Mathematical Theory of Bayesian Statistics

Nonfiction, Science & Nature, Mathematics, Statistics
Cover of the book Mathematical Theory of Bayesian Statistics by Sumio Watanabe, CRC Press
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Sumio Watanabe ISBN: 9781315355696
Publisher: CRC Press Publication: April 27, 2018
Imprint: Chapman and Hall/CRC Language: English
Author: Sumio Watanabe
ISBN: 9781315355696
Publisher: CRC Press
Publication: April 27, 2018
Imprint: Chapman and Hall/CRC
Language: English

Mathematical Theory of Bayesian Statistics introduces the mathematical foundation of Bayesian inference which is well-known to be more accurate in many real-world problems than the maximum likelihood method. Recent research has uncovered several mathematical laws in Bayesian statistics, by which both the generalization loss and the marginal likelihood are estimated even if the posterior distribution cannot be approximated by any normal distribution.

Features

  • Explains Bayesian inference not subjectively but objectively.

    Provides a mathematical framework for conventional Bayesian theorems.

    Introduces and proves new theorems.

    Cross validation and information criteria of Bayesian statistics are studied from the mathematical point of view.

    Illustrates applications to several statistical problems, for example, model selection, hyperparameter optimization, and hypothesis tests.

This book provides basic introductions for students, researchers, and users of Bayesian statistics, as well as applied mathematicians.

Author

Sumio Watanabe is a professor of Department of Mathematical and Computing ScienceĀ at Tokyo Institute of Technology. He studies the relationship between algebraic geometry and mathematical statistics.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

Mathematical Theory of Bayesian Statistics introduces the mathematical foundation of Bayesian inference which is well-known to be more accurate in many real-world problems than the maximum likelihood method. Recent research has uncovered several mathematical laws in Bayesian statistics, by which both the generalization loss and the marginal likelihood are estimated even if the posterior distribution cannot be approximated by any normal distribution.

Features

This book provides basic introductions for students, researchers, and users of Bayesian statistics, as well as applied mathematicians.

Author

Sumio Watanabe is a professor of Department of Mathematical and Computing ScienceĀ at Tokyo Institute of Technology. He studies the relationship between algebraic geometry and mathematical statistics.

More books from CRC Press

Cover of the book Renewable Energy Systems by Sumio Watanabe
Cover of the book Response Control and Seismic Isolation of Buildings by Sumio Watanabe
Cover of the book Computational Intelligence Applications in Business Intelligence and Big Data Analytics by Sumio Watanabe
Cover of the book Engineering Risk and Hazard Assessment by Sumio Watanabe
Cover of the book Introduction to Modeling and Simulation with MATLAB® and Python by Sumio Watanabe
Cover of the book Handbook of Agricultural Productivity by Sumio Watanabe
Cover of the book Insect Cell Biotechnology by Sumio Watanabe
Cover of the book IT Project Management: A Geek's Guide to Leadership by Sumio Watanabe
Cover of the book Prenatal Assessment of Multiple Pregnancy by Sumio Watanabe
Cover of the book Diseases of Annual Edible Oilseed Crops by Sumio Watanabe
Cover of the book Host-Parasite Interactions by Sumio Watanabe
Cover of the book Analysis of Repeated Measures by Sumio Watanabe
Cover of the book From Internet of Things to Smart Cities by Sumio Watanabe
Cover of the book 3D Art Essentials by Sumio Watanabe
Cover of the book Rehabilitation by Sumio Watanabe
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy