Kernel-based methods in Numerical Analysis have the advantage of yielding optimal recovery processes in the “native” Hilbert space ℋ in which they are reproducing. Continuous kernels on compact domains have an expansion into eigenfunctions that are both L2-orthonormal and orthogonal in ℋ (Mercer expansion). This paper examines the corresponding eigenspaces and proves that they have optimality properties among all other subspaces of ℋ. These results have strong connections to n-widths in Approximation Theory, and they establish that errors of optimal approximations are closely related to the decay of the eigenvalues. Though the eigenspaces and eigenvalues are not readily available, they can be well approximated using the standard n-dimension...
© Published under licence by IOP Publishing Ltd.The eigenvalue problem for a compact symmetric posit...
This paper presents a non-asymptotic statistical analysis of Kernel-PCA with a focus different from ...
AbstractWe study the worst case setting for approximation of d variate functions from a general repr...
Kernel-based approximation methods provide optimal recovery procedures in the native Hilbert spaces ...
AbstractFor interpolation of smooth functions by smooth kernels having an expansion into eigenfuncti...
A general framework for function approximation from finite data is presented based on reproducing ke...
© 2015, Pleiades Publishing, Ltd. We study an eigenvalue problem with a nonlinear dependence on the ...
AbstractThis is the second part of a paper that deals with error estimates for the Rayleigh–Ritz app...
International audienceThis paper presents a non-asymptotic statistical analysis of Kernel-PCA with a...
The eigenvalues of the kernel matrix play an important role in a number of kernel methods, in parti...
We study approximations of eigenvalue problems for integral operators associated with kernel functio...
Abstract. A linear operator on a Hilbert space may be approximated with finite matrices by choosing ...
A reproducing kernel Hilbert space (RKHS) approximation problem arising from learning theory is inve...
This work is concerned with derivation and analysis of a modified vectorial kernel orthogonal greedy...
We consider the approximation of eigenfunctions of a compact integral operator with a smooth kernel ...
© Published under licence by IOP Publishing Ltd.The eigenvalue problem for a compact symmetric posit...
This paper presents a non-asymptotic statistical analysis of Kernel-PCA with a focus different from ...
AbstractWe study the worst case setting for approximation of d variate functions from a general repr...
Kernel-based approximation methods provide optimal recovery procedures in the native Hilbert spaces ...
AbstractFor interpolation of smooth functions by smooth kernels having an expansion into eigenfuncti...
A general framework for function approximation from finite data is presented based on reproducing ke...
© 2015, Pleiades Publishing, Ltd. We study an eigenvalue problem with a nonlinear dependence on the ...
AbstractThis is the second part of a paper that deals with error estimates for the Rayleigh–Ritz app...
International audienceThis paper presents a non-asymptotic statistical analysis of Kernel-PCA with a...
The eigenvalues of the kernel matrix play an important role in a number of kernel methods, in parti...
We study approximations of eigenvalue problems for integral operators associated with kernel functio...
Abstract. A linear operator on a Hilbert space may be approximated with finite matrices by choosing ...
A reproducing kernel Hilbert space (RKHS) approximation problem arising from learning theory is inve...
This work is concerned with derivation and analysis of a modified vectorial kernel orthogonal greedy...
We consider the approximation of eigenfunctions of a compact integral operator with a smooth kernel ...
© Published under licence by IOP Publishing Ltd.The eigenvalue problem for a compact symmetric posit...
This paper presents a non-asymptotic statistical analysis of Kernel-PCA with a focus different from ...
AbstractWe study the worst case setting for approximation of d variate functions from a general repr...