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Learning from data : concepts, theory, and methods / Vladimir Cherkassky, Filip Mulier.

By: Contributor(s): Material type: TextTextPublisher: Hoboken, New Jersey : IEEE Press : c2007Edition: 2nd edDescription: 1 PDF (xviii, 538 pages) : illustrationsContent type:
  • text
Media type:
  • electronic
Carrier type:
  • online resource
ISBN:
  • 9780470140529
Subject(s): Genre/Form: Additional physical formats: Print version:: No titleDDC classification:
  • 006.3/1
Online resources: Also available in print.
Contents:
Problem statement, classical approaches, and adaptive learning -- Regularization framework -- Statistical learning theory -- Nonlinear optimization strategies -- Methods for data reduction and dimensionality reduction -- Methods for regression -- Classification -- Support vector machines -- Noninductive inference and alternative learning formulations.
Summary: An interdisciplinary framework for learning methodologies--covering statistics, neural networks, and fuzzy logic, this book provides a unified treatment of the principles and methods for learning dependencies from data. It establishes a general conceptual framework in which various learning methods from statistics, neural networks, and fuzzy logic can be applied--showing that a few fundamental principles underlie most new methods being proposed today in statistics, engineering, and computer science. Complete with over one hundred illustrations, case studies, and examples making this an invaluable text.
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Includes bibliographical references (p. 519-531) and index.

Problem statement, classical approaches, and adaptive learning -- Regularization framework -- Statistical learning theory -- Nonlinear optimization strategies -- Methods for data reduction and dimensionality reduction -- Methods for regression -- Classification -- Support vector machines -- Noninductive inference and alternative learning formulations.

Restricted to subscribers or individual electronic text purchasers.

An interdisciplinary framework for learning methodologies--covering statistics, neural networks, and fuzzy logic, this book provides a unified treatment of the principles and methods for learning dependencies from data. It establishes a general conceptual framework in which various learning methods from statistics, neural networks, and fuzzy logic can be applied--showing that a few fundamental principles underlie most new methods being proposed today in statistics, engineering, and computer science. Complete with over one hundred illustrations, case studies, and examples making this an invaluable text.

Also available in print.

Electronic reproduction. Piscataway, N.J. : IEEE, 2010. Mode of access: World Wide Web. System requirements: Web browser. Title from title screen (viewed on Oct. 7, 2010). Access may be restricted to users at subscribing institutions.

Mode of access: World Wide Web.

Description based on PDF viewed 12/19/2015.

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