Author/Authors :
Nelson, Tyler Department of Statistical Science - Baylor University - Waco, USA , Song, Joon Jin Department of Statistical Science - Baylor University - Waco, USA , Chin, Yoo-Mi Department of Economics - Baylor University - Waco, USA , Stamey, James D Department of Statistical Science - Baylor University - Waco, USA
Abstract :
Covariate misclassifcation is well known to yield biased estimates in single level regression models. Te impact on hierarchical
count models has been less studied. A fully Bayesian approach to modeling both the misclassifed covariate and the hierarchical
response is proposed. Models with a single diagnostic test and with multiple diagnostic tests are considered. Simulation studies show
the ability of the proposed model to appropriately account for the misclassifcation by reducing bias and improving performance
of interval estimators. A real data example further demonstrated the consequences of ignoring the misclassifcation. Ignoring
misclassifcation yielded a model that indicated there was a signifcant, positive impact on the number of children of females
who observed spousal abuse between their parents. When the misclassifcation was accounted for, the relationship switched to
negative, but not signifcant. Ignoring misclassifcation in standard linear and generalized linear models is well known to lead to
biased results. We provide an approach to extend misclassifcation modeling to the important area of hierarchical generalized linear
models.