On the law of large numbers for free identically distributed random variables
نویسنده
چکیده
A version of law of large numbers for free identically distributed random variables is considering at this work. It shown that lim t→∞ t μ (x : |x| > t) = 0 is a sufficient and necessary condition for the weak law of large numbers for the sequence X1, X2, ..., free random variables. 2000 Mathematical Subject Classification: 45L54, 60F05, 47C15
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تاریخ انتشار 2008