Analysis of misclassified correlated binary data using a multivariate probit model when covariates are subjected to measurement error
Abstract
A multivariate probit model for correlated binary responses given the predictors of interest has been
considered. Some of the responses are subject to classification errors and hence are not directly
observable. Also measurements on some of the predictors are not available; instead the measurements
on its surrogate are available. However, the conditional distribution of the unobservable
predictors given the surrogate is completely specified. Models are proposed taking into account either
or both of these sources of errors. Likelihood-based methodologies are proposed to fit these models.
To ascertain the effect of ignoring classification errors and /or measurement error on the estimates of
the regression and correlation parameters, a sensitivity study is carried out through simulation.
Finally, the proposed methodology is illustrated through an example.
Collections
- Journal Articles [3726]