One method to solve expensive black-box optimization problems is to use a surrogate model that approximates the objective based on previous observed evaluations. The surrogate, which is cheaper to evaluate, is optimized instead to find an approximate solution to the original problem. In the case of discrete problems, recent research has revolved around discrete surrogate models that are specifically constructed to deal with these problems. A main motivation is that literature considers continuous methods, such as Bayesian optimization with Gaussian processes as the surrogate, to be sub-optimal (especially in higher dimensions) because they ignore the discrete structure by, e.g., rounding off real-valued solutions to integers. However, we cl...
Multi-objective optimization problems are usually solved with genetic algorithms when the objective ...
This paper is concerned with an experimental evaluation of coevolutionary optimization techniques, w...
We introduce a novel surrogate-assisted Genetic Algorithm (GA) for expensive optimization of problem...
One method to solve expensive black-box optimization problems is to use a surrogate model that appro...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
A challenging problem in both engineering and computer science is that of minimising a function for ...
International audienceA possible approach to Algorithm Selection and Configuration for continuous bl...
We consider stochastic discrete optimization problems where the decision variables are non-negative ...
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisatio...
Surrogate models are crucial tools for many real-world optimization problems. An optimization algori...
Real-world computationally expensive design optimization problems with discrete variables pose chall...
Surrogate models (also called response surface models or metamodels) have been widely used in the li...
Real-world computationally expensive design optimization problems with discrete variables pose chall...
Benchmark experiments are required to test, compare, tune, and understand optimization algorithms. I...
International audienceIn this paper, we survey methods that are currently used in black-box optimiza...
Multi-objective optimization problems are usually solved with genetic algorithms when the objective ...
This paper is concerned with an experimental evaluation of coevolutionary optimization techniques, w...
We introduce a novel surrogate-assisted Genetic Algorithm (GA) for expensive optimization of problem...
One method to solve expensive black-box optimization problems is to use a surrogate model that appro...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
A challenging problem in both engineering and computer science is that of minimising a function for ...
International audienceA possible approach to Algorithm Selection and Configuration for continuous bl...
We consider stochastic discrete optimization problems where the decision variables are non-negative ...
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisatio...
Surrogate models are crucial tools for many real-world optimization problems. An optimization algori...
Real-world computationally expensive design optimization problems with discrete variables pose chall...
Surrogate models (also called response surface models or metamodels) have been widely used in the li...
Real-world computationally expensive design optimization problems with discrete variables pose chall...
Benchmark experiments are required to test, compare, tune, and understand optimization algorithms. I...
International audienceIn this paper, we survey methods that are currently used in black-box optimiza...
Multi-objective optimization problems are usually solved with genetic algorithms when the objective ...
This paper is concerned with an experimental evaluation of coevolutionary optimization techniques, w...
We introduce a novel surrogate-assisted Genetic Algorithm (GA) for expensive optimization of problem...