In Numerical Analysis, several discrepancies have been introduced to test that a sample of n points in the unit hypercube [0,1]d comes from a uniform distribution. An outstanding example is given by Hickernell’s generalized Lp−discrepancies, that constitute a generalization of the Kolmogorov-Smirnov and the Cramér-von Mises statistics. These discrepancies can be used in numerical integration by Monte Carlo and quasi-Monte Carlo methods, design of experiments, uniformity and goodness of fit tests. In this paper, after having recalled some necessary asymptotic results derived in companion papers, we show that the case of L2−discrepancies is more convenient to handle and we provide a new computational approximation of their asymptotic distribution. As an illustration, we show that our algorithm is able to recover the tabulated asymptotic distribution of the Cramér-von Mises statistic. The results so obtained are very general and can be applied with minor modifications to other discrepancies, such as the diaphony, the weighted spectral test, the Fourier discrepancy and the class of chi-square tests.

The Asymptotic Distribution of Quadratic Discrepancies

SERI, RAFFAELLO
2006-01-01

Abstract

In Numerical Analysis, several discrepancies have been introduced to test that a sample of n points in the unit hypercube [0,1]d comes from a uniform distribution. An outstanding example is given by Hickernell’s generalized Lp−discrepancies, that constitute a generalization of the Kolmogorov-Smirnov and the Cramér-von Mises statistics. These discrepancies can be used in numerical integration by Monte Carlo and quasi-Monte Carlo methods, design of experiments, uniformity and goodness of fit tests. In this paper, after having recalled some necessary asymptotic results derived in companion papers, we show that the case of L2−discrepancies is more convenient to handle and we provide a new computational approximation of their asymptotic distribution. As an illustration, we show that our algorithm is able to recover the tabulated asymptotic distribution of the Cramér-von Mises statistic. The results so obtained are very general and can be applied with minor modifications to other discrepancies, such as the diaphony, the weighted spectral test, the Fourier discrepancy and the class of chi-square tests.
2006
H. Niederreiter, D. Talay
Monte Carlo and Quasi-Monte Carlo Methods 2004
61
76
16
Esperti anonimi
Springer Verlag
GERMANIA
9783540255413
Inglese
268
info:eu-repo/semantics/bookPart
Choirat, C.; Seri, Raffaello
none
Contributo specifico in volume::Articolo in Volume
2
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11383/1503512
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