Boosting is one of the most important methods for fitting regression models and build-ing prediction rules from high-dimensional data. A notable feature of boosting is that the technique has a built-in mechanism for shrinking coefficient estimates and variable selection. This regularization mechanism makes boosting a suitable method for analyz-ing data characterized by small sample sizes and large numbers of predictors. We extend the existing methodology by developing a boosting method for prediction functions with multiple components. Such multidimensional functions occur in many types of statistical models, for example in count data models and in models involving outcome variables with a mixture distribution. As will be demonstrated, the ...
In this paper, we develop procedures to construct simultaneous confidence bands for p ˜ potentially...
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to...
Regularization methods, including Lasso, group Lasso, and SCAD, typically focus on selecting variabl...
Boosting is one of the most important methods for fitting regression models and building prediction ...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
Boosting is a highly flexible and powerful approach when it comes to making predictions in non-param...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Abstract Background Statistical boosting is a computational approach to select and estimate interpre...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
This paper is a selective review of the regularization methods scattered in statistics literature. W...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
Dimension reduction for regression is a prominent issue today because technological advances now all...
In this article, we define a new boosting-type algorithm for multiplicative model combination using ...
In this paper, we develop procedures to construct simultaneous confidence bands for p ˜ potentially...
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to...
Regularization methods, including Lasso, group Lasso, and SCAD, typically focus on selecting variabl...
Boosting is one of the most important methods for fitting regression models and building prediction ...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
Boosting is a highly flexible and powerful approach when it comes to making predictions in non-param...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Abstract Background Statistical boosting is a computational approach to select and estimate interpre...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
This paper is a selective review of the regularization methods scattered in statistics literature. W...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
Dimension reduction for regression is a prominent issue today because technological advances now all...
In this article, we define a new boosting-type algorithm for multiplicative model combination using ...
In this paper, we develop procedures to construct simultaneous confidence bands for p ˜ potentially...
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to...
Regularization methods, including Lasso, group Lasso, and SCAD, typically focus on selecting variabl...