In scientific and engineering applications, often sufficient low-cost low-fidelity data is available while only a small fractional of high-fidelity data is accessible. The multi-fidelity model integrates a large set of low-cost but biased low-fidelity datasets with a small set of precise but high-cost high-fidelity data to make an accurate inference of quantities of interest. Under many circumstances, the number of model input dimensions is often high in real applications. To simplify the model, dimension reduction is often used. The gradient-free active subspace is employed in this research for dimension reduction. In this work, we build a predictive model for high-dimensional nonlinear problems by integrating the nonlinear multi-fidelity ...
Multi-fidelity approaches combine different models built on a scarce but accurate data-set (high-fid...
Much research has gone into scaling up classical machine learning algorithms such as Gaussian Proces...
International audienceWe introduce a method for the nonlinear dimension reduction of a high-dimensio...
In scientific and engineering applications, often sufficient low-cost low-fidelity data is available...
We propose a multifidelity dimension reduction method to identify a low-dimensional structure presen...
Multi-fidelity models are of great importance due to their capability of fusing information coming f...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
International audienceMulti-fidelity approaches improve the inference of a high-fidelity model which...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
International audienceThe statistical problem of estimating the effective dimension-reduction (EDR) ...
It is computationally expensive to predict reliability using physical models at the design stage if ...
We propose a general framework for dimension reduction in regression to fill the gap between linear ...
We propose a non-intrusive reduced basis (RB) method for parametrized nonlinear partial differential...
Uncertainty quantification (UQ) tasks, such as model calibration, uncertainty propagation, and optim...
© 2020 Society for Industrial and Applied Mathematics. Multivariate functions encountered in high-di...
Multi-fidelity approaches combine different models built on a scarce but accurate data-set (high-fid...
Much research has gone into scaling up classical machine learning algorithms such as Gaussian Proces...
International audienceWe introduce a method for the nonlinear dimension reduction of a high-dimensio...
In scientific and engineering applications, often sufficient low-cost low-fidelity data is available...
We propose a multifidelity dimension reduction method to identify a low-dimensional structure presen...
Multi-fidelity models are of great importance due to their capability of fusing information coming f...
Sufficient dimension reduction (SDR) methods target finding lower-dimensional representations of a m...
International audienceMulti-fidelity approaches improve the inference of a high-fidelity model which...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
International audienceThe statistical problem of estimating the effective dimension-reduction (EDR) ...
It is computationally expensive to predict reliability using physical models at the design stage if ...
We propose a general framework for dimension reduction in regression to fill the gap between linear ...
We propose a non-intrusive reduced basis (RB) method for parametrized nonlinear partial differential...
Uncertainty quantification (UQ) tasks, such as model calibration, uncertainty propagation, and optim...
© 2020 Society for Industrial and Applied Mathematics. Multivariate functions encountered in high-di...
Multi-fidelity approaches combine different models built on a scarce but accurate data-set (high-fid...
Much research has gone into scaling up classical machine learning algorithms such as Gaussian Proces...
International audienceWe introduce a method for the nonlinear dimension reduction of a high-dimensio...