The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to kernel methods in that it is used by classical approaches (e.g., when centering a kernel PCA matrix), and it also forms the core inference step of modern kernel methods (e.g., kernel-based non-parametric tests) that rely on em-bedding probability distributions in RKHSs. Previous work [1] has shown that shrinkage can help in constructing “better ” estimators of the kernel mean than the empirical estimator. The present paper studies the consistency and admissibility of the estimators in [1], and proposes a wider class of shrinkage estimators that improve upon the empirical estimator by considering appropriate basis functions. Using the kernel ...
Kernel methods are one of the mainstays of machine learning, but the problem of kernel learning rema...
We provide a theoretical foundation for non-parametrically estimating functions of random variables ...
A new class of kernels for long-run variance and spectral density estimation is developed by exponen...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
A mean function in a reproducing kernel Hilbert space (RKHS), or a kernel mean, is central to kernel...
A mean function in reproducing kernel Hilbert space, or a kernel mean, is an important part of many ...
Our work shows that estimating the mean in a feature space induced by certain1 kinds of kernels is t...
Cross-covariance operators arise naturally in many applications using Reproducing Kernel Hilbert Spa...
International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-me...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
Kernel methods refer to a family of widely used nonlinear algorithms for ma-chine learning tasks lik...
This poster presented that estimating the mean in the feature space with the RBF kernel, is like doi...
The paper studies convex stochastic optimization problems in a reproducing kernel Hilbert space (RKH...
We provide a theoretical foundation for non-parametrically estimating functions of random variables ...
Kernel methods are one of the mainstays of machine learning, but the problem of kernel learning rema...
We provide a theoretical foundation for non-parametrically estimating functions of random variables ...
A new class of kernels for long-run variance and spectral density estimation is developed by exponen...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
A mean function in a reproducing kernel Hilbert space (RKHS), or a kernel mean, is central to kernel...
A mean function in reproducing kernel Hilbert space, or a kernel mean, is an important part of many ...
Our work shows that estimating the mean in a feature space induced by certain1 kinds of kernels is t...
Cross-covariance operators arise naturally in many applications using Reproducing Kernel Hilbert Spa...
International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-me...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
Kernel methods refer to a family of widely used nonlinear algorithms for ma-chine learning tasks lik...
This poster presented that estimating the mean in the feature space with the RBF kernel, is like doi...
The paper studies convex stochastic optimization problems in a reproducing kernel Hilbert space (RKH...
We provide a theoretical foundation for non-parametrically estimating functions of random variables ...
Kernel methods are one of the mainstays of machine learning, but the problem of kernel learning rema...
We provide a theoretical foundation for non-parametrically estimating functions of random variables ...
A new class of kernels for long-run variance and spectral density estimation is developed by exponen...