We describe how cross-kernel matrices, that is, kernel matrices between the data and a custom chosen set of `feature spanning points' can be used for learning. The main potential of cross-kernels lies in the fact that (a) only one side of the matrix scales with the number of data points, and (b) cross-kernels, as opposed to the usual kernel matrices, can be used to certify for the data manifold. Our theoretical framework, which is based on a duality involving the feature space and vanishing ideals, indicates that cross-kernels have the potential to be used for any kind of kernel learning. We present a novel algorithm, Ideal PCA (IPCA), which cross-kernelizes PCA. We demonstrate on real and synthetic data that IPCA allows to (a) obtain PCA-l...
Data understanding is an iterative process in which domain experts combine their knowledge with the ...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
As a powerful nonlinear feature extractor, kernel principal component analysis (KPCA) has been widel...
We describe how cross-kernel matrices, that is, kernel matrices between the data and a custom chosen...
We show that the relevant information of a supervised learning problem is contained up to negligible...
In kernel methods, choosing a suitable kernel is indispensable for favorable results. No well-founde...
We describe recent developments and results of statistical learning theory. In the framework of lear...
We describe recent developments and results of statistical learning theory. In the framework of lear...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
In many applications it is desirable to learn from several kernels. "Multiple kernel learning" (MKL)...
Data understanding is an iterative process in which domain experts combine their knowledge with the ...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
As a powerful nonlinear feature extractor, kernel principal component analysis (KPCA) has been widel...
We describe how cross-kernel matrices, that is, kernel matrices between the data and a custom chosen...
We show that the relevant information of a supervised learning problem is contained up to negligible...
In kernel methods, choosing a suitable kernel is indispensable for favorable results. No well-founde...
We describe recent developments and results of statistical learning theory. In the framework of lear...
We describe recent developments and results of statistical learning theory. In the framework of lear...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
The last years have witnessed an increasing interest in Support Vector (SV) machines, which use Merc...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
In many applications it is desirable to learn from several kernels. "Multiple kernel learning" (MKL)...
Data understanding is an iterative process in which domain experts combine their knowledge with the ...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
As a powerful nonlinear feature extractor, kernel principal component analysis (KPCA) has been widel...