Randomized direct-search methods for the optimization of a function f: R^n -> R given by a black box for f-evaluations are investigated. We consider the cumulative step-size adaptation (CSA) for the variance of multivariate zero-mean normal distributions. Those are commonly used to sample new candidate solutions within metaheuristics, in particular within the CMA Evolution Strategy (CMA-ES), a state-of-the-art direct-search method. Though the CMA-ES is very successful in practical optimization, its theoretical foundations are very limited because of the complex stochastic process it induces. To forward the theory on this successful method, we propose two simplifications of the CSA used within CMA-ES for step-size control. We show by experim...
Abstract. We revisit Gaussian Adaptation (GaA), a black-box optimizer for discrete and continuous pr...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
internship reportWe report on our attempt to improve the CMA-ES global optimization algorithm based ...
International audienceThe multi-objective covariance matrix adaptation evolution strategy (MO-CMA-ES...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
We combine a refined version of two-point step-size adaptation with the covariance matrix adaptation...
International audienceWe derive a stochastic search procedure for parameter optimization from two fi...
Recently it was shown by Nesterov (2011) that techniques form con-vex optimization can be used to su...
ArXiv e-prints, arXiv:1604.00772, 2016, pp.1-39This tutorial introduces the CMA Evolution Strategy (...
A simple success-based step-size adaptation rule for singleparent Evolution Strategies is formulated...
Evolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominen...
The file attached to this record is the author's final peer reviewed versionIn recent years, part of...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...
In this dissertation an analysis of Evolution Strategies (ESs) using the theory of Markov chains is ...
Abstract. We revisit Gaussian Adaptation (GaA), a black-box optimizer for discrete and continuous pr...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
internship reportWe report on our attempt to improve the CMA-ES global optimization algorithm based ...
International audienceThe multi-objective covariance matrix adaptation evolution strategy (MO-CMA-ES...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
We combine a refined version of two-point step-size adaptation with the covariance matrix adaptation...
International audienceWe derive a stochastic search procedure for parameter optimization from two fi...
Recently it was shown by Nesterov (2011) that techniques form con-vex optimization can be used to su...
ArXiv e-prints, arXiv:1604.00772, 2016, pp.1-39This tutorial introduces the CMA Evolution Strategy (...
A simple success-based step-size adaptation rule for singleparent Evolution Strategies is formulated...
Evolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominen...
The file attached to this record is the author's final peer reviewed versionIn recent years, part of...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...
In this dissertation an analysis of Evolution Strategies (ESs) using the theory of Markov chains is ...
Abstract. We revisit Gaussian Adaptation (GaA), a black-box optimizer for discrete and continuous pr...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
internship reportWe report on our attempt to improve the CMA-ES global optimization algorithm based ...