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Strong laws of large numbers for negatively dependent random variables under sublinear expectations

机译:在Sublinear期望下,对额外依赖随机变量的大量规律

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摘要

Recently, more and more researchers are interested in the investigation of strong laws of large numbers (SLLNs) under non additive probability. This article introduces a concept of negative dependence under sublinear expectations to investigate the SLLNs when the smallest subscript of random variables in the sample mean can change. It proves that all the cluster points of that kind of sample mean lie between an interval related to lower and upper means (or limits of sums of lower and upper means) of random variables with probability one under a lower probability.
机译:最近,越来越多的研究人员对在非加度概率下调查大量(SLLNS)的强大法律感兴趣。本文在Sublinear期望下介绍了负依赖性的概念,以调查SLLNS当样本均值中的随机变量最小的下标可以发生变化时。它证明了这种样本的所有聚类点意味着在与较低概率下具有概率的随机变量的较低和上部手段(或下层和上部和上层和上部和上部和上部和上部和上部的限制)之间的间隔。

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