Obtaining accurate estimates or prediction from available data is one of the important goals in statistical research. In this thesis, we propose two new statistical methods, with examples of application and simulation studies, to achieve this goal. The parametric penalized spline smoothing procedure is a flexible algorithm that requires no restricted parametric assumption and is proved to obtain more accurate estimates of curves and derivatives than available methods. In the second part of thesis, we propose a hierarchical Bayesian approach to estimate dynamic engineering model parameters and their mixed effects. This approach has the benets of solving the identifiability problem of model parameters and accurately estimating these parameter...
Non-parametric modeling is a method which relies heavily on data and motivated by the smoothness pro...
A simple parametrization, built from the definition of cubic splines, is shown to facilitate the imp...
Hierarchical linear and generalized linear models can be fit using Gibbs samplers and Metropolis alg...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
Standard practice in analyzing data from different types of ex-periments is to treat data from each ...
peer reviewedaudience: researcher, professionalOrdinary differential equations (ODEs) are widely use...
The problem of the non-linear regression analysis is considered. The algorithm of the inductive mode...
Abstract: Ordinary differential equations (ODEs) are widely used to model physical, chemical and bio...
We describe procedures for Bayesian estimation and testing in both cross sectional and longitudinal ...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In statistical research with populations having a multilevel structure, hierarchical models can pla...
A bayesian approach is used to estimate a nonparametric regression model. The main features of the p...
Ordinary differential equations (ODEs) are widely used to model physical, chemical and biological pr...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
Non-parametric modeling is a method which relies heavily on data and motivated by the smoothness pro...
A simple parametrization, built from the definition of cubic splines, is shown to facilitate the imp...
Hierarchical linear and generalized linear models can be fit using Gibbs samplers and Metropolis alg...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
Standard practice in analyzing data from different types of ex-periments is to treat data from each ...
peer reviewedaudience: researcher, professionalOrdinary differential equations (ODEs) are widely use...
The problem of the non-linear regression analysis is considered. The algorithm of the inductive mode...
Abstract: Ordinary differential equations (ODEs) are widely used to model physical, chemical and bio...
We describe procedures for Bayesian estimation and testing in both cross sectional and longitudinal ...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In statistical research with populations having a multilevel structure, hierarchical models can pla...
A bayesian approach is used to estimate a nonparametric regression model. The main features of the p...
Ordinary differential equations (ODEs) are widely used to model physical, chemical and biological pr...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
Non-parametric modeling is a method which relies heavily on data and motivated by the smoothness pro...
A simple parametrization, built from the definition of cubic splines, is shown to facilitate the imp...
Hierarchical linear and generalized linear models can be fit using Gibbs samplers and Metropolis alg...