International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominent representative, the CMA-ES algorithm, is widely used to solve difficult numerical optimization problems. We provide the first rigorous investigation of the linear convergence of step-size adaptive ES involving a population and recombination, two ingredients crucially important in practice to be robust to local irregularities or multimodality.We investigate convergence of step-size adaptive ES with weighted recombination on composites of strictly increasing functions with continuously differentiable scaling-invariant functions with a global optimum. This function class includes functions with non-convex sublevel sets an...
Abstract. In the context of unconstraint numerical optimization, this paper investigates the global ...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
International audienceWe investigate evolution strategies with weighted recombi-nation on general co...
International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorith...
Evolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominen...
International audienceEvolution strategies (ESs) are zero-order stochastic black-box optimization he...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
Evolution Strategies (ESs) are population-based methods well suited for parallelization. In this rep...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
International audienceEvolution Strategies (ESs) are population-based methods well suited for parall...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
International audienceWe study the linear convergence of a simple evolutionary algorithm on non quas...
International audienceIn this paper, we investigate the effect of a learning rate for the mean in Ev...
Abstract. In the context of unconstraint numerical optimization, this paper investigates the global ...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
International audienceWe investigate evolution strategies with weighted recombi-nation on general co...
International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorith...
Evolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominen...
International audienceEvolution strategies (ESs) are zero-order stochastic black-box optimization he...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
Evolution Strategies (ESs) are population-based methods well suited for parallelization. In this rep...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
International audienceEvolution Strategies (ESs) are population-based methods well suited for parall...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
International audienceWe study the linear convergence of a simple evolutionary algorithm on non quas...
International audienceIn this paper, we investigate the effect of a learning rate for the mean in Ev...
Abstract. In the context of unconstraint numerical optimization, this paper investigates the global ...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
International audienceWe investigate evolution strategies with weighted recombi-nation on general co...