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High-dimensional integration: The quasi-Monte Carlo way

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TLDR
A survey of recent developments in lattice methods, digital nets, and related themes can be found in this paper, where the authors present a contemporary review of QMC (quasi-Monte Carlo) methods, that is, equalweight rules for the approximate evaluation of high-dimensional integrals over the unit cube [0, 1] s, w heres may be large, or even infinite.
Abstract
This paper is a contemporary review of QMC (‘quasi-Monte Carlo’) methods, that is, equal-weight rules for the approximate evaluation of high-dimensional integrals over the unit cube [0, 1] s ,w heres may be large, or even infinite. After a general introduction, the paper surveys recent developments in lattice methods, digital nets, and related themes. Among those recent developments are methods of construction of both lattices and digital nets, to yield QMC rules that have a prescribed rate of convergence for sufficiently smooth functions, and ideally also guaranteed slow growth (or no growth) of the worst-case error as s increases. A crucial role is played by parameters called ‘weights’, since a careful use of the weight parameters is needed to ensure that the worst-case errors in an appropriately weighted function space are bounded, or grow only slowly, as the dimension s increases. Important tools for the analysis are weighted function spaces, reproducing kernel Hilbert spaces, and discrepancy, all of which are discussed with an appropriate level of detail.

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Journal ArticleDOI

A Subdomain Approach for Uncertainty Quantification of Long Time Horizon Random Processes

TL;DR: In this paper , the authors proposed a new approach to generate time trajectories (sample functions) of a random process using KL expansion, if the time horizon (duration) is much larger than the process correlation length.
Journal ArticleDOI

A note on concatenation of quasi-Monte Carlo and plain Monte Carlo rules in high dimensions

TL;DR: In this paper , a concatenation of quasi-Monte Carlo and plain Monte Carlo rules for high-dimensional numerical integration in weighted function spaces was studied, and it was shown that almost the optimal order of the mean squared worst-case error is achieved by concatenated quadrature rules as long as $d$ scales at most linearly with the number of points.
Journal ArticleDOI

Approximating multiple integrals of continuous functions by $$\delta $$ δ -uniform curves

TL;DR: This work presents a method to approximate, with controlled and arbitrarily small error, multiple intregrals over the unit cube by a single variable integral over [0, 1] by using the so called delta curves, which are a particular case of -dense curves.

zoNNscan: A Boundary-Entropy Index for Zone Inspection of Neural Models

TL;DR: The zoNNscan index as discussed by the authors is an index that is intended to inform on the boundary uncertainty (in terms of the presence of other classes) around one given input datapoint.
Posted Content

A higher order perturbation approach for electromagnetic scattering problems on random domains

TL;DR: In this article, a perturbation analysis for the mean of the scattered field is presented, based on the knowledge of the two-point correlation of the domain boundary variations around a reference domain.
References
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TL;DR: This chapter discusses Convergence: Weak, Almost Uniform, and in Probability, which focuses on the part of Convergence of the Donsker Property which is concerned with Uniformity and Metrization.
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TL;DR: This chapter discusses Monte Carlo methods and Quasi-Monte Carlo methods for optimization, which are used for numerical integration, and their applications in random numbers and pseudorandom numbers.