International audienceWe study the problem of global maximization of a function f given a finite number of evaluations perturbed by noise. We consider a very weak assumption on the function, namely that it is locally smooth (in some precise sense) with respect to some semi-metric, around one of its global maxima. Compared to previous works on bandits in general spaces (Kleinberg et al., 2008; Bubeck et al., 2011a) our algorithm does not require the knowledge of this semi-metric. Our algorithm, StoSOO, follows an optimistic strategy to iteratively construct upper confidence bounds over the hierarchical partitions of the function domain to decide which point to sample next. A finite-time analysis of StoSOO shows that it performs almost as wel...
We consider the problem of maximizing a non-concave Lipschitz multivariate function over a compact d...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
We present in this paper a family of generalized simultaneous perturbation-based gradient search (GS...
International audienceWe study the problem of global maximization of a function f given a finite num...
We study the problem of global maximiza-tion of a function f given a finite number of evaluations pe...
Global optimisation of unknown noisy functions is a daunting task that appears in domains ranging fr...
International audienceWe consider a global optimization problem of a deterministic function f in a s...
We present some typical algorithms used for finding global minimum/ maximum of a function defined on...
This dissertation is dedicated to a rigorous analysis of sequential global optimization algorithms. ...
We study the complexity of finding the global solution to stochastic nonconvex optimization when the...
The majority of stochastic optimization algorithms can be writ- ten in the general form $x_{t+1}= T...
130 pagesThis work covers several aspects of the optimism in the face of uncertainty principle appli...
International audienceWe consider function optimization as a sequential decision making problem unde...
We present some typical algorithms used for finding global minimum/maximum of a function defined on...
This discussion paper considers the use of stochastic algorithms for solving global optimisation pro...
We consider the problem of maximizing a non-concave Lipschitz multivariate function over a compact d...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
We present in this paper a family of generalized simultaneous perturbation-based gradient search (GS...
International audienceWe study the problem of global maximization of a function f given a finite num...
We study the problem of global maximiza-tion of a function f given a finite number of evaluations pe...
Global optimisation of unknown noisy functions is a daunting task that appears in domains ranging fr...
International audienceWe consider a global optimization problem of a deterministic function f in a s...
We present some typical algorithms used for finding global minimum/ maximum of a function defined on...
This dissertation is dedicated to a rigorous analysis of sequential global optimization algorithms. ...
We study the complexity of finding the global solution to stochastic nonconvex optimization when the...
The majority of stochastic optimization algorithms can be writ- ten in the general form $x_{t+1}= T...
130 pagesThis work covers several aspects of the optimism in the face of uncertainty principle appli...
International audienceWe consider function optimization as a sequential decision making problem unde...
We present some typical algorithms used for finding global minimum/maximum of a function defined on...
This discussion paper considers the use of stochastic algorithms for solving global optimisation pro...
We consider the problem of maximizing a non-concave Lipschitz multivariate function over a compact d...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
We present in this paper a family of generalized simultaneous perturbation-based gradient search (GS...