International audienceStep-size adaptation for randomised search algorithms like evolution strategies is a crucial feature for their performance. The adaptation must, depending on the situation, sustain a large diversity or entertain fast convergence to the desired optimum. The assessment of step-size adaptation mechanisms is therefore non-trivial and often done in too restricted scenarios, possibly only on the sphere function. This paper introduces a (minimal) methodology combined with a practical procedure to conduct a more thorough assessment of the overall population diversity of a randomised search algorithm in different scenarios. We illustrate the methodology on evolution strategies with $\sigma$-self-adaptation, cumulative step-size...
International audienceIn this paper, we investigate the effect of a learning rate for the mean in Ev...
Randomized direct-search methods for the optimization of a function f: R^n -> R given by a black box...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
Abstract. The performance of Evolution Strategies (ESs) depends on a suitable choice of internal str...
Most randomized search methods can be regarded as random sampling methods with a (non-uniform) sampl...
Self-adaptation refers to allowing characteristics of search–most often mutation rates–to evolve on ...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
We present a competiton scheme which dynamically allocates the number of trials given to different s...
International audienceEvolution strategies are evolutionary algorithms that date back to the 1960s a...
Iterative algorithms for numerical optimization in continuous spaces typi-cally need to adapt their ...
International audienceThis paper presents a refined single parent evolution strategy that is derando...
Absiraci-Fixed step size random search for minimization of functions of several parameters is descri...
International audienceIn this paper, we investigate the effect of a learning rate for the mean in Ev...
Randomized direct-search methods for the optimization of a function f: R^n -> R given by a black box...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
Abstract. The performance of Evolution Strategies (ESs) depends on a suitable choice of internal str...
Most randomized search methods can be regarded as random sampling methods with a (non-uniform) sampl...
Self-adaptation refers to allowing characteristics of search–most often mutation rates–to evolve on ...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
We present a competiton scheme which dynamically allocates the number of trials given to different s...
International audienceEvolution strategies are evolutionary algorithms that date back to the 1960s a...
Iterative algorithms for numerical optimization in continuous spaces typi-cally need to adapt their ...
International audienceThis paper presents a refined single parent evolution strategy that is derando...
Absiraci-Fixed step size random search for minimization of functions of several parameters is descri...
International audienceIn this paper, we investigate the effect of a learning rate for the mean in Ev...
Randomized direct-search methods for the optimization of a function f: R^n -> R given by a black box...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...