Kernel Mean Embedding of Distributions: A Review and Beyond
| AUTHOR | Sriperumbudur, Bharath; Fukumizu, Kenji; Muandet, Krikamol |
| PUBLISHER | Now Publishers (06/28/2017) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
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 ?elds ranging from probabilistic modeling to statistical inference, causal discovery, and deep learning. Kernel Mean Embedding of Distributions: A Review and Beyond provides a comprehensive review of existing work and recent advances in this research area, and to discuss some of the most challenging issues and open problems that could potentially lead to new research directions. The targeted audience includes graduate students and researchers in machine learning and statistics who are interested in the theory and applications of kernel mean embeddings.
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Product Format
Product Details
ISBN-13:
9781680832884
ISBN-10:
1680832883
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
More Product Details
Page Count:
154
Carton Quantity:
50
Product Dimensions:
6.14 x 0.33 x 9.21 inches
Weight:
0.50 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Computers | Computer Science
Computers | Machine Theory
Descriptions, Reviews, Etc.
publisher marketing
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 ?elds ranging from probabilistic modeling to statistical inference, causal discovery, and deep learning. Kernel Mean Embedding of Distributions: A Review and Beyond provides a comprehensive review of existing work and recent advances in this research area, and to discuss some of the most challenging issues and open problems that could potentially lead to new research directions. The targeted audience includes graduate students and researchers in machine learning and statistics who are interested in the theory and applications of kernel mean embeddings.
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