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首页> 外文期刊>Stochastic Processes and Their Applications: An Official Journal of the Bernoulli Society for Mathematical Statistics and Probability >On the central limit theorem for negatively correlated random variables with negatively correlated squares
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On the central limit theorem for negatively correlated random variables with negatively correlated squares

机译:具有负相关平方的负相关随机变量的中心极限定理

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Using Stein's method, assuming Lindeberg's condition, we find a necessary and sufficient condition for the central limit theorem to hold for an array of random variables such that the variables in each row are negatively correlated (i.e., every pair has negative covariance) and their squares are also negatively correlated (in fact, a somewhat more general result is shown). In particular, we obtain a necessary and sufficient condition for the central limit theorem to hold for an array of pairwise independent random variables satisfying Lindeberg's condition. A collection of random variables is said to be jointly symmetric if finite-dimensional joint distributions do not change when a subset of the variables is multiplied by -1. A corollary of our main result is that the central limit theorem holds for pairwise independent jointly symmetric random variables under Lindeberg's condition. We also prove a central limit theorem for a triangular array of variables satisfying some size constraints and where the n variables in each row are phi(n)-tuplewise independent, i.e., every subset of cardinality no greater than phi(n) is independent, where phi is a function such that phi(n)(1/2) infinity. (C) 2000 Elsevier Science B.V. All rights reserved. [References: 19]
机译:使用斯坦因的方法,假设林德伯格的条件,我们找到了一个中心极限定理满足一个随机变量数组的必要充要条件,使得每一行中的变量均呈负相关(即,每对变量均具有负协方差),并且它们的平方也呈负相关(实际上,显示的结果更为普遍)。特别是,我们获得了中心极限定理要满足满足Lindeberg条件的成对独立随机变量数组的充要条件。如果将变量的子集乘以-1时有限维联合分布不变,则称随机变量集合是联合对称的。我们主要结果的推论是,在Lindeberg条件下,中心极限定理适用于成对独立的联合对称随机变量。我们还证明了满足一些大小约束的变量的三角形阵列的中心极限定理,其中每行中的n个变量是phi(n)-多元独立的,即,不大于phi(n)的基数的每个子集都是独立的,其中phi是使phi(n)/ n(1/2)无穷大的函数。 (C)2000 Elsevier Science B.V.保留所有权利。 [参考:19]

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