Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a straightforward and practical means of representing and comparing probabilities. In particular, the distance between embeddings (the maximum mean discrepancy, or MMD) has several key advantages over many classical metrics on distributions, namely easy computability, fast convergence and low bias of finite sample estimates. An important requirement of the embedding RKHS is that it be characteristic: in this case, the MMD between two distributions is zero if and only if the distributions coincide. Three new results on the MMD are introduced in the present study. First, it is established that MMD corresponds to the optimal risk of a kernel classif...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on probabi...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
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...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
Maximum mean discrepancy (MMD) is a kernelbased distance measure between probability distributions. ...
A Hilbert space embedding for probability measures has recently been proposed, with applications inc...
A Hilbert space embedding for probability measures has recently been proposed, with applications inc...
This tutorial will give an introduction to the recent understanding and methodology of the kernel me...
Many problems in unsupervised learning require the analysis of features of probability distributions...
Kernel mean embeddings are a popular tool that consists in representing probability measures by thei...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on proba...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on probabi...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on probabi...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
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...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
The notion of Hilbert space embedding of probability measures has recently been used in various stat...
Maximum mean discrepancy (MMD) is a kernelbased distance measure between probability distributions. ...
A Hilbert space embedding for probability measures has recently been proposed, with applications inc...
A Hilbert space embedding for probability measures has recently been proposed, with applications inc...
This tutorial will give an introduction to the recent understanding and methodology of the kernel me...
Many problems in unsupervised learning require the analysis of features of probability distributions...
Kernel mean embeddings are a popular tool that consists in representing probability measures by thei...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on proba...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on probabi...
We investigate the problem of defining Hilbertian metrics resp. positive definite kernels on probabi...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...
In this paper we define distance functions for data sets (and distributions) in a RKHS context. To ...