
In a logistic regression model when covariates are subject to measurement error the naive estimator, obtained by regressing on the observed covariates, is asymptotically biased. We introduce a bias-adjusted estimator and two estimators appropriate for normally distributed measurement errors - a functional maximum likelihood estimator and an estimator which exploits the consequences of sufficiency. The four proposals are studied asymptotically under conditions which are appropriate when the measurement error is small. A small Monte Carlo study illustrates the superiority of the measurement-error estimators in certain situations.
Monte Carlo study, Linear regression; mixed models, logistic regression, functional maximum likelihood, Factor analysis and principal components; correspondence analysis, covariates, logistic regression model, bias-adjusted estimator, Errors-in-variables, normally distributed measurement errors, functional maximum likelihood estimator, 62J05, asymptotic properties, sufficiency, 62H25, errors-in-variables, measurement error
Monte Carlo study, Linear regression; mixed models, logistic regression, functional maximum likelihood, Factor analysis and principal components; correspondence analysis, covariates, logistic regression model, bias-adjusted estimator, Errors-in-variables, normally distributed measurement errors, functional maximum likelihood estimator, 62J05, asymptotic properties, sufficiency, 62H25, errors-in-variables, measurement error
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