DISCREPANCY BOUNDS FOR A CLASS OF NEGATIVELY DEPENDENT RANDOM POINTS INCLUDING LATIN HYPERCUBE SAMPLES

Autor(en): Gnewuch, Michael 
Hebbinghaus, Nils
Stichwörter: CONSTRUCTION; ERROR-BOUNDS; INTEGRATION; Latin hypercube sampling; Mathematics; MONTE-CARLO VARIANCE; Negatively dependent random variables; NUMBERS; padding by Monte Carlo; pre-asymptotic bounds; quasi-Monte Carlo Sampling; star discrepancy; STAR-DISCREPANCY; Statistics & Probability; TRACTABILITY; VARIABLES
Erscheinungsdatum: 2021
Herausgeber: INST MATHEMATICAL STATISTICS-IMS
Journal: ANNALS OF APPLIED PROBABILITY
Volumen: 31
Ausgabe: 4
Startseite: 1944
Seitenende: 1965
Zusammenfassung: 
We introduce a class of gamma-negatively dependent random samples. We prove that this class includes, apart from Monte Carlo samples, in particular Latin hypercube samples and Latin hypercube samples padded by Monte Carlo. For a gamma-negatively dependent N-point sample in dimension d we provide probabilistic upper bounds for its star discrepancy with explicitly stated dependence on N, d, and gamma. These bounds generalize the probabilistic bounds for Monte Carlo samples from Heinrich et al. (Acta Arith. 96 (2001) 279-302) and C. Aistleitner (J. Complexity 27 (2011) 531-540), and they are optimal for Monte Carlo and Latin hypercube samples. In the special case of Monte Carlo samples the constants that appear in our bounds improve substantially on the constants presented in the latter paper and in C. Aistleitner and M. T. Hofer (Math. Comp. 83 (2014) 1373-1381).
ISSN: 10505164
DOI: 10.1214/20-AAP1638

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