This article focuses on the multi-objective optimization of stochastic simulators with high output variance, where the input space is finite and the objective functions are expensive to evaluate. We rely on Bayesian optimization algorithms, which use probabilistic models to make predictions about the functions to be optimized. The proposed approach is an extension of the Pareto Active Learning (PAL) algorithm for the estimation of Pareto-optimal solutions that makes it suitable for the stochastic setting. We named it Pareto Active Learning for Stochastic Simulators (PALS). The performance of PALS is assessed through numerical experiments over a set of bi-dimensional, bi-objective test problems. PALS exhibits superior performance when compar...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Abstract. In the last decades enormous advances have been made possible for modelling complex (physi...
In this paper we consider multi-objective optimization problems (MOOP) from the point of view of Bay...
This article focuses on the multi-objective optimization of stochastic simulators with high output v...
International audienceWe address the problem of optimizing an expensive-to-evaluate stochastic simul...
International audienceWe address the problem of optimizing an expensive-to-evaluate stochastic simul...
This article focuses on the multi-objective optimization of stochastic simulators with high output v...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
In traditional methods for black-box optimization, a considerable number of objective function evalu...
fronts (ALP) algorithm, a novel approach to recover the Pareto front of a multi-objective optimizati...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Real world systems often have parameterized controllers which can be tuned to improve performance. B...
In this paper, we evaluate the application of Bayesian Optimization (BO) to discrete event simulatio...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
International audienceWe consider multi-objective optimization problems, min x∈Rd(f1(x), . . . , fm(...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Abstract. In the last decades enormous advances have been made possible for modelling complex (physi...
In this paper we consider multi-objective optimization problems (MOOP) from the point of view of Bay...
This article focuses on the multi-objective optimization of stochastic simulators with high output v...
International audienceWe address the problem of optimizing an expensive-to-evaluate stochastic simul...
International audienceWe address the problem of optimizing an expensive-to-evaluate stochastic simul...
This article focuses on the multi-objective optimization of stochastic simulators with high output v...
A number of researchers have successfully integrated stochastic computer simulation models with comb...
In traditional methods for black-box optimization, a considerable number of objective function evalu...
fronts (ALP) algorithm, a novel approach to recover the Pareto front of a multi-objective optimizati...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Real world systems often have parameterized controllers which can be tuned to improve performance. B...
In this paper, we evaluate the application of Bayesian Optimization (BO) to discrete event simulatio...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
International audienceWe consider multi-objective optimization problems, min x∈Rd(f1(x), . . . , fm(...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
Abstract. In the last decades enormous advances have been made possible for modelling complex (physi...
In this paper we consider multi-objective optimization problems (MOOP) from the point of view of Bay...