Cooperative coevolution has proven to be a promising technique for solving complex combinatorial optimization problems. In this paper, we present four different strategies which involve cooperative coevolution of a genetic program and of a population of constants evolved by a genetic algorithm. The genetic program evolves expressions that solve a problem, while the genetic algorithm provides “good” values for the numeric terminal symbols used by those expressions. Experiments have been performed on three symbolic regression problems and on a “real-world” biomedical application. Results are encouraging and confirm that our coevolutionary algorithms can be used effectively in different domains
This thesis deals with the integration of co-learning into cartesian genetic programming. The task o...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
This chapter is devoted to an application of genetic algorithms and coevolutionary principles to a l...
The use of evolutionary computing techniques in coevolutionary/multiagent systems is becoming increa...
The use of evolutionary computing techniques in coevolutionary/multiagent systems is becoming increa...
This is an electronic version of the paper presented at the International Conference on Evolutionary...
Symbolic regression is a function formula search approach dealing with isolated points of the functi...
The integration of human knowledge or intuition into evolutionary optimization processes has already...
In many complex practical optimization cases, the dominant characteristics of the problem are often ...
In many complex practical optimization cases, the dominant characteristics of the problem are often ...
This paper reports on the evolution of GP teams in different classiffication and regression problems...
This paper introduces the notion of using coevolution to adapt the penalty factors of a fitness func...
iii Many problems encountered in computer science are best stated in terms of interactions amongst i...
Genetic Algorithms is a computational model inspired by Darwin's theory of evolution. It has a broad...
Genetic Algorithms is a computational model inspired by Darwin's theory of evolution. It has a broad...
This thesis deals with the integration of co-learning into cartesian genetic programming. The task o...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
This chapter is devoted to an application of genetic algorithms and coevolutionary principles to a l...
The use of evolutionary computing techniques in coevolutionary/multiagent systems is becoming increa...
The use of evolutionary computing techniques in coevolutionary/multiagent systems is becoming increa...
This is an electronic version of the paper presented at the International Conference on Evolutionary...
Symbolic regression is a function formula search approach dealing with isolated points of the functi...
The integration of human knowledge or intuition into evolutionary optimization processes has already...
In many complex practical optimization cases, the dominant characteristics of the problem are often ...
In many complex practical optimization cases, the dominant characteristics of the problem are often ...
This paper reports on the evolution of GP teams in different classiffication and regression problems...
This paper introduces the notion of using coevolution to adapt the penalty factors of a fitness func...
iii Many problems encountered in computer science are best stated in terms of interactions amongst i...
Genetic Algorithms is a computational model inspired by Darwin's theory of evolution. It has a broad...
Genetic Algorithms is a computational model inspired by Darwin's theory of evolution. It has a broad...
This thesis deals with the integration of co-learning into cartesian genetic programming. The task o...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
This chapter is devoted to an application of genetic algorithms and coevolutionary principles to a l...