Evolution 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 and discontinuous functi...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorith...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
International audienceEvolution strategies (ESs) are zero-order stochastic black-box optimization he...
In this dissertation an analysis of Evolution Strategies (ESs) using the theory of Markov chains is ...
International audienceEvolution Strategies (ESs) are population-based methods well suited for parall...
AbstractThis paper investigates theoretically the (1,λ)-SA-ES on the well known sphere function. We ...
Evolution Strategies (ESs) are population-based methods well suited for parallelization. In this rep...
A simple success-based step-size adaptation rule for singleparent Evolution Strategies is formulated...
International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised compariso...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorith...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
In this paper we show how to modify a large class of evolution strategies (ES’s) for unconstrained o...
International audienceEvolution strategies (ESs) are zero-order stochastic black-box optimization he...
In this dissertation an analysis of Evolution Strategies (ESs) using the theory of Markov chains is ...
International audienceEvolution Strategies (ESs) are population-based methods well suited for parall...
AbstractThis paper investigates theoretically the (1,λ)-SA-ES on the well known sphere function. We ...
Evolution Strategies (ESs) are population-based methods well suited for parallelization. In this rep...
A simple success-based step-size adaptation rule for singleparent Evolution Strategies is formulated...
International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised compariso...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...