arXiv Analytics

Sign in

arXiv:1408.5291 [math.PR]AbstractReferencesReviewsResources

Rosenthal's inequalities for independent and negatively dependent random variables under sub-linear expectations with applications

Li-Xin Zhang

Published 2014-08-22Version 1

Classical Kolmogorov's and Rosenthal's inequalities for the maximum partial sums of random variables are basic tools for studying the strong laws of large numbers. In this paper, motived by the notion of independent and identically distributed random variables under the sub-linear expectation initiated by Peng (2006, 2008b), we introduce the concept of negative dependence of random variables and establish Kolmogorov's and Rosenthal's inequalities for the maximum partial sums of negatively dependent random variables under the sub-linear expectations. As an application, we show that Kolmogorov's strong law of larger numbers holds for independent and identically distributed under a continuous sub-linear expectation if and only if the corresponding Choquet integral is finite.

Related articles: Most relevant | Search more
arXiv:1712.08279 [math.PR] (Published 2017-12-22)
Three series theorem for independent random variables under sub-linear expectations with applications
arXiv:2408.10662 [math.PR] (Published 2024-08-20)
Convergence rate in the law of logarithm for negatively dependent random variables under sub-linear expectations
arXiv:1902.10872 [math.PR] (Published 2019-02-28)
The convergence of the sums of independent random variables under the sub-linear expectations