Additive models are widely applied in statistical learning. The partially linear additive model is a special form of additive models, which combines the strengths of linear and nonlinear models by allowing linear and nonlinear predictors to coexist. One of the most interesting questions associated with the partially linear additive model is to identify nonlinear, linear, and non-informative covariates with no such pre-specification given, and to simultaneously recover underlying component functions which indicate how each covariate affects the response. In this thesis, algorithms are developed to solve the above question. Main technique used is gradient boosting, in which simple linear regressions and univariate penalized splines are togeth...
In this paper we study sparse high dimensional additive partial linear models with nonparametric add...
A new method for function estimation and variable selection, specifically designed for additive mode...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
Additive models are widely applied in statistical learning. The partially linear additive model is a...
Additive models are often applied in statistical learning which allow linear and nonlinear predictor...
In linear mixed models the influence of covariates is restricted to a strictly parametric form. With...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
We propose generalized additive partial linear models for complex data which allow one to capture no...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
<div><p>The generalized partially linear additive model (GPLAM) is a flexible and interpretable appr...
Determining which covariates enter the linear part of a partially linear additive model is always ch...
In this article, we propose a model selection and semiparametric estimation method for additive mode...
In this paper we present a way of constructing design of experiments by Multivariate Additive Partia...
In this paper we study sparse high dimensional additive partial linear models with nonparametric add...
A new method for function estimation and variable selection, specifically designed for additive mode...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
Additive models are widely applied in statistical learning. The partially linear additive model is a...
Additive models are often applied in statistical learning which allow linear and nonlinear predictor...
In linear mixed models the influence of covariates is restricted to a strictly parametric form. With...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
We propose generalized additive partial linear models for complex data which allow one to capture no...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
<div><p>The generalized partially linear additive model (GPLAM) is a flexible and interpretable appr...
Determining which covariates enter the linear part of a partially linear additive model is always ch...
In this article, we propose a model selection and semiparametric estimation method for additive mode...
In this paper we present a way of constructing design of experiments by Multivariate Additive Partia...
In this paper we study sparse high dimensional additive partial linear models with nonparametric add...
A new method for function estimation and variable selection, specifically designed for additive mode...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...