proposed in the literature but only for continuous auxiliary variables. Adopting
a Bayesian approach, we extend the unit-level model in order to account for measurement
error in both continuous and categorical covariates. For the discrete variables we model
the misclassification probabilities and estimate them jointly with all the unknown model
parameters. We test our model through a simulation study exploring different scenarios.
The impact of the proposed model is emphasized through application to data from the
Ethiopia Demographic and Health Survey where we focus on the women’s malnutrition issue
a dramatic problem in developing countries and an important indicator of the socio-economic
progress of a country.

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