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CORRECTION TO "QUASI-MONTE CARLO METHODS FOR HIGH-DIMENSIONAL INTEGRATION: THE STANDARD (WEIGHTED HILBERT SPACE) SETTING AND BEYOND”

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ANZIAM J.53(2012), 251 doi:10.1017/S1446181112000144

CORRECTION TO

“QUASI-MONTE CARLO METHODS FOR

HIGH-DIMENSIONAL INTEGRATION: THE STANDARD

(WEIGHTED HILBERT SPACE) SETTING AND BEYOND”

F. Y. KUO

1

, CH. SCHWAB

2

and I. H. SLOAN

˛1

The following change should be made to [

1

].

In the final sentence on page 34, O(sN ln N) should be replaced by

O(sN ln N

+ s

2

N).

Reference

[1] F. Y. Kuo, Ch. Schwab and I. H. Sloan, “Quasi Monte-Carlo methods for high-dimensional integration: the standard (weighted Hilbert space) setting and beyond”, ANZIAM J. 53 (2011) 1–37; doi:10.1017/S1446181112000077.

1School of Mathematics and Statistics, University of New South Wales, Sydney NSW 2052, Australia;

e-mail:f.kuo@unsw.edu.au, i.sloan@unsw.edu.au.

2Seminar for Applied Mathematics, ETH Z¨urich, ETH Zentrum, HG G57.1, CH8092 Z¨urich,

Switzerland; e-mail:christoph.schwab@sam.math.ethz.ch. c

Australian Mathematical Society 2012, Serial-fee code 1446-1811/2012 $16.00

251

at https:/www.cambridge.org/core/terms. https://doi.org/10.1017/S1446181112000144

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