TL;DR
This paper introduces coherence-based sampling strategies for Polynomial Chaos regression, providing convergence guarantees and demonstrating improved accuracy in high-dimensional uncertainty quantification problems.
Contribution
It proposes a coherence-optimal sampling method for PC expansions, with theoretical convergence analysis and practical benefits over traditional sampling schemes.
Findings
Coherence parameter bounds for Hermite and Legendre polynomials.
Importance sampling distributions with weaker dependence on polynomial order.
Numerical experiments showing improved accuracy with coherence-optimal sampling.
Abstract
Independent sampling of orthogonal polynomial bases via Monte Carlo is of interest for uncertainty quantification of models, using Polynomial Chaos (PC) expansions. It is known that bounding the spectral radius of a random matrix consisting of PC samples, yields a bound on the number of samples necessary to identify coefficients in the PC expansion via solution to a least-squares regression problem. We present a related analysis which guarantees a mean square convergence using a coherence parameter of the sampled PC basis that may be both analytically bounded and computationally estimated. Utilizing asymptotic results for orthogonal polynomials, we bound the coherence parameter for polynomials of Hermite and Legendre type under each respective natural sampling distribution. In both polynomial bases we identify an importance sampling distribution which yields a bound with weaker…
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