International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised comparison-based adaptive search algorithm, on a simple constraint optimisation problem. The algorithm uses resampling to handle the constraint and optimizes a linear function with a linear constraint. Two cases are investigated: first the case where the step-size is constant, and second the case where the step-size is adapted using path length control. We exhibit for each case a Markov chain whose stability analysis would allow us to deduce the divergence of the algorithm depending on its internal parameters. We show divergence at a constant rate when the step-size is constant. We sketch that with step-size adaptation geometric divergence takes place...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
Evolutionary algorithms are frequently applied to dynamic optimization problems in which the objecti...
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...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
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 ...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
The authors present and analyze a class of evolutionary algorithms for unconstrained and bound const...
The authors describe a convergence theory for evolutionary pattern search algorithms (EPSAs) on a br...
Rigorous runtime analysis is a major approach towards understanding evolutionary computing technique...
The investigations of linear pseudo-Boolean functions play a central role in the area of runtime ana...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
Evolutionary algorithms are frequently applied to dynamic optimization problems in which the objecti...
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...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
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 ...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
The authors present and analyze a class of evolutionary algorithms for unconstrained and bound const...
The authors describe a convergence theory for evolutionary pattern search algorithms (EPSAs) on a br...
Rigorous runtime analysis is a major approach towards understanding evolutionary computing technique...
The investigations of linear pseudo-Boolean functions play a central role in the area of runtime ana...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
International audienceStep-size adaptation for randomised search algorithms like evolution strategie...
Evolutionary algorithms are frequently applied to dynamic optimization problems in which the objecti...