9781402036668-1402036663-Foundations of Generic Optimization: Volume 1: A Combinatorial Approach to Epistasis (Mathematical Modelling: Theory and Applications, 20)

Foundations of Generic Optimization: Volume 1: A Combinatorial Approach to Epistasis (Mathematical Modelling: Theory and Applications, 20)

ISBN-13: 9781402036668
ISBN-10: 1402036663
Edition: 2005
Author: R. Lowen, A. Verschoren, M. Iglesias, B. Naudts, C. Vidal
Publication date: 2005
Publisher: Springer
Format: Hardcover 311 pages
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Book details

ISBN-13: 9781402036668
ISBN-10: 1402036663
Edition: 2005
Author: R. Lowen, A. Verschoren, M. Iglesias, B. Naudts, C. Vidal
Publication date: 2005
Publisher: Springer
Format: Hardcover 311 pages

Summary

Foundations of Generic Optimization: Volume 1: A Combinatorial Approach to Epistasis (Mathematical Modelling: Theory and Applications, 20) (ISBN-13: 9781402036668 and ISBN-10: 1402036663), written by authors R. Lowen, A. Verschoren, M. Iglesias, B. Naudts, C. Vidal, was published by Springer in 2005. With an overall rating of 3.7 stars, it's a notable title among other books. You can easily purchase or rent Foundations of Generic Optimization: Volume 1: A Combinatorial Approach to Epistasis (Mathematical Modelling: Theory and Applications, 20) (Hardcover) from BooksRun, along with many other new and used books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

The success of a genetic algorithm when applied to an optimization problem depends upon several features present or absent in the problem to be solved, including the quality of the encoding of data, the geometric structure of the search space, deception or epistasis. This book deals essentially with the latter notion, presenting for the first time a complete state-of-the-art research on this notion, in a structured completely self-contained and methodical way.

In particular, it contains a refresher on the linear algebra used in the text as well as an elementary introductory chapter on genetic algorithms aimed at readers unacquainted with this notion.

In this way, the monograph aims to serve a broad audience consisting of graduate and advanced undergraduate students in mathematics and computer science, as well as researchers working in the domains of optimization, artificial intelligence, theoretical computer science, combinatorics and evolutionary algorithms.

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