This paper investigates a new technique for the solving of multimodal problems using genetic algorithms (GAs). The proposed technique, Restricted Tournament Selection, is based on the paradigm of local competition. The paper begins by discussing some of the drawbacks of using current multi-modal techniques. The paper then presents the new technique along with an analysis of a class of sets of solutions it preserves and locates. This presentation researches the new technique's restriction on competition from the viewpoint of calculating probability distributions for its tournaments as well as its various niche takeover times. Empirical observations are then presented as evidence of the technique's abilities in a wide variety of settings. Finally, this paper explores the future trajectory of multimodal GA research. Abstract This paper investigates a new technique for the solving of multimodal problems using genetic algorithms (GAs). The proposed technique, Restricted Tournament Selection, is based on the paradigm of local competition. The paper begins by discussing some of the drawbacks of using current multi-modal techniques. The paper then presents the new technique along with an analysis of a class of sets of solutions it preserves and locates. This presentation researches the new technique's restriction on competition from the viewpoint of calculating probability distributions for its tournaments as well as its various niche takeover times. Empirical observations are then presented as evidence of the technique's abilities in a wide variety of settings. Finally, this paper explores the future trajectory of multimodal GA research.
[1]
Samir W. Mahfoud.
Crowding and Preselection Revisited
,
1992,
PPSN.
[2]
David E. Goldberg,et al.
Genetic Algorithms with Sharing for Multimodalfunction Optimization
,
1987,
ICGA.
[3]
G. Harik.
Finding Multiple Solutions in Problems of Bounded Diiculty Finding Multiple Solutions in Problems of Bounded Diiculty
,
1994
.
[4]
Kalyanmoy Deb,et al.
Messy Genetic Algorithms Revisited: Studies in Mixed Size and Scale
,
1990,
Complex Syst..
[5]
K. Dejong,et al.
An analysis of the behavior of a class of genetic adaptive systems
,
1975
.
[6]
Kalyanmoy Deb,et al.
Messy Genetic Algorithms: Motivation, Analysis, and First Results
,
1989,
Complex Syst..
[7]
John H. Holland,et al.
Adaptation in natural and artificial systems
,
1975
.
[8]
Kalyanmoy Deb,et al.
Massive Multimodality, Deception, and Genetic Algorithms
,
1992,
PPSN.
[9]
A. Ravindran,et al.
Engineering Optimization: Methods and Applications
,
2006
.
[10]
Kalyanmoy Deb,et al.
A Comparative Analysis of Selection Schemes Used in Genetic Algorithms
,
1990,
FOGA.