Description
Abstract:We describe semiparametric estimation and inference in a logistic regression model with measurement error in the predictors. The particular measurement error model consists of a primary data set in which only the response Y and a fallible surrogate W of the true predictor X are observed, plus a smaller validation data set for which (Y, X, W) are observed. Except for the underlying assumption of a logistic model in the true predictor, no parametric distributional assumptions are made about the true predictor or its surrogate. We develop a semiparametric parameter estimate of the logistic regression parameter which is asymptotically normally distributed and computationally feasible. The estimate relies on kernel regression techniques. For scalar predictors, by a detailed analysis of the mean-squared error of the parameter estimate, we obtain a representation for an optimal bandwidth.
Item Description:Funding information taken from leaf 12.
Offprint: Journal of the Royal Statistical Society. Series B.
Physical Description:15 leaves, 3 unnumbered leaves : illustrations ; 28 cm
Bibliography:Includes bibliographical references (leaves 12-13).