International audienceWe consider supervised learning problems within the positive-definite kernel framework, such as kernel ridge regression, kernel logistic regression or the support vector machine. With kernels leading to infinite-dimensional feature spaces, a common practical limiting difficulty is the necessity of computing the kernel matrix, which most frequently leads to algorithms with running time at least quadratic in the number of observations n, i.e., O(n^2). Low-rank approximations of the kernel matrix are often considered as they allow the reduction of running time complexities to O(p^2 n), where p is the rank of the approximation. The practicality of such methods thus depends on the required rank p. In this paper, we show tha...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
We provide guarantees for approximate Gaussian Process (GP) regression resulting from two common low...
We are interested in a framework of online learning with kernels for low-dimensional but large-scale...
Kernel-based learning algorithms are well-known to poorly scale to large-scale applications. For suc...
International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-me...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
A general, {\em rectangular} kernel matrix may be defined as $K_{ij} = \kappa(x_i,y_j)$ where $\kapp...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
Low-rank matrix decompositions are essential tools in the application of kernel methods to large-s...
A problem for many kernel-based methods is that the amount of computation required to find the solu...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
International audienceWe present a novel approach to learn a kernel-based regression function. It is...
Kernel methods are a broad class of algorithms that are applied in a host of scientific computing fi...
Training Support Vector Machines (regression and/or classification) involves solving a simply constr...
We consider the random-design least-squares regression problem within the reproducing kernel Hilbert...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
We provide guarantees for approximate Gaussian Process (GP) regression resulting from two common low...
We are interested in a framework of online learning with kernels for low-dimensional but large-scale...
Kernel-based learning algorithms are well-known to poorly scale to large-scale applications. For suc...
International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-me...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
A general, {\em rectangular} kernel matrix may be defined as $K_{ij} = \kappa(x_i,y_j)$ where $\kapp...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
Low-rank matrix decompositions are essential tools in the application of kernel methods to large-s...
A problem for many kernel-based methods is that the amount of computation required to find the solu...
The scalability of kernel machines is a big chal-lenge when facing millions of samples due to storag...
International audienceWe present a novel approach to learn a kernel-based regression function. It is...
Kernel methods are a broad class of algorithms that are applied in a host of scientific computing fi...
Training Support Vector Machines (regression and/or classification) involves solving a simply constr...
We consider the random-design least-squares regression problem within the reproducing kernel Hilbert...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
We provide guarantees for approximate Gaussian Process (GP) regression resulting from two common low...
We are interested in a framework of online learning with kernels for low-dimensional but large-scale...