Measurement error in the continuous covariates of a model generally yields bias in the estimators. It is a frequent problem in practice, and many correction procedures have been developed for different classes of models. However, in most cases, some information about the measurement error distribution is required. When neither validation nor auxiliary data (e.g., replicated measurements) are available, this specification turns out to be tricky. In this paper, we develop a flexible likelihood-based procedure to estimate the variance of classical additive error of Gaussian distribution, without additional information. The performance of this estimator is investigated both in an asymptotic way and through finite sample simulations. The usefuln...
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
SUMMARY. In the analysis of clustered data with covariates measured with error, a problem of common ...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
Predictor variables are often contaminated with measurement errors in statistical practice. This may...
Measurement error is pervasive in statistics due to the non-availability of authentic data. The reas...
Abstract: We consider the estimation in Cox proportion hazard model for censored sur-vival data when...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
We investigate the effects of measurement error on the estimation of nonparametric variance function...
The problem of measurement error affecting covariates is very common in many scientific areas. Many ...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
We propose a new class of models, transition measurement error models, to model longitudinal data wh...
In medical research, a situation commonly arises where new variables are calculated from a common se...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
SUMMARY. In the analysis of clustered data with covariates measured with error, a problem of common ...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
Predictor variables are often contaminated with measurement errors in statistical practice. This may...
Measurement error is pervasive in statistics due to the non-availability of authentic data. The reas...
Abstract: We consider the estimation in Cox proportion hazard model for censored sur-vival data when...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
We investigate the effects of measurement error on the estimation of nonparametric variance function...
The problem of measurement error affecting covariates is very common in many scientific areas. Many ...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
We propose a new class of models, transition measurement error models, to model longitudinal data wh...
In medical research, a situation commonly arises where new variables are calculated from a common se...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
Nonlinear regression with measurement error is important for estimation from microeconomic data. One...
SUMMARY. In the analysis of clustered data with covariates measured with error, a problem of common ...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...