Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lambda )$-ES, considering both unconstrained and linearly constrained optimization, and both constant and varying step size. All of them assume normality of the involved random steps, and while this is consistent with a black-box scenario, information on the function to be optimized (e.g. separability) may be exploited by the use of another distribution. The objective of our contribution is to complement previous studies realized with normal steps, and to give sufficient conditions on the distribution of the random steps for the success of a constant step-size $(1,\lambda)$-ES on the simple problem of a linear function with a linear constraint. ...
Many complex proesses can be modeled by (countably) infinite, multidimensional Markov chains. Unfort...
In this paper, we study the linear programming with probabilistic constraints. We suppose that the d...
When the function to be optimized is characterized by a limited and unknown number of interactions a...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
International audienceSeveral recent publications investigated Markov-chain mod-elling of linear opt...
Several recent publications investigated Markov-chain modelling of linear optimization by a (1,lambd...
International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised compariso...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
CSO2009, Hainan, IEEE Computer Society Proceedings, (2009) 551-555.We study the problem of construct...
In this paper we are concentrated on a problem of linear chanceconstrained programming where the co...
International audienceWe analyze linear convergence of an evolution strategy for constrained optimiz...
In this dissertation an analysis of Evolution Strategies (ESs) using the theory of Markov chains is ...
Deterministic optimization models are usually formulated as problems of mini-mizing or maximizing a ...
Many complex proesses can be modeled by (countably) infinite, multidimensional Markov chains. Unfort...
In this paper, we study the linear programming with probabilistic constraints. We suppose that the d...
When the function to be optimized is characterized by a limited and unknown number of interactions a...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
International audienceSeveral recent publications investigated Markov-chain mod-elling of linear opt...
Several recent publications investigated Markov-chain modelling of linear optimization by a (1,lambd...
International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised compariso...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
CSO2009, Hainan, IEEE Computer Society Proceedings, (2009) 551-555.We study the problem of construct...
In this paper we are concentrated on a problem of linear chanceconstrained programming where the co...
International audienceWe analyze linear convergence of an evolution strategy for constrained optimiz...
In this dissertation an analysis of Evolution Strategies (ESs) using the theory of Markov chains is ...
Deterministic optimization models are usually formulated as problems of mini-mizing or maximizing a ...
Many complex proesses can be modeled by (countably) infinite, multidimensional Markov chains. Unfort...
In this paper, we study the linear programming with probabilistic constraints. We suppose that the d...
When the function to be optimized is characterized by a limited and unknown number of interactions a...