This paper considers nonlinear regression models when neither the response variable nor the covariates can be directly observed, but are measured with both multiplicative and additive distortion measurement errors. We propose conditional variance and conditional mean calibration estimation methods for the unobserved variables, then a nonlinear least squares estimator is proposed. For the hypothesis testing of parameter, a restricted estimator under the null hypothesis and a test statistic are proposed. The asymptotic properties for the estimator and test statistic are established. Lastly, a residual-based empirical process test statistic marked by proper functions of the regressors is proposed for the model checking problem. We further sugg...
This paper considers identification and estimation of a general nonlinear Errors-in-Variables (EIV) ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
We present quasi-likelihood models for different regression problems when one of the explanatory var...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
This paper presents a solution to an important econometric problem, namely the root n consistent est...
In many physical and biological systems, underlying variables satisfy restrictions, but some or all ...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
A method for estimating nonlinear regression errors and their distributions without per-forming regr...
We consider least absolute error estimation in a nonlinear dynamic model with neither independent no...
A major difficulty in applying a measurement error model is that one is required to have additional ...
Estimation of the parameters of the functional nonlinear measurement error model is considered. A si...
Let an observed random vector Z(,t) be represented as Z(,t) = z(,t)(\u270) + (epsilon)(,t), where z(...
The problem of testing a proposed nonlinear multiresponse regression function for lack of fit is con...
We present quasi-likelihood models for different regression problems when one of the explanatory var...
This paper considers identification and estimation of a general nonlinear Errors-in-Variables (EIV) ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
We present quasi-likelihood models for different regression problems when one of the explanatory var...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
This paper presents a solution to an important econometric problem, namely the root n consistent est...
In many physical and biological systems, underlying variables satisfy restrictions, but some or all ...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
A method for estimating nonlinear regression errors and their distributions without per-forming regr...
We consider least absolute error estimation in a nonlinear dynamic model with neither independent no...
A major difficulty in applying a measurement error model is that one is required to have additional ...
Estimation of the parameters of the functional nonlinear measurement error model is considered. A si...
Let an observed random vector Z(,t) be represented as Z(,t) = z(,t)(\u270) + (epsilon)(,t), where z(...
The problem of testing a proposed nonlinear multiresponse regression function for lack of fit is con...
We present quasi-likelihood models for different regression problems when one of the explanatory var...
This paper considers identification and estimation of a general nonlinear Errors-in-Variables (EIV) ...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
We present quasi-likelihood models for different regression problems when one of the explanatory var...