Measurement error is pervasive in statistics due to the non-availability of authentic data. The reasons for measurement error mainly relate to cost, convenience, and human error. Measurement error can result in non-negligible bias due to attenuated estimates, reduced power of statistical tests, and lower coverage probabilities of the coefficient estimators in a regression model. Several methods have been proposed to correct for measurement error, all of which can be grouped into two broad categories based on the underlying model—functional and structural. Functional models provide flexibility and robustness to estimators by placing minimal or no assumptions on the distribution of the mismeasured covariate or by treating them as a fixed enti...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Doctor of PhilosophyDepartment of StatisticsWeixing SongFor the general parametric and nonparametric...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
Predictor variables are often contaminated with measurement errors in statistical practice. This may...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
Measurement error affecting the independent variables in regression models is a common problem in ma...
While most of the literature on measurement error focuses on additive measurement error, we consider...
The presence of measurement errors affecting the covariates in regression models is a relevant topic...
It is well known that ignoring measurement errors in covariates in the model leads to biased estimat...
In medical research, a situation commonly arises where new variables are calculated from a common se...
Growth models are used extensively in the context of educational accountability to evaluate student-...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
1. Measurement error and other forms of uncertainty are commonplace in ecology and evolution, and ma...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Doctor of PhilosophyDepartment of StatisticsWeixing SongFor the general parametric and nonparametric...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
Measurement error is a frequent issue in many research areas. For instance, in health research it is...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
Predictor variables are often contaminated with measurement errors in statistical practice. This may...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
Measurement error affecting the independent variables in regression models is a common problem in ma...
While most of the literature on measurement error focuses on additive measurement error, we consider...
The presence of measurement errors affecting the covariates in regression models is a relevant topic...
It is well known that ignoring measurement errors in covariates in the model leads to biased estimat...
In medical research, a situation commonly arises where new variables are calculated from a common se...
Growth models are used extensively in the context of educational accountability to evaluate student-...
Measurement error in the continuous covariates of a model generally yields bias in the estimators. I...
1. Measurement error and other forms of uncertainty are commonplace in ecology and evolution, and ma...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Doctor of PhilosophyDepartment of StatisticsWeixing SongFor the general parametric and nonparametric...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...