International audienceHierarchical bandits are an approach for global optimization of extremely irregular functions. This paper provides new elements regarding POO, an adaptive meta-algorithm that does not require the knowledge of local smoothness of the target function. We first highlight the fact that the subroutine algorithm used in POO should have a small regret under the assumption of local smoothness with respect to the chosen partitioning, which is unknown if it is satisfied by the standard subroutine HOO. In this work, we establish such regret guarantee for HCT, which is another hierarchical optimistic optimization algorithm that needs to know the smoothness. This confirms the validity of POO. We show that POO can be used with HCT a...
International audienceIn the context of stochastic continuum-armed bandits, we present an algorithm ...
textabstractThe importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms...
International audienceIn black-box optimization problems, we aim to maximize an unknown objective fu...
International audienceHierarchical bandits is an approach for global optimization of extremely irreg...
International audienceHierarchical bandits are an approach for global optimization of extremely irre...
International audienceWe study the problem of black-box optimization of a function $f$ of any dimens...
International audienceWe consider a generalization of stochastic bandits where the set of arms, $\cX...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
Simultaneous optimistic optimization (SOO) is a recently proposed global optimization method with a ...
We study online optimization of smoothed piecewise constant functions over the domain [0, 1). This i...
Soft constraints are quite common in real-life applications. For example, in freight transportation,...
Global optimization of high-dimensional problems in practical applications remains a major challenge...
Simulated annealing is an established method for global optimization. Perhaps its most salient featu...
International audienceIn multi-fidelity optimization, we have access to biased approximations of var...
We study the problem of global maximiza-tion of a function f given a finite number of evaluations pe...
International audienceIn the context of stochastic continuum-armed bandits, we present an algorithm ...
textabstractThe importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms...
International audienceIn black-box optimization problems, we aim to maximize an unknown objective fu...
International audienceHierarchical bandits is an approach for global optimization of extremely irreg...
International audienceHierarchical bandits are an approach for global optimization of extremely irre...
International audienceWe study the problem of black-box optimization of a function $f$ of any dimens...
International audienceWe consider a generalization of stochastic bandits where the set of arms, $\cX...
In this work, we propose a meta algorithm that can solve a multivariate global optimization problem ...
Simultaneous optimistic optimization (SOO) is a recently proposed global optimization method with a ...
We study online optimization of smoothed piecewise constant functions over the domain [0, 1). This i...
Soft constraints are quite common in real-life applications. For example, in freight transportation,...
Global optimization of high-dimensional problems in practical applications remains a major challenge...
Simulated annealing is an established method for global optimization. Perhaps its most salient featu...
International audienceIn multi-fidelity optimization, we have access to biased approximations of var...
We study the problem of global maximiza-tion of a function f given a finite number of evaluations pe...
International audienceIn the context of stochastic continuum-armed bandits, we present an algorithm ...
textabstractThe importance and potential of Gray-Box Optimization (GBO) with evolutionary algorithms...
International audienceIn black-box optimization problems, we aim to maximize an unknown objective fu...