We use simple examples to show how the bias and standard error of an estimator depend in part on the type of estimator chosen from among parametric, nonparametric, and semiparametric candidates. We estimated the cumulative distribution function in the presence of missing data with and without an auxiliary variable. Simulation results mirrored theoretical expectations about the bias and precision of candidate estimators. Specifically, parametric maximum likelihood estimators performed best but must be "omnisciently"correctly specified. An augmented inverse probability-weighted (IPW) semiparametric estimator performed best among candidate estimators that were not omnisciently correct. In one setting, the augmented IPW estimator reduced the st...
Use of nonparametric model calibration estimators for population total and mean has been considered ...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
For the most part, solutions to the problems of making inferences about the parameters in the Weibul...
We use simple examples to show how the bias and standard error of an estimator depend in part on the...
There is an active debate in the literature on censored data about the relative performance of model...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
We combine a consistent (base) estimator of a population parameter with one or several other possibl...
The bias of an estimator is defined as the difference of its expected value from the parameter to be...
Augmented inverse-probability weighted (AIPW) estimators for incomplete-data models typically do not...
Strong assumptions needed to correctly specify parametric binary choice probability models make them...
Background When conducting a survival analysis, researchers might consider two broad...
Many statistical models, like measurement error models, a general class of survival models, and a mi...
The paper considers estimating a parameter beta that defines an estimating function U(y, x, beta) fo...
In this paper we discuss the derivation, and use a Monte Carlo study to examine the finite sample pe...
The following thesis compares the performance of several parametric and semiparametric estimators in...
Use of nonparametric model calibration estimators for population total and mean has been considered ...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
For the most part, solutions to the problems of making inferences about the parameters in the Weibul...
We use simple examples to show how the bias and standard error of an estimator depend in part on the...
There is an active debate in the literature on censored data about the relative performance of model...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
We combine a consistent (base) estimator of a population parameter with one or several other possibl...
The bias of an estimator is defined as the difference of its expected value from the parameter to be...
Augmented inverse-probability weighted (AIPW) estimators for incomplete-data models typically do not...
Strong assumptions needed to correctly specify parametric binary choice probability models make them...
Background When conducting a survival analysis, researchers might consider two broad...
Many statistical models, like measurement error models, a general class of survival models, and a mi...
The paper considers estimating a parameter beta that defines an estimating function U(y, x, beta) fo...
In this paper we discuss the derivation, and use a Monte Carlo study to examine the finite sample pe...
The following thesis compares the performance of several parametric and semiparametric estimators in...
Use of nonparametric model calibration estimators for population total and mean has been considered ...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
For the most part, solutions to the problems of making inferences about the parameters in the Weibul...