Kernel Mean Embedding of Distributions

Kernel Mean Embedding of Distributions
Author: Krikamol Muandet
Publisher:
Total Pages: 141
Release: 2017
Genre: Hilbert space
ISBN: 9781680832891

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A Hilbert space embedding of a distribution--in short, a kernel mean embedding--has recently emerged as a powerful tool for machine learning and statistical inference. The basic idea behind this framework is to map distributions into a reproducing kernel Hilbert space (RKHS) in which the whole arsenal of kernel methods can be extended to probability measures. It can be viewed as a generalization of the original "feature map" common to support vector machines (SVMs) and other kernel methods. In addition to the classical applications of kernel methods, the kernel mean embedding has found novel applications in fields ranging from probabilistic modeling to statistical inference, causal discovery, and deep learning. This survey aims to give a comprehensive review of existing work and recent advances in this research area, and to discuss challenging issues and open problems that could potentially lead to new research directions. The survey begins with a brief introduction to the RKHS and positive definite kernels which forms the backbone of this survey, followed by a thorough discussion of the Hilbert space embedding of marginal distributions, theoretical guarantees, and a review of its applications. The embedding of distributions enables us to apply RKHS methods to probability measures which prompts a wide range of applications such as kernel two-sample testing, independent testing, and learning on distributional data. Next, we discuss the Hilbert space embedding for conditional distributions, give theoretical insights, and review some applications. The conditional mean embedding enables us to perform sum, product, and Bayes' rules--which are ubiquitous in graphical model, probabilistic inference, and reinforcement learning-- in a non-parametric way using this new representation of distributions. We then discuss relationships between this framework and other related areas. Lastly, we give some suggestions on future research directions.


Kernel Mean Embedding of Distributions
Language: en
Pages: 141
Authors: Krikamol Muandet
Categories: Hilbert space
Type: BOOK - Published: 2017 - Publisher:

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A Hilbert space embedding of a distribution--in short, a kernel mean embedding--has recently emerged as a powerful tool for machine learning and statistical inf
Kernel Mean Embedding of Distributions
Language: en
Pages: 154
Authors: Krikamol Muandet
Categories: Computers
Type: BOOK - Published: 2017-06-28 - Publisher:

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Provides a comprehensive review of kernel mean embeddings of distributions and, in the course of doing so, discusses some challenging issues that could potentia
From Points to Probability Measures
Language: en
Pages:
Authors: Krikamol Muandet
Categories: Learning
Type: BOOK - Published: 2015 - Publisher:

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Algorithmic Learning Theory
Language: en
Pages: 415
Authors: Marcus Hutter
Categories: Computers
Type: BOOK - Published: 2007-09-17 - Publisher: Springer Science & Business Media

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This book constitutes the refereed proceedings of the 18th International Conference on Algorithmic Learning Theory, ALT 2007, held in Sendai, Japan, October 1-4
Reproducing Kernel Hilbert Spaces in Probability and Statistics
Language: en
Pages: 369
Authors: Alain Berlinet
Categories: Business & Economics
Type: BOOK - Published: 2011-06-28 - Publisher: Springer Science & Business Media

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The book covers theoretical questions including the latest extension of the formalism, and computational issues and focuses on some of the more fruitful and pro