Self-adaptive mechanisms for the identification of the most suitable variation operator in Evolutionary meta-heuristics rely almost exclusively on the measurement of the fitness of the offspring, which may not be sufficient to assess the optimality of an operator (e.g., in a landscape with an high degree of neutrality). This paper proposes a novel Adaptive Operator Selection mechanism which uses a set of four Fitness Landscape Analysis techniques and an online learning algorithm, Dynamic Weighted Majority, to provide more detailed informations about the search space in order to better determine the most suitable crossover operator on a set of Capacitated Arc Routing Problem (CARP) instances. Extensive comparison with a state of the art appr...
Evolutionary algorithms greatly bene fit from an optimal application of the different genetic operat...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
International audienceOne of the choices that most affect the performance of Evolutionary Algorithms...
Self-adaptive mechanisms for the identification of the most suitable variation operator in Evolution...
Evolutionary Computation approaches for Combinatorial Optimization have been successfully proposed f...
Evolvability metrics gauge the potential for fitness of an in-dividual rather than fitness itself. T...
International audienceSeveral techniques have been proposed to tackle the Adaptive Operator Selectio...
Selection is a core genetic operator in many evolutionary algorithms (EAs). The performance of EAs o...
Abstract. We present evidence indicating that adding a crossover is-land greatly improves the perfor...
Abstract. In this chapter, a new dynamic capacitated arc routing problem (CARP) is defined and inves...
Genetic Algorithms (GAs) have proven to be a useful means of finding optimal or near optimal solutio...
One of the settings that most affect the performance of Evolutionary Algorithms is the selection of ...
Date du colloque : 07/2012International audienceIn this paper we propose a generic framework fo...
BEST PAPER AWARDInternational audienceThe performance of many efficient algorithms critically depend...
International audienceThe purpose of adaptive operator selection is to choose dynamically the most s...
Evolutionary algorithms greatly bene fit from an optimal application of the different genetic operat...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
International audienceOne of the choices that most affect the performance of Evolutionary Algorithms...
Self-adaptive mechanisms for the identification of the most suitable variation operator in Evolution...
Evolutionary Computation approaches for Combinatorial Optimization have been successfully proposed f...
Evolvability metrics gauge the potential for fitness of an in-dividual rather than fitness itself. T...
International audienceSeveral techniques have been proposed to tackle the Adaptive Operator Selectio...
Selection is a core genetic operator in many evolutionary algorithms (EAs). The performance of EAs o...
Abstract. We present evidence indicating that adding a crossover is-land greatly improves the perfor...
Abstract. In this chapter, a new dynamic capacitated arc routing problem (CARP) is defined and inves...
Genetic Algorithms (GAs) have proven to be a useful means of finding optimal or near optimal solutio...
One of the settings that most affect the performance of Evolutionary Algorithms is the selection of ...
Date du colloque : 07/2012International audienceIn this paper we propose a generic framework fo...
BEST PAPER AWARDInternational audienceThe performance of many efficient algorithms critically depend...
International audienceThe purpose of adaptive operator selection is to choose dynamically the most s...
Evolutionary algorithms greatly bene fit from an optimal application of the different genetic operat...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
International audienceOne of the choices that most affect the performance of Evolutionary Algorithms...