On the Convergence Rate of the Law of Large Numbers for Sums of Dependent Random Variables
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Abstract:
In this paper, we generalize some results of Chandra and Goswami [4] for pairwise negatively dependent random variables (henceforth r.v.’s). Furthermore, we give Baum and Katz’s [1] type results on estimate for the rate of convergence in these laws.
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Journal title
volume 17 issue 3
pages -
publication date 2006-09-01
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