1. Introduction
Limit theorems in probability theory probably originated with the result now called the De Moivre-Laplace theorem, originally obtained by De Moivre in 1733. Further developments in this area led to the emergence of a certain class of theorems under the general name “Central Limit Theorem” and numerous generalizations of these theorems. The main results of this direction are presented in the monograph by B.V. Gnedenko and V.Yu. Korolev [
1]. More recent results are given in [
2].
For the sums of random numbers of random variables, the topics of this communication, many results are similar to classical limit theorems of probability theory. However, there are, nevertheless, fundamental differences, one of which we would like to point out. It turns out that in the case of the summation of positive random variables with finite mean, a suitably chosen sequence of random sums yields a class of limit laws that is large and coincides with all probability distributions concentrated on the positive semiaxis.
2. Main Result
Theorem 2.1. Let be a sequence of independent identically distributed positive random variables having unit first moment, i.e. . Suppose that Y is an arbitrary positive random variable. Then there exists a family of nonnegative integer-valued random variables , depending on the distribution of Y only, and such that
-
1.
The family and X are independent;
-
2.
tends in probability to infinity as ;
-
3.
The random sum tends to Y in distribution as .
For the Proof, we need the following two Lemmas.
Lemma 2.1. Let be the Laplace transform of a distribution on the positive semiaxis. Then is a probability generating function.
Proof. (see [
3]). Suppose that
where
is a probability distribution function. Therefore
The series on the right-hand side has non-negative coefficients, and their sum is 1. □
Lemma 2.2. Let be a probability generating function. The function is probability generating function for all if and only if , where is Laplace transform of a probability distribution on positive semiaxis. While the transformation with , can be applied to every pgf, the case with is limited to scalable pgfs only. As shown in [4], the corresponding probability mass functions satisfy the relation . The class of scalable distributions consists, besides others, of negative binomial, shifted logarithmic, and discrete stable distributions.
Proof. 1. Suppose that
, where
is a Laplace transform of a probability distribution on the positive semiaxis. We have
and the statement follows from Lemma 2.1.
2. Suppose now the function is probability generating function for all . Let be the Laplace transform of a distribution with unit mean. Then is the Laplace transform of a distribution on the nonnegative semiaxis for all . Its limit as equals and is continuous at the point . Therefore, is the Laplace transform of a distribution on the nonnegative semiaxis. □
Proof of Theorem 2.1. Denote by
the Laplace transform of the positive random variable
Y. According to Lemma 2.1, define a family of probability generating functions
and let
be a family of corresponding random variables taking non-negative integer values. Clearly, we can construct the family to be independent of
X.
Let
be an arbitrary positive number and calculate the probability
. We have
where
is probability distribution function of
Y. Therefore,
For any fixed
and
we have
Therefore,
where
denotes integer part of
B. It means
as
, that is
converges to infinity in probability.
Consider the following random sum
. The Laplace transform of its distribution is
Here
is the Laplace transform of the distribution of
and we have used the fact
. □
Note that Theorem 2.1 gives possible limit distributions for the random sums, which are not necessarily stable. The finding analogues of stable distributions for sums of a random number of random variables is more complicated. Some results in this direction are given in [
5]
References
- Gnedenko, B.V.; Korolev, V.Yu. Random summation: limit theorems and applications; CRC Press, Taylor & Francis Group: Boca Raton, 1996. [Google Scholar] [CrossRef]
- Korolev, V.Yu; Dorofeyeva, A.V. On nonuniform estimates of accuracy of normal approximation for distributions of some random sums under relaxed moment conditions. Informatics and its Applications 2018, 12, 86–91. [Google Scholar] [CrossRef]
- Klebanov, L.B. On Normalization of Integer-Valued Random Variables. Journal of Mathematical Sciences 2024, 281, 94–99. [Google Scholar] [CrossRef]
- Klebanov Lev, B. and Šumbera Michal. On Sibuya-like distributions in branching and birth-and-death processes. arXiv:2204.08871.
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