© 2020 Society for Industrial and Applied Mathematics. Multivariate functions encountered in high-dimensional uncertainty quantification problems often vary most strongly along a few dominant directions in the input parameter space. We propose a gradient-based method for detecting these directions and using them to construct ridge approximations of such functions, in the case where the functions are vector-valued (e.g., taking values in Rn). The methodology consists of minimizing an upper bound on the approximation error, obtained by subspace Poincaré inequalities. We provide a thorough mathematical analysis in the case where the parameter space is equipped with a Gaussian probability measure. The resulting method generalizes the notion of ...
International audienceWe propose a novel natural gradient based stochastic search algorithm, VD-CMA,...
We present a technique to perform dimensionality reduction on data that is subject to uncertainty. O...
In order to reduce the dimension of input vectors before construction of ap-proximation MAVE-type me...
© 2020 Society for Industrial and Applied Mathematics. Multivariate functions encountered in high-di...
Multivariate functions encountered in high-dimensional uncertainty quantification problems often var...
Approximation of multivariate functions is a difficult task when the number of input parameters is l...
Ridge functions have recently emerged as a powerful set of ideas for subspace-based dimension reduct...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...
We propose a multifidelity dimension reduction method to identify a low-dimensional structure presen...
Uncertainty quantification (UQ) tasks, such as model calibration, uncertainty propagation, and optim...
Many multivariate functions in engineering models vary primarily along a few directions in the space...
In scientific and engineering applications, often sufficient low-cost low-fidelity data is available...
In this work we develop an adaptive and reduced computational algorithm based on dimension-adaptive ...
We introduce a method for the nonlinear dimension reduction of a high-dimensional function $u:\mathb...
In many areas of science and technology, there is a need for effective procedures for approximating ...
International audienceWe propose a novel natural gradient based stochastic search algorithm, VD-CMA,...
We present a technique to perform dimensionality reduction on data that is subject to uncertainty. O...
In order to reduce the dimension of input vectors before construction of ap-proximation MAVE-type me...
© 2020 Society for Industrial and Applied Mathematics. Multivariate functions encountered in high-di...
Multivariate functions encountered in high-dimensional uncertainty quantification problems often var...
Approximation of multivariate functions is a difficult task when the number of input parameters is l...
Ridge functions have recently emerged as a powerful set of ideas for subspace-based dimension reduct...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...
We propose a multifidelity dimension reduction method to identify a low-dimensional structure presen...
Uncertainty quantification (UQ) tasks, such as model calibration, uncertainty propagation, and optim...
Many multivariate functions in engineering models vary primarily along a few directions in the space...
In scientific and engineering applications, often sufficient low-cost low-fidelity data is available...
In this work we develop an adaptive and reduced computational algorithm based on dimension-adaptive ...
We introduce a method for the nonlinear dimension reduction of a high-dimensional function $u:\mathb...
In many areas of science and technology, there is a need for effective procedures for approximating ...
International audienceWe propose a novel natural gradient based stochastic search algorithm, VD-CMA,...
We present a technique to perform dimensionality reduction on data that is subject to uncertainty. O...
In order to reduce the dimension of input vectors before construction of ap-proximation MAVE-type me...