See this document in CiteSeerX!

An Adaptive Genetic Algorithm for Permutation Based  (Make Corrections)  
Optimization Problems Koh Sue-Yi, Leow Soo Kar, Loke Kar Seng Monash...



  Home/Search   Context   Related

 
View or download:
monash.edu.my/~ksloke/adaptivega2.ps
Cached:  PS.gz  PS  PDF   Image  Update  Help

From:  monash.edu.my/~ksloke/ (more)
(Enter author homepages)

Rate this article: (best)
  Comment on this article  
(Enter summary)

Abstract: Genetic Algorithms (GA) are a robust heuristic search technique capable of taking on a broad range of optimization problems. In most GAs, components and parameters are predetermined and remain static throughout its run. Much research has indicated that improvements to its performance can be sought by varying some of these components and parameters during its application on a problem. In this paper, a brief survey of the techniques used to vary the GA's components and parameters is... (Update)

Active bibliography (related documents):   More   All
0.5:   Self-Adaptation in Evolutionary Algorithms - Meyer-Nieberg, Beyer   (Correct)
0.1:   Controlling Genetic Algorithms with Reinforcement Learning - Pettinger, al. (2003)   (Correct)
0.1:   Operator-probability Adaptation in a Genetic-algorithm/Heuristic .. - Sinclair (1998)   (Correct)

Similar documents based on text:
0.0:   Unknown -   (Correct)

BibTeX entry:   (Update)

@misc{ koh-adaptive,
  author = "Optimization Problems Koh",
  title = "An Adaptive Genetic Algorithm for Permutation Based",
  url = "citeseer.ist.psu.edu/739560.html" }
Citations (may not include all citations):
588   Handbook of Genetic Algorithms (context) - Davis - 1991
177   An Analysis of the Behavior of a Class of Genetic Adaptive S.. (context) - DeJong - 1975
154   Optimization of control parameters for genetic algorithms (context) - Grefenstette - 1986
94   Adapting operator probabilities in genetic algorithms (context) - Davis - 1989
55   An adaptive crossover distribution mechanism for genetic alg.. (context) - Schaffer, Morishima - 1987
50   A Comparison of genetic sequencing operators - Starkweather, McDaniel et al. - 1991
49   Varying the probability of mutation in genetic algorithms (context) - Fogarty - 1989
38   A Comparison of Selection Schemes used in Genetic Algorithms - Blickle, Thiele - 1995
33   Scheduling Problems and Traveling Salesmen: The Genetic Edge.. (context) - Whitley, Starkweather et al. - 1989
16   Toward an extrapolation of the simulated annealing convergen.. (context) - Davis - 1991
15   Adapting crossover in a genetic algorithm - Spears - 1995
13   Adaptation of Genetic Algorithm Parameters Based on Fuzzy Lo.. - Herrera, Lozano - 1996
12   A study of control parameters affecting online performance o.. (context) - David, Caruana et al. - 1989
7   Adapting Operator Probabilities in Genetic Algorithms - Tuson - 1995
2   Adaptive operator probabilities in a genetic algorithm that .. (context) - Julstrom - 1997
1   Exploiting Synergies of Multiple Crossover (context) - Hong, Kahng et al. - 1995
1   fly crossover adaptation of genetic algorithms (context) - Hatta, Matsuda et al. - 1997
1   Using the Invariant Optimal Assignment of a k-out-ofn: G sys.. (context) - Leow, Koh - 2004
1   Adapting Operator Settings in Genetic Algorithms. Evolutiona.. (context) - Tuson, Ross - 1998
1   The application of multi-level genetic algorithms in assembl.. - Chen, Liu - 2001
1   An Operator Based Adaptive Genetic Algorithm for Permutation.. (context) - Koh - 2004
1   GEATbx Introduction -- Evolutionary Algorithms: Overview, Me.. (context) - Pohlheim - 2004

Documents on the same site (http://www.infotech.monash.edu.my/~ksloke/):
The Future of Mobility : A Selection of Novel Commercial.. - Loke Kar Seng   (Correct)

Online articles have much greater impact   More about CiteSeer.IST   Add search form to your site   Submit documents   Feedback  

CiteSeer.IST - Copyright Penn State and NEC