Characteristic and Universal Tensor Product Kernels

08/28/2017
by   Zoltan Szabo, et al.
0

Kernel mean embeddings provide a versatile and powerful nonparametric representation of probability distributions with several fundamental applications in machine learning. Key to the success of the technique is whether the embedding is injective. This characteristic property of the underlying kernel ensures that probability distributions can be discriminated via their representations. In this paper, we consider kernels of tensor product type and various notions of characteristic property (including the one that captures joint independence of random variables) and provide a complete characterization for the corresponding embedding to be injective. This has applications, for example in independence measures such as Hilbert-Schmidt independence criterion (HSIC) to characterize the joint independence of multiple random variables.

READ FULL TEXT
research
01/25/2015

A simpler condition for consistency of a kernel independence test

A statistical test of independence may be constructed using the Hilbert-...
research
02/20/2023

Nyström M-Hilbert-Schmidt Independence Criterion

Kernel techniques are among the most popular and powerful approaches of ...
research
02/17/2022

Information Theory with Kernel Methods

We consider the analysis of probability distributions through their asso...
research
03/28/2014

Characteristic Kernels and Infinitely Divisible Distributions

We connect shift-invariant characteristic kernels to infinitely divisibl...
research
10/10/2021

Adaptive joint distribution learning

We develop a new framework for embedding (joint) probability distributio...
research
05/02/2012

Hypothesis testing using pairwise distances and associated kernels (with Appendix)

We provide a unifying framework linking two classes of statistics used i...
research
12/14/2017

Strictly proper kernel scores and characteristic kernels on compact spaces

Strictly proper kernel scores are well-known tool in probabilistic forec...

Please sign up or login with your details

Forgot password? Click here to reset