A conditional limit theorem for independent random variables

11/18/2018
by   Dimbihery Rabenoro, et al.
0

In this paper, we prove a conditional limit theorem for independent not necessarily identically distributed random variables. Namely, we obtain the asymptotic distribution of a large number of them given the sum.

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