Automatic selection of basis-adaptive sparse polynomial chaos expansions for engineering applications
Nora L\"uthen, Stefano Marelli, Bruno Sudret

TL;DR
This paper evaluates and compares state-of-the-art basis-adaptive sparse polynomial chaos expansion methods for engineering surrogate modeling, introducing an automatic selection scheme that enhances robustness and accuracy across various models.
Contribution
It provides a comprehensive benchmark of existing methods and proposes a novel automatic solver and basis adaptivity selection scheme based on cross-validation error.
Findings
Choice of solver and adaptivity scheme greatly impacts performance.
No single method dominates across all problem classes.
Automatic selection scheme yields near-optimal, robust results.
Abstract
Sparse polynomial chaos expansions (PCE) are an efficient and widely used surrogate modeling method in uncertainty quantification for engineering problems with computationally expensive models. To make use of the available information in the most efficient way, several approaches for so-called basis-adaptive sparse PCE have been proposed to determine the set of polynomial regressors ("basis") for PCE adaptively. The goal of this paper is to help practitioners identify the most suitable methods for constructing a surrogate PCE for their model. We describe three state-of-the-art basis-adaptive approaches from the recent sparse PCE literature and conduct an extensive benchmark in terms of global approximation accuracy on a large set of computational models. Investigating the synergies between sparse regression solvers and basis adaptivity schemes, we find that the choice of the proper…
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