In linear mixed models the influence of covariates is restricted to a strictly parametric form. With the rise of semi- and nonparametric regression also the mixed model has been expanded to allow for additive predictors. The common approach uses the representation of additive models as mixed models. An alternative approach that is proposed in the present paper is likelihood based boosting. Boosting originates in the machine learning community where it has been proposed as a technique to improve classification procedures by combining estimates with reweighted observations. Likelihood based boosting is a general method which may be seen as an extension of L2 boost. In additive mixed models the advantage of boosting techniques in the form of c...
Statistical boosting is a powerful tool that has become increasingly more popular in recent years. I...
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to...
A likelihood-based boosting approach for fitting binary and ordinal mixed models is presented. In co...
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...
Additive models are widely applied in statistical learning. The partially linear additive model is a...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
We consider additive models fitting and inference when the response variable is a sample extreme. No...
Semiparametric regression offers a flexible framework for modeling nonlinear relationships between a...
Additive models are often applied in statistical learning which allow linear and nonlinear predictor...
Semiparametric regression offers a flexible framework for modeling non-linear relationships between ...
Boosting algorithms were originally developed for machine learning but were later adapted to estimat...
Statistical boosting is a powerful tool that has become increasingly more popular in recent years. I...
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to...
A likelihood-based boosting approach for fitting binary and ordinal mixed models is presented. In co...
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...
Additive models are widely applied in statistical learning. The partially linear additive model is a...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
We consider additive models fitting and inference when the response variable is a sample extreme. No...
Semiparametric regression offers a flexible framework for modeling nonlinear relationships between a...
Additive models are often applied in statistical learning which allow linear and nonlinear predictor...
Semiparametric regression offers a flexible framework for modeling non-linear relationships between ...
Boosting algorithms were originally developed for machine learning but were later adapted to estimat...
Statistical boosting is a powerful tool that has become increasingly more popular in recent years. I...
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to...
A likelihood-based boosting approach for fitting binary and ordinal mixed models is presented. In co...