In this paper we develop and study adaptive empirical Bayesian smoothing splines. These are smoothing splines with both smoothing parameter and penalty order determined via the empirical Bayes method from the marginal likelihood of the model. The selected order and smoothing parameter are used to construct adaptive credible sets with good frequentist coverage for the underlying regression function. We use these credible sets as a proxy to show the superior performance of adaptive empirical Bayesian smoothing splines compared to frequentist smoothing splines
Krivobokova T. Theoretical and practical aspects of penalized spline smoothing. Bielefeld (Germany):...
The necessity to replace smoothing approaches with a global amount of smoothing arises in a variety...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
In this paper we develop and study adaptive empirical Bayesian smoothing splines. These are smoothin...
Under the context of empirical bayes a prior density estimate is obtained by using B-splines. In thi...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
An increasingly popular tool for nonparametric smoothing are penalized splines (P-splines) which use...
The entire thesis text is included in the research.pdf file; the official abstract appears in the sh...
Regressions using variables categorized or listed numerically, like 1st one, 2nd one, etc. – such as...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
The smoothing spline is one of the most popular curve-fitting methods, partly because of empirical e...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
The potential important role of the prior distribution of the roughness penalty parameter in the res...
Krivobokova T. Theoretical and practical aspects of penalized spline smoothing. Bielefeld (Germany):...
The necessity to replace smoothing approaches with a global amount of smoothing arises in a variety...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
In this paper we develop and study adaptive empirical Bayesian smoothing splines. These are smoothin...
Under the context of empirical bayes a prior density estimate is obtained by using B-splines. In thi...
Flexible data regression is an important tool for capturing complicated trends in data. One approach...
An increasingly popular tool for nonparametric smoothing are penalized splines (P-splines) which use...
The entire thesis text is included in the research.pdf file; the official abstract appears in the sh...
Regressions using variables categorized or listed numerically, like 1st one, 2nd one, etc. – such as...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
The smoothing spline is one of the most popular curve-fitting methods, partly because of empirical e...
A Bayesian approach to nonparametric regression using Penalized splines (P-splines) is presented. Th...
In the context of adaptive nonparametric curve estimation problem, a common assumption is that a fun...
The potential important role of the prior distribution of the roughness penalty parameter in the res...
Krivobokova T. Theoretical and practical aspects of penalized spline smoothing. Bielefeld (Germany):...
The necessity to replace smoothing approaches with a global amount of smoothing arises in a variety...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...