For longitudinal data, when the within-subject covariance is misspecified, the semiparametric regression estimator may be inefficient. We propose a method that combines the efficient semiparametric estimator with nonparametric covariance estimation, and is robust against misspecification of covariance models. We show that kernel covariance estimation provides uniformly consistent estimators for the within-subject covariance matrices, and the semiparametric profile estimator with substituted nonparametric covariance is still semiparametrically efficient. The finite sample performance of the proposed estimator is illustrated by simulation. In an application to CD4 count data from an AIDS clinical trial, we extend the proposed method to a func...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
Abstract In this article we consider a semiparametric generalized mixed-effects model, and propose c...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
models Mathematical Subject Classification: 62G08, 62G20 Abstract: It is challenging in estimating c...
The use of patterned covariance structures in the parametric analysis of longitudinal data is both e...
Abstract We consider the efficient estimation of a regression parameter in a par-tially linear addit...
In semivarying coefficient models for longitudinal/clustered data, usually of primary interest is us...
In this thesis, we investigate new methods, extending the marginal and mixed effects models to deal ...
E±cient estimation of the regression coe±cients in longitudinal data anal- ysis requires a correct s...
This paper considers a wide class of semiparametric problems with a parametric part for some covaria...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...
We study joint modeling of survival and longitudinal data. There are two regression models of inter...
This paper considers an extension of M-estimators in semiparametric models for independent observati...
For longitudinal data, the within-subject dependence structure and covariance parameters may be of p...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
Abstract In this article we consider a semiparametric generalized mixed-effects model, and propose c...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
models Mathematical Subject Classification: 62G08, 62G20 Abstract: It is challenging in estimating c...
The use of patterned covariance structures in the parametric analysis of longitudinal data is both e...
Abstract We consider the efficient estimation of a regression parameter in a par-tially linear addit...
In semivarying coefficient models for longitudinal/clustered data, usually of primary interest is us...
In this thesis, we investigate new methods, extending the marginal and mixed effects models to deal ...
E±cient estimation of the regression coe±cients in longitudinal data anal- ysis requires a correct s...
This paper considers a wide class of semiparametric problems with a parametric part for some covaria...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...
We study joint modeling of survival and longitudinal data. There are two regression models of inter...
This paper considers an extension of M-estimators in semiparametric models for independent observati...
For longitudinal data, the within-subject dependence structure and covariance parameters may be of p...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
Abstract In this article we consider a semiparametric generalized mixed-effects model, and propose c...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...