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Journal ArticleDOI

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

Statistical methods for analysis of combined biomarker data from multiple nested case-control studies.

TL;DR: This article developed two calibration methods, the exact calibration method and approximate calibration method, for pooling biomarker data drawn from nested or matched case-control studies, where the calibration subset is obtained by randomly selecting controls from each contributing study.
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Equivalence between Sobolev spaces of first-order dominating mixed smoothness and unanchored ANOVA spaces on $\mathbb{R}^d$.

TL;DR: In this article, it was shown that a variant of the classical Sobolev space of first-order dominating mixed smoothness is equivalent to the unanchored ANOVA space for a certain condition.
Book ChapterDOI

Stochastic Dynamic Analysis of Large-Scale Nonlinear Structures

TL;DR: In this paper, a direct probability integral method (DPIM) is proposed to synchronously attack the problem of structural stochastic response and dynamic reliability analyses in an efficient and accurate way.

Uncertainty quantification with dependent inputs: Wind and waves

TL;DR: A framework for performing uncertainty quantification is presented which is well-suited for systems with dependent inputs with unknown distributions, and for each of the elements in the framework (dependency analysis, sample selection and sensitivity analysis), recently developed new methods are combined for the first time.
References
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Book

Spline models for observational data

Grace Wahba
TL;DR: In this paper, a theory and practice for the estimation of functions from noisy data on functionals is developed, where convergence properties, data based smoothing parameter selection, confidence intervals, and numerical methods are established which are appropriate to a number of problems within this framework.
Journal ArticleDOI

Theory of Reproducing Kernels.

TL;DR: In this paper, a short historical introduction is given to indicate the different manners in which these kernels have been used by various investigators and discuss the more important trends of the application of these kernels without attempting, however, a complete bibliography of the subject matter.
Book

Stochastic Finite Elements: A Spectral Approach

TL;DR: In this article, a representation of stochastic processes and response statistics are represented by finite element method and response representation, respectively, and numerical examples are provided for each of them.
BookDOI

Weak Convergence and Empirical Processes

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.
Book

Random number generation and quasi-Monte Carlo methods

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.