Asymptotics of the distribution of the ratio of sums of random variables

Article


Novak, S. and Utev, S. 1990. Asymptotics of the distribution of the ratio of sums of random variables. Siberian Mathematical Journal. 31 (5), pp. 781-788. https://doi.org/10.1007/BF00974491
TypeArticle
TitleAsymptotics of the distribution of the ratio of sums of random variables
AuthorsNovak, S. and Utev, S.
Abstract

We present results of the asymptotics of the mean and variance of the ratio of sums of random variables.

PublisherKluwer Academic Publishers-Plenum Publishers
JournalSiberian Mathematical Journal
ISSN0037-4466
Electronic1573-9260
Publication dates
PrintSep 1990
Publication process dates
Deposited10 Oct 2016
Accepted23 May 1988
Output statusPublished
Additional information

Novak S.Y. and Utev S.A. (1990) On the asymptotic distribution of the ratio of sums of random variables. – Siberian Math. J., v. 31, 781–788.

Digital Object Identifier (DOI)https://doi.org/10.1007/BF00974491
LanguageEnglish
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