© 2017, Institute of Mathematical Statistics. All rights reserved. We introduce a general single index semiparametric measurement error model for the case that the main covariate of interest is measured with error and modeled parametrically, and where there are many other variables also important to the modeling. We propose a semiparametric bias-correction approach to estimate the effect of the covariate of interest. The resultant estimators are shown to be root-n consistent, asymptotically normal and locally efficient. Comprehensive simulations and an analysis of an empirical data set are performed to demonstrate the finite sample performance and the bias reduction of the locally efficient estimators
Suppose that an investigator wants to estimate an association between a continuous exposure variable...
Many areas of applied statistics have become aware of the problem of measurement error-prone variabl...
An inference procedure is proposed to provide consistent estimators of parameters in a modal regress...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
The error-in-covariates problem has received great attention among researchers who study semiparamet...
The error-in-covariates problem has received great attention among researchers who study semiparamet...
This dissertation research has focused on theoretical and practical developments of semiparametric m...
This dissertation research has focused on theoretical and practical developments of semiparametric m...
Covariates of regression analysis are often measured with error in medical research. Indeed, many me...
In many fields of statistical application the fundamental task is to quantify the association betwee...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
In many fields of statistical application the fundamental task is to quantify the association betwee...
We consider the estimation of the regression of an outcome Y on a covariate X , where X is unob...
This paper presents a general approach for assessing the sensitivity of the point and interval estim...
Propensity score methods are a popular tool to control for confounding in observational data, but th...
Suppose that an investigator wants to estimate an association between a continuous exposure variable...
Many areas of applied statistics have become aware of the problem of measurement error-prone variabl...
An inference procedure is proposed to provide consistent estimators of parameters in a modal regress...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
The error-in-covariates problem has received great attention among researchers who study semiparamet...
The error-in-covariates problem has received great attention among researchers who study semiparamet...
This dissertation research has focused on theoretical and practical developments of semiparametric m...
This dissertation research has focused on theoretical and practical developments of semiparametric m...
Covariates of regression analysis are often measured with error in medical research. Indeed, many me...
In many fields of statistical application the fundamental task is to quantify the association betwee...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
In many fields of statistical application the fundamental task is to quantify the association betwee...
We consider the estimation of the regression of an outcome Y on a covariate X , where X is unob...
This paper presents a general approach for assessing the sensitivity of the point and interval estim...
Propensity score methods are a popular tool to control for confounding in observational data, but th...
Suppose that an investigator wants to estimate an association between a continuous exposure variable...
Many areas of applied statistics have become aware of the problem of measurement error-prone variabl...
An inference procedure is proposed to provide consistent estimators of parameters in a modal regress...