Improving efficiency for regression coefficients and predicting trajectories of individuals are two important aspects in analysis of longitudinal data. Both involve estimation of the covariance function. Yet, challenges arise in estimating the covariance function of longitudinal data collected at irregular time points. A class of semiparametric models for the covariance function is proposed by imposing a parametric correlation structure while allowing a nonparametric variance function. A kernel estimator is developed for the estimation of the nonparametric variance function. Two methods, a quasi-likelihood approach and a minimum generalized variance method, are proposed for estimating parameters in the correlation structure. We introduce a ...
For longitudinal data, the within-subject dependence structure and covariance parameters may be of p...
This paper considers an extension of M-estimators in semiparametric models for independent observati...
We propose a nonparametric bivariate time-varying coefficient model for longitudinal measurements wi...
models Mathematical Subject Classification: 62G08, 62G20 Abstract: It is challenging in estimating c...
We consider a class of nonparametric marginal models in which the regres-sion coefficients are assum...
For longitudinal data, when the within-subject covariance is misspecified, the semiparametric regres...
<p>We model generalized longitudinal data from multiple treatment groups by a class of semiparametri...
We propose an efficient and robust method for variance function estimation in semiparametric longitu...
In this thesis, we investigate new methods, extending the marginal and mixed effects models to deal ...
The use of patterned covariance structures in the parametric analysis of longitudinal data is both e...
When the selected parametric model for the covariance structure is far from the true one, the corres...
This paper develops a new estimation of nonparametric regression functions for clustered or longitud...
Longitudinal data analysis is challenging because of the difficulties in modelling the correlations ...
We consider the analysis of longitudinal data when the covariance function is modeled by additional ...
Abstract. Nonparametric approaches have recently emerged as a flexible way to model lon-gitudinal da...
For longitudinal data, the within-subject dependence structure and covariance parameters may be of p...
This paper considers an extension of M-estimators in semiparametric models for independent observati...
We propose a nonparametric bivariate time-varying coefficient model for longitudinal measurements wi...
models Mathematical Subject Classification: 62G08, 62G20 Abstract: It is challenging in estimating c...
We consider a class of nonparametric marginal models in which the regres-sion coefficients are assum...
For longitudinal data, when the within-subject covariance is misspecified, the semiparametric regres...
<p>We model generalized longitudinal data from multiple treatment groups by a class of semiparametri...
We propose an efficient and robust method for variance function estimation in semiparametric longitu...
In this thesis, we investigate new methods, extending the marginal and mixed effects models to deal ...
The use of patterned covariance structures in the parametric analysis of longitudinal data is both e...
When the selected parametric model for the covariance structure is far from the true one, the corres...
This paper develops a new estimation of nonparametric regression functions for clustered or longitud...
Longitudinal data analysis is challenging because of the difficulties in modelling the correlations ...
We consider the analysis of longitudinal data when the covariance function is modeled by additional ...
Abstract. Nonparametric approaches have recently emerged as a flexible way to model lon-gitudinal da...
For longitudinal data, the within-subject dependence structure and covariance parameters may be of p...
This paper considers an extension of M-estimators in semiparametric models for independent observati...
We propose a nonparametric bivariate time-varying coefficient model for longitudinal measurements wi...