A multivariate central limit theorem for randomized orthogonal array sampling designs in computer experiments

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Abstract

Let f : [0, 1)d → ℝ be an integrable function. An objective of many computer experiments is to estimate ∫[0, 1)d f(x)dx by evaluating f at a finite number of points in [0,1)d. There is a design issue in the choice of these points and a popular choice is via the use of randomized orthogonal arrays. This article proves a multivariate central limit theorem for a class of randomized orthogonal array sampling designs [Owen Statist. Sinica 2 (1992a) 439-452] as well as for a class of OA-based Latin hypercubes [Tang J. Amer. Statist. Assoc. 81 (1993) 1392-1397]. © Institute of Mathematical Statistics, 2008.

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APA

Loh, W. L. (2008). A multivariate central limit theorem for randomized orthogonal array sampling designs in computer experiments. Annals of Statistics, 36(4), 1983–2023. https://doi.org/10.1214/07-AOS530

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