We consider the problem of reconstructing a function from a finite set of noise-corrupted samples. Two kernel algorithms are analyzed, namely kernel ridge regression and epsilon-support vector regression. By assuming the ground-truth function belongs to the reproducing kernel Hilbert space of the chosen kernel, and the measurement noise affecting the dataset is bounded, we adopt an approximation theory viewpoint to establish deterministic, finite-sample error bounds for the two models. Finally, we discuss their connection with Gaussian processes and two numerical examples are provided. In establishing our inequalities, we hope to help bring the fields of non-parametric kernel learning and system identification for robust control closer to e...
We consider online learning in a Reproducing Kernel Hilbert Space. Our method is computationally eff...
Consider the problem of learning a kernel for use in SVM classification. We bound the estimation err...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
Abstract: New non-asymptotic uniform error bounds for approximating func-tions in reproducing kernel...
The paper studies convex stochastic optimization problems in a reproducing kernel Hilbert space (RKH...
We study online learning when individual instances are corrupted by adversarially chosen random nois...
Optimal local estimation is formulated in the minimax sense for inverse problems and nonlinear regre...
Learning from data under constraints on model complexity is studied in terms of rates of approximate...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
The function estimation in RKHS (Reproducing Kernel Hilbert Space) from finite noisy samples is a ty...
How many training data are needed to learn a supervised task? It is often observed that the generali...
AbstractA standard assumption in theoretical study of learning algorithms for regression is uniform ...
We consider the problem of kernel classification. Works on kernel regression have shown that the rat...
A kernel-based nonparametric approach to identification of linear systems in the presence of bounded...
We consider online learning in a Reproducing Kernel Hilbert Space. Our method is computationally eff...
Consider the problem of learning a kernel for use in SVM classification. We bound the estimation err...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
Abstract: New non-asymptotic uniform error bounds for approximating func-tions in reproducing kernel...
The paper studies convex stochastic optimization problems in a reproducing kernel Hilbert space (RKH...
We study online learning when individual instances are corrupted by adversarially chosen random nois...
Optimal local estimation is formulated in the minimax sense for inverse problems and nonlinear regre...
Learning from data under constraints on model complexity is studied in terms of rates of approximate...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Kernel approximation is commonly used to scale kernel-based algorithms to applications contain-ing a...
The function estimation in RKHS (Reproducing Kernel Hilbert Space) from finite noisy samples is a ty...
How many training data are needed to learn a supervised task? It is often observed that the generali...
AbstractA standard assumption in theoretical study of learning algorithms for regression is uniform ...
We consider the problem of kernel classification. Works on kernel regression have shown that the rat...
A kernel-based nonparametric approach to identification of linear systems in the presence of bounded...
We consider online learning in a Reproducing Kernel Hilbert Space. Our method is computationally eff...
Consider the problem of learning a kernel for use in SVM classification. We bound the estimation err...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...