Regression models have been important tools to study the association between outcome variables and their covariates. The traditional linear regression models usually specify such an association by the expectations of the outcome variables as function of the covariates and some parameters. In reality, however, interests often focus on their expectancies characterized by the conditional means. In this article, a new class of additive regression models is proposed to model the expectancies. The model parameters carry practical implication, which may allow the models to be useful in applications such as treatment assessment, resource planning or short-term forecasting. Moreover, the new model can be extended to include the outcome-dependent s...
Recurrent event data is a special case of multivariate lifetime data that is present in a large vari...
We consider a low count data INAR (Integer Autoregressive Regression) model in which the arrivals ar...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...
Let us assume that X, Y and U are observed and that the conditional mean of U given X and Y can be e...
In many empirical situations, modelling simultaneously three or more outcomes as well as their depen...
Nonparametric additive modeling is a fundamental tool for statistical data analysis which allows fle...
Semiparametrische additive Regressionsmodelle schwSemiparametric additive regression models relax th...
A regression method that utilizes an additive model is proposed for the estimation of attributable r...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
We proposed an illness-death model with Lin and Ying's additive hazard and additive frailty for...
AbstractWe study the estimation of the additive components in additive regression models, based on t...
In chapter 1 we study explained variation under the additive hazards regression model for right-cens...
We study the estimation of the additive components in additive regression models, based on the weigh...
Abstract: Interval-censored event time data often arise in medical and public health studies. In suc...
<div><p>In this article we consider nonparametric estimation of a structural equation model under fu...
Recurrent event data is a special case of multivariate lifetime data that is present in a large vari...
We consider a low count data INAR (Integer Autoregressive Regression) model in which the arrivals ar...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...
Let us assume that X, Y and U are observed and that the conditional mean of U given X and Y can be e...
In many empirical situations, modelling simultaneously three or more outcomes as well as their depen...
Nonparametric additive modeling is a fundamental tool for statistical data analysis which allows fle...
Semiparametrische additive Regressionsmodelle schwSemiparametric additive regression models relax th...
A regression method that utilizes an additive model is proposed for the estimation of attributable r...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
We proposed an illness-death model with Lin and Ying's additive hazard and additive frailty for...
AbstractWe study the estimation of the additive components in additive regression models, based on t...
In chapter 1 we study explained variation under the additive hazards regression model for right-cens...
We study the estimation of the additive components in additive regression models, based on the weigh...
Abstract: Interval-censored event time data often arise in medical and public health studies. In suc...
<div><p>In this article we consider nonparametric estimation of a structural equation model under fu...
Recurrent event data is a special case of multivariate lifetime data that is present in a large vari...
We consider a low count data INAR (Integer Autoregressive Regression) model in which the arrivals ar...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...