One-shot optimization tasks require to determine the set of solution candidates prior to their evaluation, i.e., without possibility for adaptive sampling. We consider two variants, classic one-shot optimization (where our aim is to find at least one solution of high quality) and one-shot regression (where the goal is to fit a model that resembles the true problem as well as possible). For both tasks it seems intuitive that well-distributed samples should perform better than uniform or grid-based samples, since they show a better coverage of the decision space. In practice, quasi-random designs such as Latin Hypercube Samples and low-discrepancy point sets are indeed very commonly used designs for one-shot optimization tasks. We study in th...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audienceExploratory landscape analysis (ELA) supports supervised learning approaches f...
Sampling has been often employed by evolutionary algorithms to cope with noise when solving noisy re...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Abstract. The usual approach to deal with noise present in many real-world optimization problems is ...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
Optimization algorithms and Monte Carlo sampling algorithms have provided the computational foundati...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
Most state-of-the-art optimization algorithms utilize restart to resample new initial solutions to a...
The recently active research area of black-box complexity revealed that for many optimization proble...
The recently active research area of black-box complexity revealed that for many optimization proble...
Optimization algorithms and Monte Carlo sampling algorithms have provided the computational foundati...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audienceExploratory landscape analysis (ELA) supports supervised learning approaches f...
Sampling has been often employed by evolutionary algorithms to cope with noise when solving noisy re...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Abstract. The usual approach to deal with noise present in many real-world optimization problems is ...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
Optimization algorithms and Monte Carlo sampling algorithms have provided the computational foundati...
Stochastic programming combines ideas from deterministic optimization with probability and statistic...
Most state-of-the-art optimization algorithms utilize restart to resample new initial solutions to a...
The recently active research area of black-box complexity revealed that for many optimization proble...
The recently active research area of black-box complexity revealed that for many optimization proble...
Optimization algorithms and Monte Carlo sampling algorithms have provided the computational foundati...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audience``Simple regret'' algorithms are designed for noisy optimization in unstructur...
International audienceExploratory landscape analysis (ELA) supports supervised learning approaches f...