Nonlinear regression with measurement error is important for estimation from microeconomic data. One approach to identification and estimation is a causal model, in which the unobserved true variable is predicted by observable variables. This paper details the estimation of such a model using simulated moments and a flexible disturbance distribution. An estimator of the asymptotic variance is given for parametric models. Also, a semiparametric consistency result is given. The value of the estimator is demonstrated in a Monte Carlo study and an application to estimating Engel Curves. © 2001 by the President and Fellows of Harvard College and the Massachusetts Institute of Technology
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It is well known that consistent estimators of errors-in-variables models require knowledge of the r...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
This paper considers nonlinear regression models when neither the response variable nor the covariat...
This paper presents a solution to an important econometric problem, namely the root n consistent est...
Estimation of the parameters of the functional nonlinear measurement error model is considered. A si...
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...
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Instrumental variables are often associated with low estimator precision. This paper explores effici...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
This PhD thesis focuses on instrumental variable models. Often, econometric models are based on orth...
The results of analyzing experimental data using a parametric approach may heavily depend on the cho...
Instrumental variable methods are widely used for inferring the causal effect in the presence of unm...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
This paper studies the application of the simulated method of moments (SMM) for the estimation of no...
It is well known that consistent estimators of errors-in-variables models require knowledge of the r...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
This paper considers nonlinear regression models when neither the response variable nor the covariat...