International audienceThe Covariance-Matrix-Adaptation Evolution-Strategy (CMA-ES) is a robust stochastic search algorithm for optimizing functions defined on a continuous search space $\R^{D}$. Recently, mirrored samples and sequential selection have been introduced within CMA-ES to improve its local search performances. In this paper, we benchmark the (1,4$_m^s$)-CMA-ES which implements mirrored samples and sequential selection on the BBOB-2010 noisy testbed. Independent restarts are conducted until a maximal number of $10^{4} D$ function evaluations is reached. Although the tested (1,4$_m^s$)-CMA-ES is only a local search strategy, it solves 8 of the noisy BBOB-2010 functions in 20D and 9 of them in 5D for a target of $10^{-8}$. There is...
International audienceWe benchmark an independent-restart-(1+1)-CMA-ES on the BBOB-2009 noisy testbe...
Derandomization by means of mirrored samples has been recently introduced to enhance the performance...
International audienceDerandomization by means of mirroring has been recently introduced to enhance ...
International audienceThe Covariance-Matrix-Adaptation Evolution-Strategy (CMA-ES) is a robust stoch...
The Covariance-Matrix-Adaptation Evolution-Strategy (CMA-ES) is a robust stochastic search algorithm...
International audienceThe well-known Covariance Matrix Adaptation Evolution Strategy (CMA-ES) is a r...
International audienceDerandomization by means of mirrored samples has been recently introduced to e...
International audienceDerandomization by means of mirrored samples has been recently introduced to e...
International audienceSequential selection, introduced for Evolution Strategies (ESs) with the aim o...
International audienceThis paper investigates the impact of sequential selection, a concept recently...
International audienceDerandomization by means of mirrored samples has been recently introduced to e...
International audienceSequential selection was introduced for Evolution Strategies (ESs) with the ai...
International audienceThe (1+1)-CMA-ES is an adaptive stochastic algorithm for the optimization of o...
International audienceWe benchmark an independent-restart-(1+1)-CMA-ES on the BBOB-2009 noisy testbe...
Derandomization by means of mirrored samples has been recently introduced to enhance the performance...
International audienceDerandomization by means of mirroring has been recently introduced to enhance ...
International audienceThe Covariance-Matrix-Adaptation Evolution-Strategy (CMA-ES) is a robust stoch...
The Covariance-Matrix-Adaptation Evolution-Strategy (CMA-ES) is a robust stochastic search algorithm...
International audienceThe well-known Covariance Matrix Adaptation Evolution Strategy (CMA-ES) is a r...
International audienceDerandomization by means of mirrored samples has been recently introduced to e...
International audienceDerandomization by means of mirrored samples has been recently introduced to e...
International audienceSequential selection, introduced for Evolution Strategies (ESs) with the aim o...
International audienceThis paper investigates the impact of sequential selection, a concept recently...
International audienceDerandomization by means of mirrored samples has been recently introduced to e...
International audienceSequential selection was introduced for Evolution Strategies (ESs) with the ai...
International audienceThe (1+1)-CMA-ES is an adaptive stochastic algorithm for the optimization of o...
International audienceWe benchmark an independent-restart-(1+1)-CMA-ES on the BBOB-2009 noisy testbe...
Derandomization by means of mirrored samples has been recently introduced to enhance the performance...
International audienceDerandomization by means of mirroring has been recently introduced to enhance ...