This paper discusses a general framework for smoothing parameter estimation for models with regular likelihoods constructed in terms of unknown smooth functions of covariates. Gaussian random effects and parametric terms may also be present. By construction the method is numerically stable and convergent, and enables smoothing parameter uncertainty to be quantified. The latter enables us to fix a well known problem with AIC for such models, thereby improving the range of model selection tools available. The smooth functions are represented by reduced rank spline like smoothers, with associated quadratic penalties measuring function smoothness. Model estimation is by penalized likelihood maximization, where the smoothing parameters controlli...
Regression models describingthe dependence between a univariate response and a set of covariates pla...
In likelihood-based approaches to robustify state space models, Gaussian error distributions are rep...
<p>The current parameterization and algorithm used to fit a smoothing spline analysis of variance (S...
<p>This article discusses a general framework for smoothing parameter estimation for models with reg...
Existing computationally efficient methods for penalized likelihood generalized additive model fitti...
An improved AIC-based criterion is derived for model selection in general smoothing-based modeling, ...
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...
We present a general probabilistic perspective on Gaussian filtering and smoothing. This allows us t...
This document provides a brief introduction to the R package gss for nonparametric statistical model...
DLM was funded by OPNAV N45 and the SURTASS LFA Settlement Agreement, being managed by the U.S. Navy...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...
The validity of estimation and smoothing parameter selection for the wide class of generalized addit...
We describe procedures for Bayesian estimation and testing in cross-sectional, panel data and nonlin...
Regression models describingthe dependence between a univariate response and a set of covariates pla...
In likelihood-based approaches to robustify state space models, Gaussian error distributions are rep...
<p>The current parameterization and algorithm used to fit a smoothing spline analysis of variance (S...
<p>This article discusses a general framework for smoothing parameter estimation for models with reg...
Existing computationally efficient methods for penalized likelihood generalized additive model fitti...
An improved AIC-based criterion is derived for model selection in general smoothing-based modeling, ...
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...
We present a general probabilistic perspective on Gaussian filtering and smoothing. This allows us t...
This document provides a brief introduction to the R package gss for nonparametric statistical model...
DLM was funded by OPNAV N45 and the SURTASS LFA Settlement Agreement, being managed by the U.S. Navy...
Recent work by Reiss and Ogden provides a theoretical basis for sometimes preferring restricted maxi...
The validity of estimation and smoothing parameter selection for the wide class of generalized addit...
We describe procedures for Bayesian estimation and testing in cross-sectional, panel data and nonlin...
Regression models describingthe dependence between a univariate response and a set of covariates pla...
In likelihood-based approaches to robustify state space models, Gaussian error distributions are rep...
<p>The current parameterization and algorithm used to fit a smoothing spline analysis of variance (S...