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Self-Adaptation Mechanism to Control the Diversity of the Population in Genetic Algorithm


Affiliations
1 Department of Computer Engineering, Chulalongkorn University, Bangkok, Thailand
 

One of the problems in applying Genetic Algorithm is that there is some situation where the evolutionary process converges too fast to a solution which causes it to be trapped in local optima. To overcome this problem, a proper diversity in the candidate solutions must be determined. Most existing diversitymaintenance mechanisms require a problem specific knowledge to setup parameters properly. This work proposes a method to control diversity of the population without explicit parameter setting. A selfadaptation mechanism is proposed based on the competition of preference characteristic in mating. It can adapt the population toward proper diversity for the problems. The experiments are carried out to measure the effectiveness of the proposed method based on nine well-known test problems. The performance of the adaptive method is comparable to traditional Genetic Algorithm with the best parameter setting.

Keywords

Genetic Algorithm, Population Diversity, Diversity Control.
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  • Self-Adaptation Mechanism to Control the Diversity of the Population in Genetic Algorithm

Abstract Views: 187  |  PDF Views: 112

Authors

Chaiwat Jassadapakorn
Department of Computer Engineering, Chulalongkorn University, Bangkok, Thailand
Prabhas Chongstitvatana
Department of Computer Engineering, Chulalongkorn University, Bangkok, Thailand

Abstract


One of the problems in applying Genetic Algorithm is that there is some situation where the evolutionary process converges too fast to a solution which causes it to be trapped in local optima. To overcome this problem, a proper diversity in the candidate solutions must be determined. Most existing diversitymaintenance mechanisms require a problem specific knowledge to setup parameters properly. This work proposes a method to control diversity of the population without explicit parameter setting. A selfadaptation mechanism is proposed based on the competition of preference characteristic in mating. It can adapt the population toward proper diversity for the problems. The experiments are carried out to measure the effectiveness of the proposed method based on nine well-known test problems. The performance of the adaptive method is comparable to traditional Genetic Algorithm with the best parameter setting.

Keywords


Genetic Algorithm, Population Diversity, Diversity Control.