Abstract—Evolutionary Algorithms (EAs) still have no auto-matic termination criterion. In this paper, we modify a genetic algorithm (GA), as an example of EAs, with new automatic termination criteria and acceleration elements. The proposed method is called the GA with Gene and Landmark Matrices (GAGLM). In the GAGLM method, the Gene Matrix (GM) and Landmark Matrix (LM) are constructed to equip the search process with a self-check to judge how much exploration has been done and to maintain the population diversity. Moreover, a special mutation operation called “Mutagenesis ” is defined to achieve more efficient and faster exploration and exploitation processes. The computational experiments show the efficiency of the GAGLM method, especially...
There are various desirable traits in organisms that humans wish to improve. To change a trait, the ...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
Proceedings of: 9th International Symposium on Distributed Computing and Artificial Intelligence (DC...
The standard versions of Evolutionary Algorithms (EAs) have two main drawbacks: unlearned terminatio...
Abstract — Although several attempts have been made to mod-ify the original versions of Evolutionary...
In the last two decades, numerous evolutionary algorithms (EAs) have been developed for solving opti...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Proceedings of: 13th annual conference on companion on Genetic and evolutionary computation (GECCO '...
The Simple Genetic Algorithm (SGA) paradigm works using the three basic operators: Selection, Mutati...
This paper presents a control system based method for adapting the mutation step-size in order to co...
Genetic Algorithm is an algorithm imitating the natural evolution process in solving optimization pr...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
A novel genetic algorithm is reported that is non-revisiting: It remembers every position that it ha...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
There are various desirable traits in organisms that humans wish to improve. To change a trait, the ...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
Proceedings of: 9th International Symposium on Distributed Computing and Artificial Intelligence (DC...
The standard versions of Evolutionary Algorithms (EAs) have two main drawbacks: unlearned terminatio...
Abstract — Although several attempts have been made to mod-ify the original versions of Evolutionary...
In the last two decades, numerous evolutionary algorithms (EAs) have been developed for solving opti...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Proceedings of: 13th annual conference on companion on Genetic and evolutionary computation (GECCO '...
The Simple Genetic Algorithm (SGA) paradigm works using the three basic operators: Selection, Mutati...
This paper presents a control system based method for adapting the mutation step-size in order to co...
Genetic Algorithm is an algorithm imitating the natural evolution process in solving optimization pr...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
A novel genetic algorithm is reported that is non-revisiting: It remembers every position that it ha...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
There are various desirable traits in organisms that humans wish to improve. To change a trait, the ...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
Proceedings of: 9th International Symposium on Distributed Computing and Artificial Intelligence (DC...