The genetic algorithm (GA) is a quite efficient paradigm to solve several optimization problems. It is substantially a search technique that uses an ever-changing neighborhood structure related to a population which evolves according to a number of genetic operators. In the GA framework many techniques have been devised to escape from a local optimum when the algorithm fails in locating the global one. To this aim we present a variant of the GA which we call OMEGA (One Multi Ethnic Genetic Approach). The main difference is that, starting from an initial population, k different sub-populations are produced at each iteration and they independently evolve in k different environments. The resulting sub–populations are then recombined and the pr...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
International audienceThis paper considers a new method that enables a genetic algorithm (GA) to ide...
Abstract—In this paper, a new genetic algorithm for multi-objective optimization problems is introdu...
The genetic algorithm (GA) is a quite efficient paradigm to solve several optimization problems. It ...
Dottorato di ricerca in:Ricerca Operativa, XXII Ciclo,2008-2009Combinatorial optimization is a branc...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...
Evolutionary Algorithms started in the 1950's with [Fra57] and [Box57]. They form a powerful fa...
A hybridised and Knowledge-based Evolutionary Algorithm (KEA) is applied to the multi-criterion mini...
In many applications of evolutionary algorithms the computational cost of applying operators and sto...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
The paper provides an improved evolutionary strategy (ES) of genetic algorithm (GA) on the basis of ...
Given a connected, undirected graph G with labeled edges, the minimum-label spanning tree problem se...
In this paper, Hamming distance is used to control individual difference in the process of creating ...
Optimization of multimodal functions is hard for traditional optimization techniques. Holland's gene...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
International audienceThis paper considers a new method that enables a genetic algorithm (GA) to ide...
Abstract—In this paper, a new genetic algorithm for multi-objective optimization problems is introdu...
The genetic algorithm (GA) is a quite efficient paradigm to solve several optimization problems. It ...
Dottorato di ricerca in:Ricerca Operativa, XXII Ciclo,2008-2009Combinatorial optimization is a branc...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...
Evolutionary Algorithms started in the 1950's with [Fra57] and [Box57]. They form a powerful fa...
A hybridised and Knowledge-based Evolutionary Algorithm (KEA) is applied to the multi-criterion mini...
In many applications of evolutionary algorithms the computational cost of applying operators and sto...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
The paper provides an improved evolutionary strategy (ES) of genetic algorithm (GA) on the basis of ...
Given a connected, undirected graph G with labeled edges, the minimum-label spanning tree problem se...
In this paper, Hamming distance is used to control individual difference in the process of creating ...
Optimization of multimodal functions is hard for traditional optimization techniques. Holland's gene...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
International audienceThis paper considers a new method that enables a genetic algorithm (GA) to ide...
Abstract—In this paper, a new genetic algorithm for multi-objective optimization problems is introdu...