In Machine Learning algorithms, one of the crucial issues is the representation of the data. As the given data source become heterogeneous and the data are large-scale, multiple kernel methods help to classify "nonlinear data". Nevertheless, the finite combinations of kernels are limited up to a finite choice. In order to overcome this discrepancy, a novel method of "infinite" kernel combinations is proposed with the help of infinite and semi-infinite programming regarding all elements in kernel space. Looking at all infinitesimally fine convex combinations of the kernels from the infinite kernel set, the margin is maximized subject to an infinite number of constraints with a compact index set and an additional (Riemann-Stieltjes) integral ...
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...
In this paper we provide a finite-sample and an infinite-sample representer theorem for the concaten...
As data become heterogeneous, multiple kernel learning methods may help to classify them. To overcom...
In recent years, learning methods are desirable because of their reliability and efficiency in real-...
Machine learning, Infinite kernel learning, Semi-infinite optimization, Infinite programming, Suppor...
In this paper we build upon the Multiple Kernel Learning (MKL) framework and in particular on [1] wh...
Kernel learning is a fundamental problem both in recent research and application of kernel methods....
This paper addresses the analysis of the problem of combining Infinite Kernel Learning (IKL) approac...
A subfield of artificial intelligence, machine learning (ML), is concerned with the development of a...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
We consider methods for the solution of large linear optimization problems, in particular so-called ...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
The interplay of machine learning (ML) and optimization methods is an emerging field of artificial i...
Regularized kernel discriminant analysis (RKDA) performs linear discriminant analysis in the fea-tur...
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...
In this paper we provide a finite-sample and an infinite-sample representer theorem for the concaten...
As data become heterogeneous, multiple kernel learning methods may help to classify them. To overcom...
In recent years, learning methods are desirable because of their reliability and efficiency in real-...
Machine learning, Infinite kernel learning, Semi-infinite optimization, Infinite programming, Suppor...
In this paper we build upon the Multiple Kernel Learning (MKL) framework and in particular on [1] wh...
Kernel learning is a fundamental problem both in recent research and application of kernel methods....
This paper addresses the analysis of the problem of combining Infinite Kernel Learning (IKL) approac...
A subfield of artificial intelligence, machine learning (ML), is concerned with the development of a...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
We consider methods for the solution of large linear optimization problems, in particular so-called ...
In many applications it is desirable to learn from several kernels. Multiple kernel learning (MKL)...
The interplay of machine learning (ML) and optimization methods is an emerging field of artificial i...
Regularized kernel discriminant analysis (RKDA) performs linear discriminant analysis in the fea-tur...
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...
In this paper we provide a finite-sample and an infinite-sample representer theorem for the concaten...