International audienceFollowing a number of recent papers investigating the possibility of optimal comparison-based optimization algorithms for a given distribution of probability on fitness functions, we (i) discuss the comparison-based constraints (ii) choose a setting in which theoretical tight bounds are known (iii) develop a careful implementation using billiard algorithms, Upper Confidence trees and (iv) experimentally test the tractability of the approach. The results, on still very simple cases, show that the approach, yet still preliminary, could be tested successfully until dimension 10 and horizon 50 iterations within a few hours on a standard computer, with convergence rate far better than the best algorithms
Multi-objective optimization problems are often subject to the presence of objectives that require e...
Robust optimization over time is a new way to tackle dynamic optimization problems where the goal is...
DoctoralThis is a two hours class on robust optimization. It starts with motivations and formulation...
International audienceFollowing a number of recent papers investigating the possibility of optimal c...
This paper is centered on the analysis of comparison-based algorithms. It has been shown recently th...
International audienceThis paper exhibits lower and upper bounds on runtimes for expensive noisy opt...
International audienceRandomized search heuristics (e.g., evolutionary algorithms, simulated anneali...
International audienceSeveral comparison-based complexity results have been published recently, incl...
International audienceDerivative Free Optimization is known to be an efficient and robust method to ...
We summarize current research on the pros and cons of invariance properties of optimization algorith...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...
International audienceIt is empirically established that multiobjective evolutionary algorithms do n...
Multi-objective optimization problems are often subject to the presence of objectives that require e...
Robust optimization over time is a new way to tackle dynamic optimization problems where the goal is...
DoctoralThis is a two hours class on robust optimization. It starts with motivations and formulation...
International audienceFollowing a number of recent papers investigating the possibility of optimal c...
This paper is centered on the analysis of comparison-based algorithms. It has been shown recently th...
International audienceThis paper exhibits lower and upper bounds on runtimes for expensive noisy opt...
International audienceRandomized search heuristics (e.g., evolutionary algorithms, simulated anneali...
International audienceSeveral comparison-based complexity results have been published recently, incl...
International audienceDerivative Free Optimization is known to be an efficient and robust method to ...
We summarize current research on the pros and cons of invariance properties of optimization algorith...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...
International audienceIt is empirically established that multiobjective evolutionary algorithms do n...
Multi-objective optimization problems are often subject to the presence of objectives that require e...
Robust optimization over time is a new way to tackle dynamic optimization problems where the goal is...
DoctoralThis is a two hours class on robust optimization. It starts with motivations and formulation...