Randomized pick-freeze for sparse Sobol indices estimation in high dimension
Abstract
This article investigates a new procedure to estimate the influence of each variable of a given function defined on a high-dimensional space. More precisely, we are concerned with describing a function of a large number p of parameters that depends only on a small number s of them. Our proposed method is an unconstrained 1-minimization based on the Sobol's method. We prove that, with only O(s p) evaluations of f, one can find which are the relevant parameters.
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