The kernel function plays a central role in kernel methods. Most existing methods can only adapt the kernel parameters or the kernel matrix based on empirical data. Recently, Ong et al. introduced the method of hyperkernels which can be used to learn the kernel function directly in an inductive setting. However, the associated optimization problem is a semidefinite program (SDP), which is very computationally expensive, even with the recent advances in interior point methods. In this paper, we show that this learning problem can be equivalently reformulated as a second-order cone program (SOCP), which can then be solved more efficiently than SDPs. Comparison is also made with the kernel matrix learning method proposed by Lanckriet et al. Ex...
Abstract — The goal of semisupervised kernel matrix learning (SS-KML) is to learn a kernel matrix on...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
Kernel Fisher discriminant analysis (KFDA) is a popular classification technique which requires the ...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
This paper addresses the problem of choosing a kernel suitable for estimation with a Support Vector ...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
We consider the problem of multiple kernel learning (MKL), which can be for-mulated as a convex-conc...
The kernel function plays a central role in kernel methods. In this paper, we consider the automated...
Regularized Kernel Discriminant Analysis (RKDA) performs linear discriminant analysis in the feature...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
Regularized Kernel Discriminant Analysis (RKDA) performs linear discriminant analysis in the feature...
Abstract — The goal of semisupervised kernel matrix learning (SS-KML) is to learn a kernel matrix on...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
Kernel Fisher discriminant analysis (KFDA) is a popular classification technique which requires the ...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
This paper addresses the problem of choosing a kernel suitable for estimation with a Support Vector ...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
We consider the problem of multiple kernel learning (MKL), which can be for-mulated as a convex-conc...
The kernel function plays a central role in kernel methods. In this paper, we consider the automated...
Regularized Kernel Discriminant Analysis (RKDA) performs linear discriminant analysis in the feature...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
Regularized Kernel Discriminant Analysis (RKDA) performs linear discriminant analysis in the feature...
Abstract — The goal of semisupervised kernel matrix learning (SS-KML) is to learn a kernel matrix on...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...
While classical kernel-based learning algorithms are based on a single kernel, in practice it is oft...