This dissertation proposes a nonparametric quasi-likelihood approach to estimate regression coefficients in the class of generalized linear regression models for longitudinal data analysis, where the covariance matrices of the longitudinal data are totally unknown but are smooth functions of means. This proposed nonparametric quasi-likelihood approach is to replace the unknown covariance matrix with a nonparametric estimator in the quasi-likelihood estimating equations, which are used to estimate the regression coefficients for longitudinal data analysis. Local polynomial regression techniques are used to get the nonparametric estimator of the unknown covariance matrices in the proposed nonparametric quasi-likelihood approach. Rates of conv...
This paper proposes an extension of generalized linear models to the analysis of longitudinal data. ...
This paper considers parameter estimation for nonlinear and non-Gaussian state-space models with cor...
The accelerated failure time model provides direct physical interpretation for right censored data. ...
In this thesis, we propose an approach to correct the estimation of the bias of the model parameters...
Longitudinal data analysis is challenging because of the difficulties in modelling the correlations ...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
The Com-Poisson (CMP) model is one of the most popular discrete generalized linear models (GLMS) tha...
Quasi-likelihood was extended to right censored data to handle heteroscedasticity in the frame of th...
We model generalized longitudinal data from multiple treatment groups by a class of semiparametric a...
We consider a class of nonparametric marginal models in which the regres-sion coefficients are assum...
[[abstract]]I propose a simply method to estimate the regression parameters in quasi-likelihood mode...
Summary. In this paper we propose a nonparametric data-driven approach to model covariance structure...
Motivated by the need to analyze the National Longitudinal Surveys data, we propose a new semiparame...
A quasi-likelihood method has been proposed by Wedderburn (1974) for the estimation of parameters in...
This paper proposes an extension of generalized linear models to the analysis of longitudinal data. ...
This paper considers parameter estimation for nonlinear and non-Gaussian state-space models with cor...
The accelerated failure time model provides direct physical interpretation for right censored data. ...
In this thesis, we propose an approach to correct the estimation of the bias of the model parameters...
Longitudinal data analysis is challenging because of the difficulties in modelling the correlations ...
Improving efficiency for regression coefficients and predicting trajectories of individuals are two ...
Longitudinal data sets consist of repeated observations of an outcome over time, and a corresponding...
The Com-Poisson (CMP) model is one of the most popular discrete generalized linear models (GLMS) tha...
Quasi-likelihood was extended to right censored data to handle heteroscedasticity in the frame of th...
We model generalized longitudinal data from multiple treatment groups by a class of semiparametric a...
We consider a class of nonparametric marginal models in which the regres-sion coefficients are assum...
[[abstract]]I propose a simply method to estimate the regression parameters in quasi-likelihood mode...
Summary. In this paper we propose a nonparametric data-driven approach to model covariance structure...
Motivated by the need to analyze the National Longitudinal Surveys data, we propose a new semiparame...
A quasi-likelihood method has been proposed by Wedderburn (1974) for the estimation of parameters in...
This paper proposes an extension of generalized linear models to the analysis of longitudinal data. ...
This paper considers parameter estimation for nonlinear and non-Gaussian state-space models with cor...
The accelerated failure time model provides direct physical interpretation for right censored data. ...