Limit this search to....

Genetic Algorithms in Optimisation, Simulation and Modelling
Contributor(s): Stender, J. (Editor), Hillebrand, E. (Editor), Kingdon, J. (Editor)
ISBN: 9051991800     ISBN-13: 9789051991802
Publisher: IOS Press
OUR PRICE:   $98.80  
Product Type: Paperback - Other Formats
Published: January 1994
Qty:
Additional Information
BISAC Categories:
- Mathematics | Linear & Nonlinear Programming
- Computers | Intelligence (ai) & Semantics
Dewey: 519.7
LCCN: 94077520
Series: Transputer and OCCAM Engineering Series,
Physical Information: 0.57" H x 7" W x 10" (1.05 lbs) 272 pages
 
Descriptions, Reviews, Etc.
Publisher Description:
One common criticism of Artificial Intelligence (AI) is the brittleness of the solutions it produces. The suggestion is that AI systems have not scaled well beyond the relatively limited domains to which they have been applied. In recent years there has been a marked trend in the AI community towards real-world applications. Techniques, inspired by AI's wider ambition to produce more intelligent machines, are not only gaining acceptance in other fields of scientific research, but also in areas such as business, commerce and industry. Moreover, there is a tendency for the techniques themselves to be developed, tested and refined within such applications. The contemporary theme seems to be, if a technique represents a genuine advance in software engineering, then by definition it has commercial advantage. Nowhere is this trend more evident than in the application of genetic algorithms (GAs). What has marked out as GAs as compared to other techniques is the surprising speed with which commercial organisations have shown an interest. One of the reasons for this is that GAs seem to offer an extremely effective, general-purpose, means for dealing with both complexity and scale. This book present a snapshot of some of the GA research taking place within Europe. In summery, the book attempts to emphasise the diversity of the GA approach by presenting detailed descriptions of GAs used for real-world optimisation and for complex modelling problems.