This paper considers nonparametric instrumental variable regression when the endogenous variable is contaminated with classical measurement error. Existing methods are inconsistent in the presence of measurement error. We propose a wavelet deconvolution estimator for the structural function that modifies the generalized Fourier coefficients of the orthogonal series estimator to take into account the measurement error. We establish the convergence rates of our estimator for the cases of mildly/severely ill-posed models and ordinary/super smooth measurement errors. We characterize how the presence of measurement error slows down the convergence rates of the estimator. We also study the case where the measurement error density is unknown and n...
This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression ...
Deconvolution is a useful statistical technique for recovering an unknown density in the presence of...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...
This paper considers nonparametric instrumental variable regression when the endogenous variable is ...
We suggest two nonparametric approaches, based on kernel methods and orthogonal series to estimatin...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
The nonparametric estimation of a regression function x from conditional moment restrictions involvi...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...
In the estimation of nonparametric additive models, conventional methods, such as backfitting and se...
The focus of the paper is the nonparametric estimation of an instrumental regression function ϕ defi...
We consider the nonparametric regression model with an additive error that is correlated with the ex...
Data from many scientific areas often come with measurement error. Density or distribution function ...
Nonparametric prediction of a random variable Y conditional on the value of an explanatory variable ...
In this paper we examine the finite sample performance of two estimators one developed by Blundell, ...
This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression ...
Deconvolution is a useful statistical technique for recovering an unknown density in the presence of...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...
This paper considers nonparametric instrumental variable regression when the endogenous variable is ...
We suggest two nonparametric approaches, based on kernel methods and orthogonal series to estimatin...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
The nonparametric estimation of a regression function x from conditional moment restrictions involvi...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...
In the estimation of nonparametric additive models, conventional methods, such as backfitting and se...
The focus of the paper is the nonparametric estimation of an instrumental regression function ϕ defi...
We consider the nonparametric regression model with an additive error that is correlated with the ex...
Data from many scientific areas often come with measurement error. Density or distribution function ...
Nonparametric prediction of a random variable Y conditional on the value of an explanatory variable ...
In this paper we examine the finite sample performance of two estimators one developed by Blundell, ...
This paper proposes a wavelet (spectral) approach to estimate the parameters of a linear regression ...
Deconvolution is a useful statistical technique for recovering an unknown density in the presence of...
We study the problem of nonparametric regression when the regressor is endogenous, which is an impor...