Estimation of the parameters of the functional nonlinear measurement error model is considered. A simulation bias adjusted (SIMBA) estimation procedure is presented. In the SIMBA procedure, internal Monte Carlo simulation based on the sample data is used to adjust a naive estimator, such as the ordinary least squares estimator, for bias. Let the measurement error variance s2un be a sequence depending on the sample size n, and assume s2un → 0 as n → infinity. Under some regularity conditions, the order in probability convergence rate for the SIMBA estimator is max s4un , n-1/2, while the order in probability convergence rate for the ordinary least squares estimator is max s2un , n-1/2. Monte Carlo simulation is conducted to test the performa...
When covariates in Longitudinal data are subject to errors, the naive estimates of the model parame...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
A Monte Carlo simulation is employed to investigate the performance of five estimation methods of no...
Estimation of the parameters of the functional nonlinear measurement error model is considered. A si...
In many physical and biological systems, underlying variables satisfy restrictions, but some or all ...
The nonlinear structural errors-in-variables model is investigated. We consider a Simex estimator wi...
Estimators of the parameters of the multivariate linear errors-in-variables model and the nonlinear ...
Estimation of the parameters of a non-linear model is considered when both measured variables have r...
In ecological population management, years of animal counts are fit to nonlinear, dynamic models (e....
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
A general model is presented for analyzing samples of vectors of proportions whose expectations are ...
Input model bias is the bias found in the output performance measures of a simulation model caused b...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
In the face of seeming dearth of objective methods of estimating measurement error variance and real...
When covariates in Longitudinal data are subject to errors, the naive estimates of the model parame...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
A Monte Carlo simulation is employed to investigate the performance of five estimation methods of no...
Estimation of the parameters of the functional nonlinear measurement error model is considered. A si...
In many physical and biological systems, underlying variables satisfy restrictions, but some or all ...
The nonlinear structural errors-in-variables model is investigated. We consider a Simex estimator wi...
Estimators of the parameters of the multivariate linear errors-in-variables model and the nonlinear ...
Estimation of the parameters of a non-linear model is considered when both measured variables have r...
In ecological population management, years of animal counts are fit to nonlinear, dynamic models (e....
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
The inverse estimation problem consists of a calibration stage and a prediction stage. In the calibr...
A general model is presented for analyzing samples of vectors of proportions whose expectations are ...
Input model bias is the bias found in the output performance measures of a simulation model caused b...
AbstractWe study nonlinear regression models whose both response and predictors are measured with er...
In the face of seeming dearth of objective methods of estimating measurement error variance and real...
When covariates in Longitudinal data are subject to errors, the naive estimates of the model parame...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
A Monte Carlo simulation is employed to investigate the performance of five estimation methods of no...