Sparse Polynomial Chaos Expansions via Compressed Sensing and D-optimal Design
Paul Diaz, Alireza Doostan, and Jerrad Hampton

TL;DR
This paper introduces DSP, a sequential greedy algorithm that improves sparse polynomial chaos expansions by adaptively selecting experimental designs based on coefficient importance and optimal sampling strategies, reducing computational costs.
Contribution
The paper presents a novel adaptive greedy algorithm, DSP, integrating optimal experimental design and importance sampling for enhanced sparse polynomial chaos approximation.
Findings
DSP outperforms non-adaptive methods in accuracy and variability.
Optimal sampling strategies significantly improve coefficient estimation.
The method is validated on physical models and manufactured expansions.
Abstract
In the field of uncertainty quantification, sparse polynomial chaos (PC) expansions are commonly used by researchers for a variety of purposes, such as surrogate modeling. Ideas from compressed sensing may be employed to exploit this sparsity in order to reduce computational costs. A class of greedy compressed sensing algorithms use least squares minimization to approximate PC coefficients. This least squares problem lends itself to the theory of optimal design of experiments (ODE). Our work focuses on selecting an experimental design that improves the accuracy of sparse PC approximations for a fixed computational budget. We propose DSP, a novel sequential design, greedy algorithm for sparse PC approximation. The algorithm sequentially augments an experimental design according to a set of the basis polynomials deemed important by the magnitude of their coefficients, at each iteration.…
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