Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the problem of specifying a suitable function fn:[0, 1]¿ such that the data can be reasonably approximated by the points (ti, fn(ti)), i=1, ¿s, n. If a data set exhibits large variations in local behaviour, for example large peaks as in spectroscopy data, then the method must be able to adapt to the local changes in smoothness. Whilst many methods are able to accomplish this, they are less successful at adapting derivatives. In this paper we showed how the goal of local adaptivity of the function and its first and second derivatives can be attained in a simple manner using weighted smoothing splines. A residual-based concept of approximation is ...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
In some regression settings one would like to combine the flexibility of nonparametric smoothing wit...
We extend nonparametric regression smoothing splines to a context where there is endogeneity and ins...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
We propose a new method to find spatially adaptive smoothing splines. This new method breaks down th...
This paper considers the development of spatially adaptive smoothing splines for the esti-mation of ...
This paper considers the development of spatially adaptive smoothing splines for the esti-mation of ...
This paper proposes a numerically simple method for locally adaptive smooth-ing. The heterogeneous r...
This paper introduces a new nonparametric estimator based on penalized regression splines for linear...
Krivobokova T, Crainiceanu CM, Kauermann G. Fast adaptive penalized splines. JOURNAL OF COMPUTATIONA...
We propose a new regularization method called Loco-Spline for nonpara-metric function estimation. Lo...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
In some regression settings one would like to combine the flexibility of nonparametric smoothing wit...
We extend nonparametric regression smoothing splines to a context where there is endogeneity and ins...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
Given a data set (ti, yi), i=1, ¿s, n with ti¿[0, 1] non-parametric regression is concerned with the...
We propose a new method to find spatially adaptive smoothing splines. This new method breaks down th...
This paper considers the development of spatially adaptive smoothing splines for the esti-mation of ...
This paper considers the development of spatially adaptive smoothing splines for the esti-mation of ...
This paper proposes a numerically simple method for locally adaptive smooth-ing. The heterogeneous r...
This paper introduces a new nonparametric estimator based on penalized regression splines for linear...
Krivobokova T, Crainiceanu CM, Kauermann G. Fast adaptive penalized splines. JOURNAL OF COMPUTATIONA...
We propose a new regularization method called Loco-Spline for nonpara-metric function estimation. Lo...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
In some regression settings one would like to combine the flexibility of nonparametric smoothing wit...
We extend nonparametric regression smoothing splines to a context where there is endogeneity and ins...