A flexible model for generalized linear regression with measurement error
Abstract
This paper focuses on the question of specification of measurement error
distribution and the distribution of true predictors in generalized linear models
when the predictors are subject to measurement errors. The standard measurement
error model typically assumes that the measurement error distribution and the distribution
of covariates unobservable in the main study are normal. To make the
model flexible enough we, instead, assume that the measurement error distribution
is multivariate t and the distribution of true covariates is a finite mixture of normal
densities. Likelihood–based method is developed to estimate the regression
parameters. However, direct maximization of the marginal likelihood is numerically
difficult. Thus as an alternative to it we apply the EM algorithm. This makes
the computation of likelihood estimates feasible. The performance of the proposed
model is investigated by simulation study.
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