This paper presents a solution to an important econometric problem, namely the root n consistent estimation of nonlinear models with measurement errors in the explanatory variables, when one repeated observation of each mismeasured regressor is available. While a root n consistent estimator has been derived for polynomial specifications (see Hausman, Ichimura, Newey, and Powell (1991)), such an estimator for general nonlinear specifications has so far not been available. Using the additional information provided by the repeated observation, the suggested estimator separates the measurement error from the "true" value of the regressors thanks to a useful property of the Fourier transform: The Fourier transform converts the integral equations...
We study a nonlinear measurement model where the response vari-able has a density belonging to the e...
Conditions are given which ensure the nonexistence of a sequence of strongly consistent M-estimators...
Abstract: This paper studies a minimum distance moment estimator for general nonlinear regression mo...
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
This paper considers nonlinear regression models when neither the response variable nor the covariat...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
The issues of identification and estimation of nonlinear errors-in-variables models are explored. Th...
We consider the problem of consistent estimation of nonlinear models with mismeasured explanatory va...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
We consider the problem of consistent estimation of nonlinear models with mis-measured explanatory v...
In this paper we consider the polynomial regression model in the presence of multiplicative mea sure...
Let an observed random vector Z(,t) be represented as Z(,t) = z(,t)(\u270) + (epsilon)(,t), where z(...
We study a nonlinear measurement model where the response vari-able has a density belonging to the e...
Conditions are given which ensure the nonexistence of a sequence of strongly consistent M-estimators...
Abstract: This paper studies a minimum distance moment estimator for general nonlinear regression mo...
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
This paper considers nonlinear regression models when neither the response variable nor the covariat...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
The issues of identification and estimation of nonlinear errors-in-variables models are explored. Th...
We consider the problem of consistent estimation of nonlinear models with mismeasured explanatory va...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
We consider the problem of consistent estimation of nonlinear models with mis-measured explanatory v...
In this paper we consider the polynomial regression model in the presence of multiplicative mea sure...
Let an observed random vector Z(,t) be represented as Z(,t) = z(,t)(\u270) + (epsilon)(,t), where z(...
We study a nonlinear measurement model where the response vari-able has a density belonging to the e...
Conditions are given which ensure the nonexistence of a sequence of strongly consistent M-estimators...
Abstract: This paper studies a minimum distance moment estimator for general nonlinear regression mo...