A simple parametrization, built from the definition of cubic splines, is shown to facilitate the implementation and interpretation of penalized spline models, whatever configuration of knots is used. The parametrization is termed value-first derivative parametrization. Inference is Bayesian and explores the natural link between quadratic penalties and Gaussian priors. However, a full Bayesian analysis seems feasible only for some penalty functionals. Alternatives include empirical Bayes inference methods involving model selection type criteria. The proposed methodology is illustrated by an application to survival analysis where the usual Cox model is extended to allow for time-varying regression coefficients. (C) 2008 Elsevier B. V. All rig...
peer reviewedaudience: researcher, professionalNonlinear (systems of) ordinary differential equation...
An increasingly popular method for fitting complex models, particularly with a hierchical structure ...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
In this paper we show how a simple parametrization, built from the definition of cubic splines, can...
Methods for fitting survival regression models with a penalized smoothed hazard function have been r...
Kauermann G. Penalized spline smoothing in multivariable survival models with varying coefficients. ...
Modelling survival data with splines is a project supervised by Dr Julian Stander from the Centre fo...
We describe and contrast several different bootstrapping procedures for penalized spline smoothers. ...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
In the analysis of survival data, it is usually assumed that any unit will experience the event of i...
In Bayesian statistics, a general and widely used approach to extract information from (complex) pos...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
Penalized splines approach has very important applications in statistics. The idea is to fit the unk...
We discuss the use of Bayesian P-spline and of the composite link model to estimate survival functio...
peer reviewedaudience: researcher, professionalNonlinear (systems of) ordinary differential equation...
An increasingly popular method for fitting complex models, particularly with a hierchical structure ...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
In this paper we show how a simple parametrization, built from the definition of cubic splines, can...
Methods for fitting survival regression models with a penalized smoothed hazard function have been r...
Kauermann G. Penalized spline smoothing in multivariable survival models with varying coefficients. ...
Modelling survival data with splines is a project supervised by Dr Julian Stander from the Centre fo...
We describe and contrast several different bootstrapping procedures for penalized spline smoothers. ...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
In the analysis of survival data, it is usually assumed that any unit will experience the event of i...
In Bayesian statistics, a general and widely used approach to extract information from (complex) pos...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
Penalized splines approach has very important applications in statistics. The idea is to fit the unk...
We discuss the use of Bayesian P-spline and of the composite link model to estimate survival functio...
peer reviewedaudience: researcher, professionalNonlinear (systems of) ordinary differential equation...
An increasingly popular method for fitting complex models, particularly with a hierchical structure ...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...