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Algorithmic Learning in a Random World

Authors: Vovk, Vladimir, Gammerman, Alexander, Shafer, Glenn

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  • ISBN 978-0-387-25061-8
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Hardcover $179.00
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  • ISBN 978-0-387-00152-4
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Softcover $179.00
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  • ISBN 978-1-4419-3471-0
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About this book

Conformal prediction is a valuable new method of machine learning. Conformal predictors are among the most accurate methods of machine learning, and unlike other state-of-the-art methods, they provide information about their own accuracy and reliability.

This new monograph integrates mathematical theory and revealing experimental work. It demonstrates mathematically the validity of the reliability claimed by conformal predictors when they are applied to independent and identically distributed data, and it confirms experimentally that the accuracy is sufficient for many practical problems. Later chapters generalize these results to models called repetitive structures, which originate in the algorithmic theory of randomness and statistical physics. The approach is flexible enough to incorporate most existing methods of machine learning, including newer methods such as boosting and support vector machines and older methods such as nearest neighbors and the bootstrap.

Topics and Features:

    * Describes how conformal predictors yield accurate and reliable predictions,    complemented with quantitative measures of their accuracy and reliability

    * Handles both classification and regression problems

    * Explains how to apply the new algorithms to real-world data sets

    * Demonstrates the infeasibility of some standard prediction tasks

    * Explains connections with Kolmogorov’s algorithmic randomness, recent work in machine learning, and older work in statistics

   * Develops new methods of probability forecasting and shows how to use them for prediction in causal networks

 

Researchers in computer science, statistics, and artificial intelligence will find the book an authoritative and rigorous treatment of some of the most promising new developments in machine learning. Practitioners and students in all areas of research that use quantitative prediction or machine learning will learn about important new methods.

Reviews

From the reviews:

"Algorithmic Learning in a Random World has ten chapters, three appendices, and extensive references. Each chapter ends with a section containing comments, historical discussion, and bibliographical remarks. … The material is developed well and reasonably easy to follow … . the text is very readable. … is doubtless an important reference summarizing a large body of work by the authors and their graduate students. Academics involved with new implementations and empirical studies of machine learning techniques may find it useful too." (James Law, SIGACT News, Vol. 37 (4), 2006)


Table of contents (1 chapters)

Buy this book

eBook $139.00
price for USA
  • ISBN 978-0-387-25061-8
  • Digitally watermarked, DRM-free
  • Included format: PDF
  • ebooks can be used on all reading devices
  • Download immediately after purchase
Hardcover $179.00
price for USA
  • ISBN 978-0-387-00152-4
  • Free shipping for individuals worldwide
  • Usually dispatched within 3 to 5 business days.
Softcover $179.00
price for USA
  • ISBN 978-1-4419-3471-0
  • Free shipping for individuals worldwide
  • Usually dispatched within 3 to 5 business days.

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Bibliographic Information

Bibliographic Information
Book Title
Algorithmic Learning in a Random World
Authors
Copyright
2005
Publisher
Springer US
Copyright Holder
Springer-Verlag US
eBook ISBN
978-0-387-25061-8
DOI
10.1007/b106715
Hardcover ISBN
978-0-387-00152-4
Softcover ISBN
978-1-4419-3471-0
Edition Number
1
Number of Pages
XVI, 324
Number of Illustrations and Tables
62 b/w illustrations
Topics