International audienceMotivated by parallel optimization, we experiment EDA-like adaptation-rules in the case of $\lambda$ large. The rule we use, essentially based on estimation of multivariate normal algorithm, is (i) compliant with all families of distributions for which a density estimation algorithm exists (ii) simple (iii) parameter-free (iv) better than current rules in this framework of $\lambda$ large. The speed-up as a function of $\lambda$ is consistent with theoretical bounds
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
International audienceThe goal of this paper is to investigate on the overall performance of CMA-ES,...
International audienceMotivated by parallel optimization, we experiment EDA-like adaptation-rules in...
International audienceMotivated by parallel optimization, we study the Self-Adaptation algorithm for...
International audienceIt is usually considered that evolutionary algorithms are highly parallel. In ...
International audienceEvolution Strategies (ESs) are population-based methods well suited for parall...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
Deliverable no. 2.1.1-BThe sequential sampling strategies based on Gaussian processes are widely use...
International audienceWe study mathematically and experimentally the conver-gence rate of differenti...
International audienceEstimation of Distribution Algorithms are based on statistical estimates. We s...
This paper presents a framework for the theoretical analysis of Estimation of Distribution Algorithm...
International audienceThe mathematical analysis of optimization algorithms involves upper and lower ...
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
International audienceThe goal of this paper is to investigate on the overall performance of CMA-ES,...
International audienceMotivated by parallel optimization, we experiment EDA-like adaptation-rules in...
International audienceMotivated by parallel optimization, we study the Self-Adaptation algorithm for...
International audienceIt is usually considered that evolutionary algorithms are highly parallel. In ...
International audienceEvolution Strategies (ESs) are population-based methods well suited for parall...
International audienceRandomization is an efficient tool for global optimization. We here define a m...
Deliverable no. 2.1.1-BThe sequential sampling strategies based on Gaussian processes are widely use...
International audienceWe study mathematically and experimentally the conver-gence rate of differenti...
International audienceEstimation of Distribution Algorithms are based on statistical estimates. We s...
This paper presents a framework for the theoretical analysis of Estimation of Distribution Algorithm...
International audienceThe mathematical analysis of optimization algorithms involves upper and lower ...
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
We present a general method for analyzing the runtime of parallel evolutionary algorithms with spati...
International audienceThe goal of this paper is to investigate on the overall performance of CMA-ES,...