Existing computationally efficient methods for penalized likelihood generalized additive model fitting employ iterative smoothness selection on working linear models (or working mixed models). Such schemes fail to converge for a non-negligible proportion of models, with failure being particularly frequent in the presence of concurvity. If smoothness selection is performed by optimizing ‘whole model’ criteria these problems disappear, but until now attempts to do this have employed finite-difference-based optimization schemes which are computationally inefficient and can suffer from false convergence. The paper develops the first computationally efficient method for direct generalized additive model smoothness selection. It is highly stable,...
A method for making inferences about the components of a generalized additive model is described. It...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...
This paper discusses a general framework for smoothing parameter estimation for models with regular ...
Regression models describingthe dependence between a univariate response and a set of covariates pla...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
<p>This article discusses a general framework for smoothing parameter estimation for models with reg...
The validity of estimation and smoothing parameter selection for the wide class of generalized addit...
In many practical situations when analyzing a dependence of one or more explanatory variables on a r...
In the framework of Generalized Additive Models (GAM) an automatic data-driven procedure is introdu...
In the framework of Generalized Additive Models (GAM) an automatic data-driven procedure is introdu...
The validity of estimation and smoothing parameter selection for the wide class of generalized addit...
Many statistical models involve three distinct groups of variables: local or nuisance parameters, gl...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
A method for making inferences about the components of a generalized additive model is described. It...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...
This paper discusses a general framework for smoothing parameter estimation for models with regular ...
Regression models describingthe dependence between a univariate response and a set of covariates pla...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
<p>This article discusses a general framework for smoothing parameter estimation for models with reg...
The validity of estimation and smoothing parameter selection for the wide class of generalized addit...
In many practical situations when analyzing a dependence of one or more explanatory variables on a r...
In the framework of Generalized Additive Models (GAM) an automatic data-driven procedure is introdu...
In the framework of Generalized Additive Models (GAM) an automatic data-driven procedure is introdu...
The validity of estimation and smoothing parameter selection for the wide class of generalized addit...
Many statistical models involve three distinct groups of variables: local or nuisance parameters, gl...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
A method for making inferences about the components of a generalized additive model is described. It...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
With the emergence of semi- and nonparametric regression the generalized linear mixed model has been...