Long match patterns in random sequences

Article


Novak, S. 1995. Long match patterns in random sequences. Siberian Adv. Math.. 5 (3), pp. 128-140.
TypeArticle
TitleLong match patterns in random sequences
AuthorsNovak, S.
Abstract

We evaluate the accuracy of Poisson approximation for the distribution of the number of long r-interrupted match patterns in two sequences of independent random variables.

JournalSiberian Adv. Math.
Publication dates
Print1995
Publication process dates
Deposited23 Sep 2016
Accepted29 Dec 1993
Output statusPublished
Additional information

Novak S.Y. (1995) Long match patterns in random sequences. – Siberian Adv. Math., v. 5, No 3, 128–140.

LanguageEnglish
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