When using an evolutionary algorithm to solve a problem involving building blocks we have to grow the building blocks and then mix these building blocks to obtain the (optimal) solution. Finding a good balance between the growing and the mixing process is a prerequisite to get a reliable evolutionary algorithm. Different building blocks can have different probabilities of being mixed. Such differences can easily lead to a loss of the building blocks that are difficult to mix and as a result to premature convergence. By allocating relatively many trials to individuals that contain building blocks with a low mixing probability we can prevent such effects. We developed the mixing evolutionary algorithm (mixEA) in which the allocation of trials...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
In many Genetic Algorithms applications the objective is to find a (near-)optimal solution using a l...
A large number of practical optimization problems involve elements of quite diverse nature, describe...
A key search mechanism in Evolutionary Algorithms is the mixing or juxtaposing of partial solutions ...
A three-stage evolutionary method, the BBF-GA is introduced. BBF-GA is an acronym for building block...
Evolutionary algorithms simulate the process of evolution in order to evolve solutions to optimizati...
Ensuring building-block (BB) mixing is critical to the success of genetic and evolutionary algorithm...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
This paper identifies five distinct mechanisms by which a population-based algorithm might have an a...
In recent years, the use of Artificial Intelligence (AI) has become prevalent in a large number of s...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
In this paper two methods for evolutionary algorithm control are proposed. The first one is a new me...
The ideal of designing a robust and efficient Genetic Algorithms (GAs), easy to use and applicable t...
Neo-Darwinian evolution is an established natural inspiration for computational optimisation with a ...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
In many Genetic Algorithms applications the objective is to find a (near-)optimal solution using a l...
A large number of practical optimization problems involve elements of quite diverse nature, describe...
A key search mechanism in Evolutionary Algorithms is the mixing or juxtaposing of partial solutions ...
A three-stage evolutionary method, the BBF-GA is introduced. BBF-GA is an acronym for building block...
Evolutionary algorithms simulate the process of evolution in order to evolve solutions to optimizati...
Ensuring building-block (BB) mixing is critical to the success of genetic and evolutionary algorithm...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
This paper identifies five distinct mechanisms by which a population-based algorithm might have an a...
In recent years, the use of Artificial Intelligence (AI) has become prevalent in a large number of s...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
In this paper two methods for evolutionary algorithm control are proposed. The first one is a new me...
The ideal of designing a robust and efficient Genetic Algorithms (GAs), easy to use and applicable t...
Neo-Darwinian evolution is an established natural inspiration for computational optimisation with a ...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
In many Genetic Algorithms applications the objective is to find a (near-)optimal solution using a l...
A large number of practical optimization problems involve elements of quite diverse nature, describe...