We introduce an algorithm for reliably computing quantities associated with several types of semiparametric mixed models in situations where the condition number on the random effects matrix is large. The algorithm is numerically stable and efficient. It was designed to process penalized spline (P-spline) models without making unnecessary numerical approximations. The algorithm, PSQR (P-splines via QR), is formulated in terms of QR decompositions. PSQR can treat both exactly rank deficient and ill-conditioned matrices. The latter situation often arises in large scale mixed models and/or when a P-spline is estimated using a basis with poor numerical properties, e.g. a truncated power function (TPF) basis. We provide concrete examples where u...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
Graduation date: 2014We consider two semiparametric regression models for data analysis, the stochas...
We study the marginal longitudinal nonparametric regression problem and some of its semiparametric e...
Penalized splines approach has very important applications in statistics. The idea is to fit the unk...
An exposition on the use of O’Sullivan penalized splines in contemporary semiparamet-ric regression,...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
An exposition on the use of O'Sullivan penalized splines in contemporary semiparametric regression, ...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
We describe and contrast several different bootstrap procedures for penalized spline smoothers. The ...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
The paper discusses asymptotic properties of penalized spline smooth-ing if the spline basis increas...
In this paper we construct simultaneous confidence bands for a smooth curve using penalized spline e...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
Graduation date: 2014We consider two semiparametric regression models for data analysis, the stochas...
We study the marginal longitudinal nonparametric regression problem and some of its semiparametric e...
Penalized splines approach has very important applications in statistics. The idea is to fit the unk...
An exposition on the use of O’Sullivan penalized splines in contemporary semiparamet-ric regression,...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
An exposition on the use of O'Sullivan penalized splines in contemporary semiparametric regression, ...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...
P-splines were introduced by Eilers and Marx (1996). We consider semiparametric models where the smo...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
We describe and contrast several different bootstrap procedures for penalized spline smoothers. The ...
A new computational algorithm for estimating the smoothing parameters of a multidimensional penalize...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
The paper discusses asymptotic properties of penalized spline smooth-ing if the spline basis increas...
In this paper we construct simultaneous confidence bands for a smooth curve using penalized spline e...
Penalized splines can be viewed as BLUPs in a mixed model framework, which allows the use of mixed m...
Graduation date: 2014We consider two semiparametric regression models for data analysis, the stochas...
We study the marginal longitudinal nonparametric regression problem and some of its semiparametric e...