Laplace P-splines (LPS) combine the P-splines smoother and the Laplace approximation in a unifying framework for fast and flexible inference under the Bayesian paradigm. The Gaussian Markov random field prior assumed for penalized parameters and the Bernstein-von Mises theorem typically ensure a razor-sharp accuracy of the Laplace approximation to the posterior distribution of these quantities. This accuracy can be seriously compromised for some unpenalized parameters, especially when the information synthesized by the prior and the likelihood is sparse. Therefore, we propose a refined version of the LPS methodology by splitting the parameter space in two subsets. The first set involves parameters for which the joint posterior distribution ...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
Includes supplementary materials for the online appendix.We propose the approximate Laplace approxim...
Laplace P-splines (LPS) combine the P-splines smoother and the Laplace approximation in a unifying f...
Laplacian-P-splines (LPS) associate the P-splines smoother and the Laplace approximation in a unifyi...
In Bayesian statistics, a general and widely used approach to extract information from (complex) pos...
peer reviewedGeneralized additive models (GAMs) are a well-established statistical tool for modeling...
Generalized additive models (GAMs) are a well-established statistical tool for modeling complex nonl...
Multiple linear regression is among the cornerstones of statistical model building. Whether from a d...
Penalized B-splines are commonly used in additive models to describe smooth changes in a response wi...
Bayesian methods for flexible time-to-event models usually rely on the theory of Markov chain Monte ...
The potential important role of the prior distribution of the roughness penalty parameter in the res...
Bayesian methods for flexible time-to-event models usually rely on the theory of Markov chain Monte ...
An increasingly popular tool for nonparametric smoothing are penalized splines (P-splines) which use...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
Includes supplementary materials for the online appendix.We propose the approximate Laplace approxim...
Laplace P-splines (LPS) combine the P-splines smoother and the Laplace approximation in a unifying f...
Laplacian-P-splines (LPS) associate the P-splines smoother and the Laplace approximation in a unifyi...
In Bayesian statistics, a general and widely used approach to extract information from (complex) pos...
peer reviewedGeneralized additive models (GAMs) are a well-established statistical tool for modeling...
Generalized additive models (GAMs) are a well-established statistical tool for modeling complex nonl...
Multiple linear regression is among the cornerstones of statistical model building. Whether from a d...
Penalized B-splines are commonly used in additive models to describe smooth changes in a response wi...
Bayesian methods for flexible time-to-event models usually rely on the theory of Markov chain Monte ...
The potential important role of the prior distribution of the roughness penalty parameter in the res...
Bayesian methods for flexible time-to-event models usually rely on the theory of Markov chain Monte ...
An increasingly popular tool for nonparametric smoothing are penalized splines (P-splines) which use...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
Includes supplementary materials for the online appendix.We propose the approximate Laplace approxim...