8 figures. Major update compared to v1 including multiple new sections and new plots. All Tables have been re-doneInternational audienceWe consider the problem of learning the level set for which a noisy black-box function exceeds a given threshold. To efficiently reconstruct the level set, we investigate Gaussian process (GP) metamodels. Our focus is on strongly stochastic samplers, in particular with heavy-tailed simulation noise and low signal-to-noise ratio. To guard against noise misspecification, we assess the performance of three variants: (i) GPs with Student-$t$ observations; (ii) Student-$t$ processes (TPs); and (iii) classification GPs modeling the sign of the response. In conjunction with these metamodels, we analyze several acq...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceGaussian process (GP) models have become a well-established framework for the ...
International audienceGaussian process (GP) models have become a well-established framework for the ...
AbstractWe consider the problem of learning the level set for which a noisy black-box function excee...
We consider the problem of learning the level set for which a noisy black-box function exceeds a giv...
We consider the problem of learning the level set for which a noisy black-box function exceeds a giv...
This is the supplementary material for article "Evaluating Gaussian Process Metamodels and Sequentia...
This is the simulation dataset for synthetic experiments (2D Modified Branin-Hoo function and 2D Mic...
This is the source code for synthetic experiments and case study in the article "Evaluating Gaussian...
We develop adaptive replicated designs for Gaussian process metamodels of stochastic experiments. Ad...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceGaussian process (GP) models have become a well-established framework for the ...
International audienceGaussian process (GP) models have become a well-established framework for the ...
AbstractWe consider the problem of learning the level set for which a noisy black-box function excee...
We consider the problem of learning the level set for which a noisy black-box function exceeds a giv...
We consider the problem of learning the level set for which a noisy black-box function exceeds a giv...
This is the supplementary material for article "Evaluating Gaussian Process Metamodels and Sequentia...
This is the simulation dataset for synthetic experiments (2D Modified Branin-Hoo function and 2D Mic...
This is the source code for synthetic experiments and case study in the article "Evaluating Gaussian...
We develop adaptive replicated designs for Gaussian process metamodels of stochastic experiments. Ad...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceSeveral methods based on Kriging have been recently proposed for calculating a...
International audienceGaussian process (GP) models have become a well-established framework for the ...
International audienceGaussian process (GP) models have become a well-established framework for the ...