4.2 Article

Stable high-order randomized cubature formulae in arbitrary dimension

Journal

JOURNAL OF APPROXIMATION THEORY
Volume 275, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jat.2022.105706

Keywords

Multivariate integration; Cubature formula; Error analysis; Convergence rate; Randomized linear algebra

Categories

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This paper proposes and analyzes a randomized cubature formula for efficient numerical integration. The formula is exact and stable on a finite-dimensional subspace, with error estimates in both preasymptotic and asymptotic regimes. It can be seen as a variance reduction technique for a Monte Carlo estimator, offering significant variance reduction and spectral convergence advantages.
We propose and analyse randomized cubature formulae for the numerical integration of functions with respect to a given probability measure mu defined on a domain Gamma c Rd, in any dimension d. Each cubature formula is exact on a given finite-dimensional subspace Vn C L2(Gamma, mu) of dimension n, and uses pointwise evaluations of the integrand function phi : Gamma -> R at m > n independent random points. These points are drawn from a suitable auxiliary probability measure that depends on Vn. We show that, up to a logarithmic factor, a linear proportionality between m and n with dimension-independent constant ensures stability of the cubature formula with high probability. We also prove error estimates in probability and in expectation for any n > 1 and m > n, thus covering both preasymptotic and asymptotic regimes. Our analysis shows that the expected cubature error decays as ./n/m times the L2(Gamma, mu)-best approximation error of phi in Vn. On the one hand, for fixed n and m -> oo our cubature formula can be seen as a variance reduction technique for a Monte Carlo estimator, and can lead to enormous variance reduction for smooth integrand functions and subspaces Vn with spectral approximation properties. On the other hand, when n, m -> oo, our cubature becomes of high order with spectral convergence. As a further contribution, we analyse also another cubature whose expected error decays as ./1/m times the L2(Gamma, mu)-best approximation error of phi in Vn, but with constants that can be larger in the preasymptotic regime. Finally we show that, under a more demanding (at least quadratic) proportionality between m and n, all the weights of the cubature are strictly positive with high probability. As an example of application, we discuss the case where the domain Gamma has the structure of Cartesian product, mu is a product measure on Gamma and Vn contains algebraic multivariate polynomials. (c) 2022 Elsevier Inc. All rights reserved.

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