In Rd, it is well-known that cumulants provide an alternative to moments that can achieve the same goals with numerous benefits such as lower variance estimators. In this paper we extend cumulants to reproducing kernel Hilbert spaces (RKHS) using tools from tensor algebras and show that they are computationally tractable by a kernel trick. These kernelized cumulants provide a new set of all-purpose statistics; the classical maximum mean discrepancy and Hilbert-Schmidt independence criterion arise as the degree one objects in our general construction. We argue both theoretically and empirically (on synthetic, environmental, and traffic data analysis) that going beyond degree one has several advantages and can be achieved with the same comput...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
Abstract—The role of kernels is central to machine learning. Motivated by the importance of power-la...
Our work shows that estimating the mean in a feature space induced by certain1 kinds of kernels is t...
In Rd, it is well-known that cumulants provide an alternative to moments that can achieve the same g...
This tutorial will give an introduction to the recent understanding and methodology of the kernel me...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
International audienceMaximum mean discrepancy (MMD), also called energy distance or N-distance in s...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Maximum mean discrepancy (MMD) is a kernelbased distance measure between probability distributions. ...
Many problems in unsupervised learning require the analysis of features of probability distributions...
Kernel-based methods and their underlying structure of reproducing kernel Hilbert spaces (RKHS) are ...
While kernel methods are the basis of many popular techniques in supervised learning, they are less ...
The role of kernels is central to machine learning. Motivated by the importance of power-law distrib...
Kernel mean embeddings are a popular tool that consists in representing probability measures by thei...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
Abstract—The role of kernels is central to machine learning. Motivated by the importance of power-la...
Our work shows that estimating the mean in a feature space induced by certain1 kinds of kernels is t...
In Rd, it is well-known that cumulants provide an alternative to moments that can achieve the same g...
This tutorial will give an introduction to the recent understanding and methodology of the kernel me...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
International audienceMaximum mean discrepancy (MMD), also called energy distance or N-distance in s...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Maximum mean discrepancy (MMD) is a kernelbased distance measure between probability distributions. ...
Many problems in unsupervised learning require the analysis of features of probability distributions...
Kernel-based methods and their underlying structure of reproducing kernel Hilbert spaces (RKHS) are ...
While kernel methods are the basis of many popular techniques in supervised learning, they are less ...
The role of kernels is central to machine learning. Motivated by the importance of power-law distrib...
Kernel mean embeddings are a popular tool that consists in representing probability measures by thei...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
Abstract—The role of kernels is central to machine learning. Motivated by the importance of power-la...
Our work shows that estimating the mean in a feature space induced by certain1 kinds of kernels is t...