ON THE LAWS OF LARGE NUMBERS FOR DEPENDENT RANDOM VARIABLES

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In this paper, we extend and generalize some recent results on the strong laws of large numbers (SLLN) for pairwise independent random variables [3]. No assumption is made concerning the existence of independence among the random variables (henceforth r.v.’s). Also Chandra’s result on Cesàro uniformly integrable r.v.’s is extended.

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Journal title

volume 14  issue 3

pages  -

publication date 2003-09-01

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