International audienceThe optimization of expensive-to-evaluate functions generally relies on metamodel-based exploration strategies. Many deterministic global optimization algorithms used in the field of computer experiments are based on Kriging (Gaussian process regression). Starting with a spatial predictor including a measure of uncertainty, they proceed by iteratively choosing the point maximizing a criterion which is a compromise between predicted performance and uncertainty. Distributing the evaluation of such numerically expensive objective functions on many processors is an appealing idea. Here we investigate a multi-points optimization criterion, the multipoints expected improvement ($q-{\mathbb E}I$), aimed at choosing several po...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceDuring the last decade, Kriging-based sequential optimization algorithms have ...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
The optimization of expensive-to-evaluate functions generally relies on metamodel-based exploration ...
During the last decade, Kriging-based sequential algorithms like EGO and its variants have become re...
Kriging with maximization of a multi-point expected improvement presents an interesting direction in...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceDuring the last decade, Kriging-based sequential optimization algorithms have ...
Abstract – The use of kriging in cost-effective single-objective optimization is well established, a...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceDuring the last decade, Kriging-based sequential optimization algorithms have ...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
The optimization of expensive-to-evaluate functions generally relies on metamodel-based exploration ...
During the last decade, Kriging-based sequential algorithms like EGO and its variants have become re...
Kriging with maximization of a multi-point expected improvement presents an interesting direction in...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceDuring the last decade, Kriging-based sequential optimization algorithms have ...
Abstract – The use of kriging in cost-effective single-objective optimization is well established, a...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...
International audienceDuring the last decade, Kriging-based sequential optimization algorithms have ...
Multi-objective optimization algorithms aim at finding Pareto-optimal solutions. Recovering Pareto f...