Kernel selection is fundamental to the generalization performance of kernel-based learning algorithms. Approximate kernel selection is an efficient kernel selection approach that exploits the convergence property of the kernel selection criteria and the computational virtue of kernel matrix approximation. The convergence property is measured by the notion of approximate consistency. For the existing Nyström approximations, whose sampling distributions are independent of the specific learning task at hand, it is difficult to establish the strong approximate consistency. They mainly focus on the quality of the low-rank matrix approximation, rather than the performance of the kernel selection criterion used in conjunction with the approximate ...
Random Fourier features are a powerful framework to approximate shift invariant kernels with Monte C...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...
The Nyström method is an efficient technique for large-scale kernel learning. It provides a low-rank...
Kernel methods are widely used to address a variety of learning tasks including classification, regr...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
We investigate, theoretically and empirically, the effectiveness of kernel K-means++ samples as land...
Kernel methods have been successfully applied to many ma-chine learning problems. Nevertheless, sinc...
Low-rank matrix approximation is an effective tool in alleviating the memory and computational burde...
A problem for many kernel-based methods is that the amount of computation required to find the solut...
In this paper, we focus on improving the performance of the Nyström based kernel SVM. Although the N...
The selection of kernel function which determines the mapping between the input space and the featur...
Appropriate choice of a kernel is the most important ingredient of the kernel-based learning methods...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
Kernel methods are popular nonparametric modeling tools in machine learning. The Mercer kernel funct...
Random Fourier features are a powerful framework to approximate shift invariant kernels with Monte C...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...
The Nyström method is an efficient technique for large-scale kernel learning. It provides a low-rank...
Kernel methods are widely used to address a variety of learning tasks including classification, regr...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
We investigate, theoretically and empirically, the effectiveness of kernel K-means++ samples as land...
Kernel methods have been successfully applied to many ma-chine learning problems. Nevertheless, sinc...
Low-rank matrix approximation is an effective tool in alleviating the memory and computational burde...
A problem for many kernel-based methods is that the amount of computation required to find the solut...
In this paper, we focus on improving the performance of the Nyström based kernel SVM. Although the N...
The selection of kernel function which determines the mapping between the input space and the featur...
Appropriate choice of a kernel is the most important ingredient of the kernel-based learning methods...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
Kernel methods are popular nonparametric modeling tools in machine learning. The Mercer kernel funct...
Random Fourier features are a powerful framework to approximate shift invariant kernels with Monte C...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...