Fr. 203.00

Genetic Programming Theory and Practice II

English · Paperback / Softback

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Description

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The work described in this book was first presented at the Second Workshop on Genetic Programming, Theory and Practice, organized by the Center for the Study of Complex Systems at the University of Michigan, Ann Arbor, 13-15 May 2004. The goal of this workshop series is to promote the exchange of research results and ideas between those who focus on Genetic Programming (GP) theory and those who focus on the application of GP to various re- world problems. In order to facilitate these interactions, the number of talks and participants was small and the time for discussion was large. Further, participants were asked to review each other's chapters before the workshop. Those reviewer comments, as well as discussion at the workshop, are reflected in the chapters presented in this book. Additional information about the workshop, addendums to chapters, and a site for continuing discussions by participants and by others can be found at We thank all the workshop participants for making the workshop an exciting and productive three days. In particular we thank all the authors, without whose hard work and creative talents, neither the workshop nor the book would be possible. We also thank our keynote speakers Lawrence ("Dave") Davis of NuTech Solutions, Inc., Jordan Pollack of Brandeis University, and Richard Lenski of Michigan State University, who delivered three thought-provoking speeches that inspired a great deal of discussion among the participants.

List of contents

Genetic Programming: Theory and Practice.- Discovering Financial Technical Trading Rules Using Genetic Programming with Lambda Abstraction.- Using Genetic Programming in Industrial Statistical Model Building.- Population Sizing for Genetic Programming Based on Decision-Making.- Considering the Roles of Structure in Problem Solving by Computer.- Lessons Learned Using Genetic Programming in a Stock Picking Context.- Favourable Biasing of Function Sets Using Run Transferable Libraries.- Toward Automated Design of Industrial-Strength Analog Circuits by Means of Genetic Programming.- Topological Synthesis of Robust Dynamic Systems by Sustainable Genetic Programming.- Does Genetic Programming Inherently Adopt Structured Design Techniques?.- Genetic Programming of an Algorithmic Chemistry.- ACGP: Adaptable Constrained Genetic Programming.- Using Genetic Programming to Search for Supply Chain Reordering Policies.- Cartesian Genetic Programming and the Post Docking Filtering Problem.- Listening to Data: Tuning a Genetic Programming System.- Incident Detection on Highways.- Pareto-Front Exploitation in Symbolic Regression.- An Evolved Antenna for Deployment on Nasa's Space Technology 5 Mission.

Product details

Authors Una-May O'Reilly
Assisted by Una-May O'Reilly (Editor), Rick Riolo (Editor), Rick Riolo et al (Editor), Bill Worzel (Editor), Tin Yu (Editor), Tina Yu (Editor)
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 21.10.2010
 
EAN 9781441935892
ISBN 978-1-4419-3589-2
No. of pages 320
Dimensions 155 mm x 18 mm x 235 mm
Weight 511 g
Illustrations XVI, 320 p.
Series Genetic Programming
Genetic Programming
Subjects Natural sciences, medicine, IT, technology > IT, data processing > IT

C, Software Engineering, Algorithms, Artificial Intelligence, computer science, Theory of Computation, Software Engineering/Programming and Operating Systems, Programming Techniques, Computer programming, Operating systems, Computers, Algorithms & data structures, Mathematical theory of computation, Computer programming / software engineering, Algorithm Analysis and Problem Complexity

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