The ultimate goal of learning algorithms is to find the best solution from a search space without testing each and every solution available in the search space. During the evolution process new solutions (children) are produced from existing solutions (parents), where new solutions are expected to be better than existing solutions. This paper presents a new parent selection method for the crossover operation in genetic programming. The idea is to promote crossover between two behaviourally (phenotype) diverse parents such that the probability of children being better than their parents increases. The relative phenotype strengths and weaknesses of pairs of parents are exploited to find out if their crossover is beneficial or not (diverse par...
A simple model based on one single identified quantitative trait locus (QTL) in a two-way crossing ...
This paper is motivated by an experimental result that better performing genetic programming runs te...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
The ultimate goal of learning algorithms is to find the best solution from a search space without t...
In any traditional Genetic Algorithm (GA), recombination is a dominant search operator and capable o...
Recombination is supposed to enable the component characteristics from two parents to be extracted a...
Abstract. Recombination is supposed to enable the component characteristics from two parents to be e...
Crossover is the main genetic operator which influences the power of evolutionary algorithms. Among...
In this paper we report the results of experiments on multi-parent reproduction in an adaptive genet...
In this paper we study and compare the search properties of different crossover operators in genetic...
Abstract A simple model based on one single identified quantitative trait locus (QTL) in a two-way c...
Genetic algorithms typically use crossover, which relies onmating a set of selected par-ents. As par...
This thesis presents an analysis of the selection process in tree-based Genetic Programming (GP), co...
This paper presents a new crossover operator for genetic programming -- dominance crossover. Dominan...
Genetic programming (GP) has been successfully applied to solving multiclass classification problems...
A simple model based on one single identified quantitative trait locus (QTL) in a two-way crossing ...
This paper is motivated by an experimental result that better performing genetic programming runs te...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
The ultimate goal of learning algorithms is to find the best solution from a search space without t...
In any traditional Genetic Algorithm (GA), recombination is a dominant search operator and capable o...
Recombination is supposed to enable the component characteristics from two parents to be extracted a...
Abstract. Recombination is supposed to enable the component characteristics from two parents to be e...
Crossover is the main genetic operator which influences the power of evolutionary algorithms. Among...
In this paper we report the results of experiments on multi-parent reproduction in an adaptive genet...
In this paper we study and compare the search properties of different crossover operators in genetic...
Abstract A simple model based on one single identified quantitative trait locus (QTL) in a two-way c...
Genetic algorithms typically use crossover, which relies onmating a set of selected par-ents. As par...
This thesis presents an analysis of the selection process in tree-based Genetic Programming (GP), co...
This paper presents a new crossover operator for genetic programming -- dominance crossover. Dominan...
Genetic programming (GP) has been successfully applied to solving multiclass classification problems...
A simple model based on one single identified quantitative trait locus (QTL) in a two-way crossing ...
This paper is motivated by an experimental result that better performing genetic programming runs te...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...