Polynomial tractability for integration in an unweighted function space with absolutely convergent Fourier series
Takashi Goda

TL;DR
This paper proves polynomial tractability for multivariate integration in a specific unweighted function space with absolutely convergent Fourier series, using an explicit quasi-Monte Carlo rule, contrasting with typical curse of dimensionality results.
Contribution
The paper establishes polynomial tractability for integration in an unweighted Fourier-based function space and provides a constructive quasi-Monte Carlo method for error control.
Findings
Polynomial growth of function evaluations with respect to dimension and error tolerance.
Contrasts with non-tractability in similar unweighted spaces.
Explicit quasi-Monte Carlo rule achieves desired error bounds.
Abstract
In this note, we prove that the following function space with absolutely convergent Fourier series \[ F_d:=\left\{ f\in L^2([0,1)^d)\:\middle| \: \|f\|:=\sum_{\boldsymbol{k}\in \mathbb{Z}^d}|\hat{f}(\boldsymbol{k})| \max\left(1,\min_{j\in \mathrm{supp}(\boldsymbol{k})}\log |k_j|\right) <\infty \right\}\] with being the -th Fourier coefficient of and is polynomially tractable for multivariate integration in the worst-case setting. Here polynomial tractability means that the minimum number of function evaluations required to make the worst-case error less than or equal to a tolerance grows only polynomially with respect to and . It is important to remark that the function space is unweighted, that is, all variables contribute…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsMathematical Approximation and Integration · Mathematical functions and polynomials
