This is a study on the effects of multilevel selection (MLS) theory in optimizing numerical functions. Based on this theory, a new architecture for Multi-Population Cultural Algorithm is proposed which incorporates a new multilevel selection framework (ML-MPCA). The approach used in this paper is based on biological group selection theory that states natural selection acts collectively on all the members of a given group. The effects of cooperation are studied using n-player prisoner’s dilemma. In this game, N individuals are randomly divided into m groups and individuals independently choose to be either cooperator or defector. A two-level selection process is introduced namely within group selection and between group selection. Individual...
A key, yet often neglected, component of digital evolution and evolutionary models is the 'selection...
Decomposition is used to solve optimization problems by introducing many simple scalar optimization ...
Genetic algorithms (GAs) are population-based optimisation tools inspired by evolution and natural s...
Evolutionary Algorithms (EAs) are meta-heuristic algorithms used for optimization of complex problem...
Cultural Algorithm (CA) is one of the Evolutionary Algorithms (EAs) which de- rives from the cultura...
To debunk the myth of how cooperation can emerge through the competition induced by Evolutionary Com...
This paper aims to improve the capability of genetic pro-gramming to tackle the evolution of coopera...
The Multi-Level Selection Genetic Algorithm (MLSGA) is shown to increase the performance of a simple...
Genetic algorithms are integral to a range of applications. They utilise Darwin’s theory of evolutio...
Optimization problems is a class of problems where the goal is to make a system as effective as poss...
Multi-Population Cultural Algorithms (MPCA) define a set of individuals that can be categorized as b...
International audienceThis paper proposes a new multi-objective genetic algorithm, called GAME, to s...
In many complex practical optimization cases, the dominant characteristics of the problem are often ...
Population evolution algorithms such as Cultural Algorithms (CA) enable a global repository known as...
We propose a minimalist stochastic model of multilevel (or group) selection. A population is subdivi...
A key, yet often neglected, component of digital evolution and evolutionary models is the 'selection...
Decomposition is used to solve optimization problems by introducing many simple scalar optimization ...
Genetic algorithms (GAs) are population-based optimisation tools inspired by evolution and natural s...
Evolutionary Algorithms (EAs) are meta-heuristic algorithms used for optimization of complex problem...
Cultural Algorithm (CA) is one of the Evolutionary Algorithms (EAs) which de- rives from the cultura...
To debunk the myth of how cooperation can emerge through the competition induced by Evolutionary Com...
This paper aims to improve the capability of genetic pro-gramming to tackle the evolution of coopera...
The Multi-Level Selection Genetic Algorithm (MLSGA) is shown to increase the performance of a simple...
Genetic algorithms are integral to a range of applications. They utilise Darwin’s theory of evolutio...
Optimization problems is a class of problems where the goal is to make a system as effective as poss...
Multi-Population Cultural Algorithms (MPCA) define a set of individuals that can be categorized as b...
International audienceThis paper proposes a new multi-objective genetic algorithm, called GAME, to s...
In many complex practical optimization cases, the dominant characteristics of the problem are often ...
Population evolution algorithms such as Cultural Algorithms (CA) enable a global repository known as...
We propose a minimalist stochastic model of multilevel (or group) selection. A population is subdivi...
A key, yet often neglected, component of digital evolution and evolutionary models is the 'selection...
Decomposition is used to solve optimization problems by introducing many simple scalar optimization ...
Genetic algorithms (GAs) are population-based optimisation tools inspired by evolution and natural s...