When functional data are observed on parts of the domain, it is of interest to recover the missing parts of curves. Kraus (2015) proposed a linear reconstruction method based on ridge regularization. Kneip and Liebl (2019) argue that an assumption under which Kraus (2015) established the consistency of the ridge method is too restrictive and propose a principal component reconstruction method that they prove to be asymptotically optimal. In this note we relax the restrictive assumption that the true best linear reconstruction operator is Hilbert–Schmidt and prove that the ridge method achieves asymptotic optimality under essentially no assumptions. The result is illustrated in a simulation study
Most of the inverse problems arising in applied electromagnetics come from an underdetermined direct...
Recent extensive numerical experiments in high scale machine learning have allowed to uncover a quit...
AbstractIn this paper we present a novel algorithm to optimize the reconstruction from non-uniform p...
When functional data are observed on parts of the domain, it is of interest to recover the missing p...
We consider the problem of estimating the slope function in a functional regression with a scalar re...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
Most of the inverse problems arising in applied electromagnetics come from an underdetermined direct...
Why is ridge regression (RR) often a useful method even in cases where multiple linear regression (M...
We study reconstruction operators on a Hilbert space that are exact on a given reconstruction subspa...
We analyze the prediction error of ridge re- gression in an asymptotic regime where the sample size ...
. This paper surveys certain aspects of the study of ridge functions. We hope it will also encourage...
We consider a model problem of recovering a function $f(x_1,x_2)$ from noisy Radon data. The functio...
Curve reconstruction algorithms are supposed to reconstruct curves from point samples. Recent papers...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
abstract: In applications such as Magnetic Resonance Imaging (MRI), data are acquired as Fourier sam...
Most of the inverse problems arising in applied electromagnetics come from an underdetermined direct...
Recent extensive numerical experiments in high scale machine learning have allowed to uncover a quit...
AbstractIn this paper we present a novel algorithm to optimize the reconstruction from non-uniform p...
When functional data are observed on parts of the domain, it is of interest to recover the missing p...
We consider the problem of estimating the slope function in a functional regression with a scalar re...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
Most of the inverse problems arising in applied electromagnetics come from an underdetermined direct...
Why is ridge regression (RR) often a useful method even in cases where multiple linear regression (M...
We study reconstruction operators on a Hilbert space that are exact on a given reconstruction subspa...
We analyze the prediction error of ridge re- gression in an asymptotic regime where the sample size ...
. This paper surveys certain aspects of the study of ridge functions. We hope it will also encourage...
We consider a model problem of recovering a function $f(x_1,x_2)$ from noisy Radon data. The functio...
Curve reconstruction algorithms are supposed to reconstruct curves from point samples. Recent papers...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
abstract: In applications such as Magnetic Resonance Imaging (MRI), data are acquired as Fourier sam...
Most of the inverse problems arising in applied electromagnetics come from an underdetermined direct...
Recent extensive numerical experiments in high scale machine learning have allowed to uncover a quit...
AbstractIn this paper we present a novel algorithm to optimize the reconstruction from non-uniform p...