AbstractWe compare sequential and non-sequential designs for estimating linear functionals in the statistical setting, where experimental observations are contaminated by random noise. It is known that sequential designs are no better in the worst case setting for convex and symmetric classes, as well as in the average case setting with Gaussian distributions.In the statistical setting the opposite is true. That is, sequential designs can be significantly better. Moreover, by using sequential designs one can obtain much better estimators for noisy data than for exact data. In this way, problems that are computationally intractable for exact data may become tractable for noisy data. These results hold because adaptive observations and noise ...
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 ...
International audienceThis work investigates the problem of construction of designs for estimation a...
AbstractWe compare sequential and non-sequential designs for estimating linear functionals in the st...
If an experiment is designed sequentially, repeated-sampling inference may not necessarily be made u...
If an experiment is designed sequentially, repeated-sampling inference may not necessarily be made u...
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...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
This work investigates the problem of construction of designs for estimation and discrimination betw...
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 ...
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 ...
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 ...
International audienceThis work investigates the problem of construction of designs for estimation a...
AbstractWe compare sequential and non-sequential designs for estimating linear functionals in the st...
If an experiment is designed sequentially, repeated-sampling inference may not necessarily be made u...
If an experiment is designed sequentially, repeated-sampling inference may not necessarily be made u...
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...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
Properties of sequential designs for nonlinear regression and related problems are investigated. One...
This work investigates the problem of construction of designs for estimation and discrimination betw...
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 ...
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 ...
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 ...
International audienceThis work investigates the problem of construction of designs for estimation a...