0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R2,500 - R5,000 (6)
  • -
Status
Brand

Showing 1 - 6 of 6 matches in All Departments

Exploitation of Linkage Learning in Evolutionary Algorithms (Paperback, 2010 ed.): Ying-Ping Chen Exploitation of Linkage Learning in Evolutionary Algorithms (Paperback, 2010 ed.)
Ying-Ping Chen
R2,945 Discovery Miles 29 450 Ships in 10 - 15 working days

One major branch of enhancing the performance of evolutionary algorithms is the exploitation of linkage learning. This monograph aims to capture the recent progress of linkage learning, by compiling a series of focused technical chapters to keep abreast of the developments and trends in the area of linkage. In evolutionary algorithms, linkage models the relation between decision variables with the genetic linkage observed in biological systems, and linkage learning connects computational optimization methodologies and natural evolution mechanisms. Exploitation of linkage learning can enable us to design better evolutionary algorithms as well as to potentially gain insight into biological systems. Linkage learning has the potential to become one of the dominant aspects of evolutionary algorithms; research in this area can potentially yield promising results in addressing the scalability issues.

Extending the Scalability of Linkage Learning Genetic Algorithms - Theory & Practice (Paperback, Softcover reprint of hardcover... Extending the Scalability of Linkage Learning Genetic Algorithms - Theory & Practice (Paperback, Softcover reprint of hardcover 1st ed. 2006)
Ying-Ping Chen
R2,957 Discovery Miles 29 570 Ships in 10 - 15 working days

Genetic algorithms (GAs) are powerful search techniques based on principles of evolution and widely applied to solve problems in many disciplines. However, most GAs employed in practice nowadays are unable to learn genetic linkage and suffer from the linkage problem. The linkage learning genetic algorithm (LLGA) was proposed to tackle the linkage problem with several specially designed mechanisms. While the LLGA performs much better on badly scaled problems than simple GAs, it does not work well on uniformly scaled problems as other competent GAs. Therefore, we need to understand why it is so and need to know how to design a better LLGA or whether there are certain limits of such a linkage learning process. This book aims to gain better understanding of the LLGA in theory and to improve the LLGA's performance in practice. It starts with a survey of the existing genetic linkage learning techniques and describes the steps and approaches taken to tackle the research topics, including using promoters, developing the convergence time model, and adopting subchromosomes.

Linkage in Evolutionary Computation (Paperback, Softcover reprint of hardcover 1st ed. 2008): Ying-Ping Chen Linkage in Evolutionary Computation (Paperback, Softcover reprint of hardcover 1st ed. 2008)
Ying-Ping Chen
R4,550 Discovery Miles 45 500 Ships in 10 - 15 working days

In recent years, the issue of linkage in GEAs has garnered greater attention and recognition from researchers. Conventional approaches that rely much on ad hoc tweaking of parameters to control the search by balancing the level of exploitation and exploration are grossly inadequate. As shown in the work reported here, such parameters tweaking based approaches have their limits; they can be easily fooled by cases of triviality or peculiarity of the class of problems that the algorithms are designed to handle. Furthermore, these approaches are usually blind to the interactions between the decision variables, thereby disrupting the partial solutions that are being built up along the way.

Exploitation of Linkage Learning in Evolutionary Algorithms (Hardcover, 2010 Ed.): Ying-Ping Chen Exploitation of Linkage Learning in Evolutionary Algorithms (Hardcover, 2010 Ed.)
Ying-Ping Chen
R2,988 Discovery Miles 29 880 Ships in 10 - 15 working days

One major branch of enhancing the performance of evolutionary algorithms is the exploitation of linkage learning. This monograph aims to capture the recent progress of linkage learning, by compiling a series of focused technical chapters to keep abreast of the developments and trends in the area of linkage. In evolutionary algorithms, linkage models the relation between decision variables with the genetic linkage observed in biological systems, and linkage learning connects computational optimization methodologies and natural evolution mechanisms. Exploitation of linkage learning can enable us to design better evolutionary algorithms as well as to potentially gain insight into biological systems. Linkage learning has the potential to become one of the dominant aspects of evolutionary algorithms; research in this area can potentially yield promising results in addressing the scalability issues.

Linkage in Evolutionary Computation (Hardcover, 2008 ed.): Ying-Ping Chen Linkage in Evolutionary Computation (Hardcover, 2008 ed.)
Ying-Ping Chen
R4,582 Discovery Miles 45 820 Ships in 10 - 15 working days

In recent years, the issue of linkage in GEAs has garnered greater attention and recognition from researchers. Conventional approaches that rely much on ad hoc tweaking of parameters to control the search by balancing the level of exploitation and exploration are grossly inadequate. As shown in the work reported here, such parameters tweaking based approaches have their limits; they can be easily fooled by cases of triviality or peculiarity of the class of problems that the algorithms are designed to handle. Furthermore, these approaches are usually blind to the interactions between the decision variables, thereby disrupting the partial solutions that are being built up along the way.

Extending the Scalability of Linkage Learning Genetic Algorithms - Theory & Practice (Hardcover, 2006 ed.): Ying-Ping Chen Extending the Scalability of Linkage Learning Genetic Algorithms - Theory & Practice (Hardcover, 2006 ed.)
Ying-Ping Chen
R3,041 Discovery Miles 30 410 Ships in 10 - 15 working days

Genetic algorithms (GAs) are powerful search techniques based on principles of evolution and widely applied to solve problems in many disciplines. However, most GAs employed in practice nowadays are unable to learn genetic linkage and suffer from the linkage problem. The linkage learning genetic algorithm (LLGA) was proposed to tackle the linkage problem with several specially designed mechanisms. While the LLGA performs much better on badly scaled problems than simple GAs, it does not work well on uniformly scaled problems as other competent GAs. Therefore, we need to understand why it is so and need to know how to design a better LLGA or whether there are certain limits of such a linkage learning process. This book aims to gain better understanding of the LLGA in theory and to improve the LLGA's performance in practice. It starts with a survey of the existing genetic linkage learning techniques and describes the steps and approaches taken to tackle the research topics, including using promoters, developing the convergence time model, and adopting subchromosomes.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Snappy Tritan Bottle (1.5L)(Coral)
R229 R180 Discovery Miles 1 800
Bennett Read Digital Tower Fan Heater…
R1,299 R1,199 Discovery Miles 11 990
Barbie
Margot Robbie, Ryan Gosling Blu-ray disc R266 Discovery Miles 2 660
Jeronimo Walkie Talkie Game
 (2)
R360 R328 Discovery Miles 3 280
Jumbo Jan van Haasteren Comic Jigsaw…
 (1)
R439 R299 Discovery Miles 2 990
Bug-A-Salt 3.0 Black Fly
 (1)
R999 Discovery Miles 9 990
Dromex 3-Ply Medical Mask (Box of 50)
 (17)
R1,099 R399 Discovery Miles 3 990
Bostik Glu Dots - Extra Strength (64…
R55 Discovery Miles 550
Cadac Digital Meat Thermometer
R242 Discovery Miles 2 420
Stealth SX-C10-X Twin Rechargeable…
R499 R269 Discovery Miles 2 690

 

Partners