We investigate an abstraction based memory scheme for evolutionary algorithms in dynamic environments. In this scheme, the abstraction of good solutions (i.e., their approximate location in the search space) is stored in the memory instead of good solutions themselves and is employed to improve future problem solving. In particular, this paper shows how learning takes place in the abstract memory scheme and how the performance in problem solving changes over time for different kinds of dynamics in the fitness landscape. The experiments show that the abstract memory enables learning processes and efficiently improves the performance of evolutionary algorithms in dynamic environments
Copyright © 2007 IEEE. Reprinted from IEEE Transactions on Evolutionary Computation. This mater...
As most real-world problemas are dynamic, it is not sufficient to "solve" the problem for the some (...
A key feature of intelligent behaviour is the ability to learn abstract strategies that scale and tr...
Integrating memory into evolutionary algorithms is one major approach to enhance their performance i...
This paper proposes a memory scheme based on abstraction for evolutionary algorithms to address dyna...
Copyright @ Springer-Verlag Berlin Heidelberg 2008.This paper proposes a memory scheme based on abst...
This is the post-print version of this article. The official article can be accessed from the link b...
Problem optimization in dynamic environments has attracted a growing interest from the evolutionary ...
In recent years there has been a growing interest in studying evolutionary algorithms for dynamic op...
In recent years dynamic optimization problems have attracted a growing interest from the community o...
Many problems considered in optimization and artificial intelligence research are static: informatio...
In recent years, interest in studying evolutionary algorithms (EAs) for dynamic optimization problem...
In recent years, there has been an increasing concern from the evolutionary computation community on...
This paper describes a memory enhanced evolutionary algorithm (EA) approach to the dynamic job shop ...
Many of the problems considered in optimization and learning assume that solutions exist in a dynami...
Copyright © 2007 IEEE. Reprinted from IEEE Transactions on Evolutionary Computation. This mater...
As most real-world problemas are dynamic, it is not sufficient to "solve" the problem for the some (...
A key feature of intelligent behaviour is the ability to learn abstract strategies that scale and tr...
Integrating memory into evolutionary algorithms is one major approach to enhance their performance i...
This paper proposes a memory scheme based on abstraction for evolutionary algorithms to address dyna...
Copyright @ Springer-Verlag Berlin Heidelberg 2008.This paper proposes a memory scheme based on abst...
This is the post-print version of this article. The official article can be accessed from the link b...
Problem optimization in dynamic environments has attracted a growing interest from the evolutionary ...
In recent years there has been a growing interest in studying evolutionary algorithms for dynamic op...
In recent years dynamic optimization problems have attracted a growing interest from the community o...
Many problems considered in optimization and artificial intelligence research are static: informatio...
In recent years, interest in studying evolutionary algorithms (EAs) for dynamic optimization problem...
In recent years, there has been an increasing concern from the evolutionary computation community on...
This paper describes a memory enhanced evolutionary algorithm (EA) approach to the dynamic job shop ...
Many of the problems considered in optimization and learning assume that solutions exist in a dynami...
Copyright © 2007 IEEE. Reprinted from IEEE Transactions on Evolutionary Computation. This mater...
As most real-world problemas are dynamic, it is not sufficient to "solve" the problem for the some (...
A key feature of intelligent behaviour is the ability to learn abstract strategies that scale and tr...