Hardcover

$99.00 
  • SHIP THIS ITEM
    Qualifies for Free Shipping
  • PICK UP IN STORE
    Check Availability at Nearby Stores

Related collections and offers


Overview

The IMA Workshop on Evolutionary Algorithms brought together many of the top researchers in the area of Evolutionary Computation for a week of intensive interaction. The field of Evolutionary Computation has developed significantly over the past 30 years and today consists of a variety of subfields such as genetic algorithms, evolution strategies, evolutionary programming, and genetic programming, each with its own algorithmic perspectives and goals. The workshop did a great deal to clarify the current state of the theory of Evolutionary Algorithms. The existing theory might be characterized as deriving from two principal approaches. There is a high level macro-theory that looks at the processing of "building blocks" and "schemata" that are shared by many good solutions when searching a problem space. There is also a low level micro-theory that builds exact Markov models of the search process. It is sometimes hard for researchers working at such different levels of abstraction to interact. The IMA workshop allowed researchers working at these different levels to present their points of view and to move toward common ground. There was real progress in communication between theorists and practitioners in the evolutionary computation field. Speakers presented applications across a wide range of problem areas. In some of those cases, theoretically motivated methods work quite well. In other cases, practitioners used domain-based methods to obtain better performance than could be achieved by using a "pure" evolutionary algorithm. Individuals on both sides went away with a better appreciation of the successes and failures of current theory.


Product Details

ISBN-13: 9780387988269
Publisher: Springer-Verlag New York, LLC
Publication date: 06/28/1999
Series: IMA Volumes in Mathematics and Its Appli , #111
Pages: 293
Product dimensions: 6.14(w) x 9.21(h) x 0.75(d)

Table of Contents

v. 111
Foreword
Preface
Genetic algorithms as multi-coordinators in large-scale optimization
Ioannis T. Christou, Wayne Martin, Robert R. Meyer
Telecommunication network optimization with genetic algorithms: A decade of practice
Lawrence Davis
Using evolutionary algorithms to search for control parameters in a nonlinear partial differential equation
Rogene M. Eichler West, Erik De Schutter, George L. Wilcox
Applying genetic algorithms to real-world problems
Emanuel Falkenauer
An overview of evolutionary programming
David B. Fogel
A hierarchical genetic algorithm for system identification and curve fitting with a supercomputer implementation
Mehmet Gulsen, Alice E. Smith
Experiences with the PGAPack parallel genetic algorithm library
David Levine, Philip Hallstrom, David Noelle, (et al.)
The significance of the evaluation function in evolutionary algorithms
Zbigniew Michalewicz
Genetic algorithm optimization of atomic clusters
J. R. Morris, D. M. Deaven, K. M. Ho, (et al.)
Search, binary representations and counting optima
Soraya Rana, L. Darrell Whitley
An investigation of GA performance results for different cardinality alphabets
Jackie Rees, Gary J. Koehler
Genetic algorithms and the design of experiments
Colin R. Reeves, Christine C. Wright
Efficient parameter optimization based on combination of direct global and local search methods
Michael Syrjakow, Helena Szczerbicka
What are genetic algorithms? A mathematical perspective
Michael D. Vose
Survey of projects involving evolutionary algorithms sponsored by the Electric Power Research Institute
A. Martin Wildberg
From the B&N Reads Blog

Customer Reviews