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Article

Randomly Stopped Sums with Generalized Subexponential Distribution

by
Jūratė Karasevičienė
and
Jonas Šiaulys
*
Institute of Mathematics, Vilnius University, Naugarduko 24, LT-03225 Vilnius, Lithuania
*
Author to whom correspondence should be addressed.
Axioms 2023, 12(7), 641; https://doi.org/10.3390/axioms12070641
Submission received: 24 May 2023 / Revised: 20 June 2023 / Accepted: 25 June 2023 / Published: 28 June 2023
(This article belongs to the Special Issue Mathematical and Statistical Methods and Their Applications)

Abstract

:
Let { ξ 1 , ξ 2 , } be a sequence of independent possibly differently distributed random variables, defined on a probability space ( Ω , F , P ) with distribution functions { F ξ 1 , F ξ 2 , } . Let η be a counting random variable independent of sequence { ξ 1 , ξ 2 , } . In this paper, we find conditions under which the distribution function of randomly stopped sum S η = ξ 1 + ξ 2 + + ξ η belongs to the class of generalized subexponential distributions.

1. Introduction

Let { ξ 1 , ξ 2 , } be a sequence of independent random variables (r.v.s) with distribution functions (d.f.s) { F ξ 1 , F ξ 2 , } , and let η be a counting random variable, that is, a nonnegative, nondegenerate at 0, and integer-valued r.v. In addition, we suppose that the r.v. η and the sequence { ξ 1 , ξ 2 , } are independent.
Let S 0 : = 0 , S n : = ξ 1 + + ξ n for n N , and let
S η = k = 1 η ξ k
be the randomly stopped sum of the r.v.s ξ 1 , ξ 2 ,
By F S η we denote the d.f. of S η , and, by F ¯ , we denote the tail function (t.f.) of a d.f. F, that is, F ¯ ( x ) = 1 F ( x ) for x R . It is obvious that the following equalities hold for positive x:
F S η ( x ) = P ( η = 0 ) + n = 1 P ( η = n ) P ( S n x ) , F ¯ S η ( x ) = n = 1 P ( η = n ) P ( S n > x ) .
In this paper, we consider a sequence { ξ 1 , ξ 2 , } of independent and possibly nonidentically distributed r.v.s. We suppose that some of the d.f.s of these r.v.s belong to the class of generalized subexponential distributions OS , and we find conditions under which d.f. F S η remains in this class.
We use the following notations for the asymptotic relations of arbitrary positive functions f and g: f ( x ) = o g ( x ) means that lim x f ( x ) / g ( x ) = 0 ; f ( x ) x c g ( x ) , c > 0 , means that lim x f ( x ) / g ( x ) = c ; f ( x ) = O g ( x ) means that lim sup x f ( x ) g ( x ) < ; and f ( x ) x g ( x ) means that
0 < lim inf x f ( x ) g ( x ) lim sup x f ( x ) g ( x ) < .
The rest of the paper is organized as follows. In Section 2, we describe a class of generalized subexponential distributions. Section 4 consists of some results on closure under randomly stopped sums for regularity classes related with generalized subexponential distributions. The main results of the paper are formulated in Section 3. The proofs of the main results are given in Section 5 and Section 6. Finally, in Section 7, we provide two examples to expose the analytical usefulness of our results, and in Section 8, we present short conclusions.

2. Generalized Subexponentiality

Let ξ be an r.v. defined on a probability space ( Ω , F , P ) with d.f. F ξ .
  • A d.f. F ξ of a real-valued r.v. is said to be generalized subexponential, denoted F ξ OS , if
    lim sup x F ξ F ξ ¯ ( x ) F ¯ ξ ( x ) < ,
    where F ξ F ξ denote the convolution of d.f. F ξ with itself, i.e.,
    F ξ F ξ ( x ) = F ξ 2 ( x ) : = F ξ ( x y ) d F ξ ( y ) , x R .
For distributions of nonnegative r.v.s, class OS was introduced by Klüppelberg [1] and later, for real-valued r.v.s, was studied by Shimura and Watanabe [2], Baltrūnas et al. [3], Watanabe and Yamamuro [4], Yu and Wang [5], Cheng and Wang [6], Lin and Wang [7], Konstantinides et al. [8], and Mikutavičius and Šiaulys [9], among others.
In [2], the class of distributions OS is considered together with other distribution regularity classes. In that paper, several closedness properties of the class OS were proven. For example, it is shown that the class OS is not closed under convolution roots. This means that there exists r.v. ξ such that n-fold convolution F ξ n OS for all n 2 , but F ξ OS . In [3], the simple conditions are provided under which a d.f. of the special form
F ξ ( x ) = 1 exp 0 x q ( u ) d u
belongs to the class OS , where q is some integrable hazard rate function. For distributions of class OS , the closure under tail-equivalence and the closure under convolution are established in [4]. The detailed proofs of these closures for nonnegative r.v.s are presented in [1] and, for real-valued r.v.s, in [5]. The closure under convolution means that, in the case of independent r.v.s ξ 1 , ξ 2 , conditions F ξ 1 OS , F ξ 2 OS imply that F ξ 1 F ξ 2 = F ξ 1 + ξ 2 OS . The closure under tail-equivalence means that conditions F ξ 1 OS , F ¯ ξ 1 ( x ) x F ¯ ξ 2 ( x ) imply F ξ 2 OS .
A counterexample, showing that F ξ 1 , F ξ 2 OS for independent r.v.s ξ 1 , ξ 2 does not imply F ξ 1 ξ 2 OS , can be found in [7]. Moreover in that paper, the closure under minimum is established, which means that F ξ 1 , F ξ 2 OS , for independent r.v.s ξ 1 , ξ 2 , imply F ξ 1 ξ 2 OS . The authors of articles [8,9] consider when the distribution of the product of two independent random variables ξ , θ belongs to the class OS . For instance, in [9], it is proven that d.f. F ξ θ is generalized subexponential if F ξ OS and θ is nonnegative and nondegenerate at point zero.

3. Main Results

In this section, we formulate two theorems which are the main assertions of this paper. The first theorem deals with the case when the counting r.v. has a finite support.
Theorem 1.
Let { ξ 1 , ξ 2 , } be a sequence of independent r.v.s, and η be a counting r.v. independent of { ξ 1 , ξ 2 , } . If η is bounded, F ξ 1 OS , and, for other indices k 2 , either F ξ k OS or F ¯ ξ k ( x ) = O F ¯ ξ 1 ( x ) , then d.f. of randomly stopped sum F S η belongs to the class OS .
The case of unbounded support of counting r.v. is considered in the second theorem. In such a case, to be F S η OS , we need the counting random variable to have a light tail.
Theorem 2.
Let { η , ξ 1 , ξ 2 , } be independent r.v.s, where counting r.v. η is such that E e λ η < for all λ > 0 . Then, F S η O S , if F ξ 1 O S and one of the conditions below is satisfied:
( i ) P ( η = 1 ) > 0 and lim sup x sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) < ; ( ii ) 0 < lim inf x inf k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) lim sup x sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) < .
We present the proofs of both theorems in Section 6. According to the statements of these theorems, many random variables with generalized subexponential distributions can be constructed. We demonstrate such constructions in Section 7.

4. Similar Results for Related Regularity Classes

In this section, we describe several classes of distributions related to the class OS . For the described classes, we present some results on their closure with respect to a randomly stopped sum. We note that for some classes, the closedness of the randomly stopped sum is studied only in the case where the summands are identically distributed.
The class of generalized subexponential distributions is the direct generalization of
S ^ = γ 0 S ( γ ) ,
where S ( 0 ) = S is the class of the subexponential distributions and { S ( γ ) , γ > 0 } are the convolution equivalent distributions classes.
  • A d.f. F ξ of a nonnegative r.v. ξ is said to be subexponential, denoted F ξ S , if
    F ξ F ξ ¯ ( x ) x 2 F ¯ ξ ( x ) .
    A d.f. F ξ of a real-valued r.v. ξ is called subexponential if the positive part of d.f.
    F ξ + ( x ) = F ξ ( x ) I [ 0 , ) ( x )
    belongs to the class S .
The class of subexponential distributions was introduced by Chistyakov [10] and later considered by Athreya and Ney [11], Chover et al. [12,13], Embrechts and Goldie [14], Embrechts and Omey [15], Cline [16], and Cline and Samorodnitsky [17], among others.
  • A d.f. F ξ of a real-valued r.v. ξ is said to be convolution equivalent with parameter γ > 0 , denoted F ξ S ( γ ) , if the following requirements are satisfied:
    ( i ) F ^ ξ ( γ ) : = e γ x d F ξ ( x ) < ; ( ii ) lim x F ¯ ξ ( x y ) F ¯ ξ ( x ) = e γ y for all y > 0 ; ( iii ) lim x F ξ F ξ ¯ ( x ) F ¯ ξ ( x ) = 2 c ξ for some constant c ξ .
The study of class S ( γ ) goes back to Chover et al. [12,13], Embrechts and Goldie [14], and Klüppelberg [18]. It is well known that F S ( γ ) if and only if F ξ + S ( γ ) (see Corollary 2.1(i) in [19]), and the constant c ξ in the definition above is equal to F ^ ξ ( γ ) , (see [19,20,21]). For γ > 0 , a standard example of d.f. in S ( γ ) is d.f. F satisfying
F ¯ ( x ) x c e γ x x α
with parameters c > 0 , γ > 0 , α > 1 (see [22,23]).
For the class S , the following result is obtained in Theorem 3.37 of [24] (see also [11,25,26,27]).
Theorem 3.
Let { ξ 1 , ξ 2 , } be a sequence of independent real-valued r.v.s with common distribution F ξ S , and let η be independent of { ξ 1 , ξ 2 , } counting r.v. with expectation E η , such that E ( 1 + ε ) η < for some ε > 0 . Then,
F ¯ S η ( x ) E η F ¯ η ( x ) ,
and F S η S .
For the class S ( γ ) with γ > 0 , the following assertion is derived in Theorem C of [28] (see also [29,30,31] for related results).
Theorem 4.
Let { ξ 1 , ξ 2 , } be independent real-valued r.v.s with common distribution F ξ S ( γ ) , γ > 0 , and let η be counting r.v. independent of { ξ 1 , ξ 2 , } . If
n = 0 P ( η = n ) max F ^ ξ ( γ ) + ε n , 1 <
for some ε > 0 , then F S η S ( γ ) .
We note that, in Theorems 3 and 4, r.v.s in the sequences { ξ 1 , ξ 2 , } are identically distributed. However, there are related regularity classes for which similar results can be obtained in cases where r.v.s in { ξ 1 , ξ 2 , } are not necessarily identically distributed. Here, we discuss two such classes:
  • A d.f. F ξ of a real-valued r.v. ξ is said to be dominatedly varying, denoted F ξ D , if
    lim sup x F ξ ¯ ( y x ) F ¯ ξ ( x ) <
    for all (or, equivalently, for some) y ( 0 , 1 ) ;
  • A d.f. F ξ of a real-valued r.v. ξ is said to be exponential-like-tailed, denoted F ξ L ( γ ) , if
    lim x F ξ ¯ ( x y ) F ¯ ξ ( x ) = e γ y
    for all y > 0 .
  • A d.f. F ξ of a real-valued r.v. ξ is said to be long-tailed, denoted F ξ L ( 0 ) = L , if
    lim x F ξ ¯ ( x y ) F ¯ ξ ( x ) = 1
    for all (or, equivalently, for some) y > 0 .
Class of dominatedly varying d.f.s D was introduced by Feller [32] and later considered in [4,33,34,35,36,37,38], among others. The class of long-tailed d.f.s L was introduced by Chistyakov [10] in the context of branching processes. The class L ( γ ) with γ > 0 was introduced by Chover et al. [12,13]. Later, the various properties of long-tailed and exponential-like-tailed d.f.s were considered in [1,19,24,28,37,39,40], for instance. Here, we recall only that L D S and S ( γ ) L ( γ ) for γ 0 .
The following assertion on F S η D is presented in Theorem 4 of [41].
Theorem 5.
Let { ξ 1 , ξ 2 , } be a sequence of independent real-valued r.v.s with common d.f. F ξ D , and let η be a counting r.v. independent of { ξ 1 , ξ 2 , } . Then, F S η D if E η p + 1 < for some
p > J F ξ + : = lim y 1 log y log lim inf x F ¯ ξ ( x y ) F ¯ ξ ( x ) .
In the inhomogeneous case, when sumands are not necessarily identically distributed, the following statement is obtained in Theorem 2.1 of [42].
Theorem 6.
Let { ξ 1 , ξ 2 , } be a sequence independent nonnegative r.v.s, and let η be a counting r.v. independent of { ξ 1 , ξ 2 , } . Then, F S η D if the following three conditions are satisfied:
(i) F ξ ϰ D for some ϰ supp ( η ) : = { n N 0 : P ( η = n ) > 0 } ;
(ii) lim sup x sup n > ϰ 1 n F ¯ ξ ϰ ( x ) i = 1 n F ¯ ξ i ( x ) < ;
(iii) E η p + 1 < for some p > J F ξ ϰ + .
Examples of conditions for the function F S η to belong to the class L ( γ ) are given in the theorems below. Theorem 7, proven in [41], presents conditions for the homogeneous case for class L = L ( 0 ) , while Theorem 8, proven in [43], gives conditions for the inhomogeneous case for class L ( γ ) with γ 0 .
Theorem 7.
Suppose that { ξ 1 , ξ 2 , } are independent nonnegative r.v.s with common distribution F ξ L , and let η be a counting r.v. independent of { ξ 1 , ξ 2 , } . If
F ¯ η ( δ x ) = o x F ¯ ξ ( x )
for any δ ( 0 , 1 ) , then F S η L .
Theorem 8.
Let { ξ 1 , ξ 2 , } be a sequence of independent r.v.s such that, for some γ 0 ,
sup k 1 | F ¯ ξ k ( x + y ) F ¯ ξ k ( x ) e γ y | x 0
for each fixed y > 0 , and let η be a counting r.v. independent of { ξ 1 , ξ 2 , } . If
P ( η = k + 1 ) P ( η = k ) k 0 ,
then F S η L ( γ ) .
In the context of the randomly stopped sums, the class OS was considered by Shimura and Watanabe [2]. In Proposition 3.1 of that paper, the following assertion is presented.
Theorem 9.
Let { ξ 1 , ξ 2 , } be a sequence of nonnegative independent r.v.s with common d.f. F ξ , and let η be a counting r.v. independent of { ξ 1 , ξ 2 , } such that
P ( η > 1 ) > 0 , sup x 1 : k = 0 P ( η = k ) x k < = .
Then, F ξ OS if and only if F ¯ S η ( x ) x F ¯ ξ ( x ) .
From the information presented, it can be seen that our main Theorems 1 and 2, in fact, are inhomogeneous versions of the formulated Theorem 9.

5. Auxiliary Lemmas

In this section, we present and prove some auxiliary lemmas that are then applied to the derivations of the main theorems, i.e., Theorems 1 and 2.
Lemma 1.
Let X and Y be two real-valued r.v.s with corresponding d.f.s F X and F Y . The following statements hold:
(i) F X OS if and only if sup x R F X F X ¯ ( x ) F ¯ X ( x ) < ;
(ii) If F X OS and F ¯ Y ( x ) x F ¯ X ( x ) , then F Y OS ;
(iii) If F X OS and F Y OS , then F X F Y OS ;
(iv) If F X OS , then F X OL i.e., lim sup x F ¯ X ( x 1 ) F ¯ X ( x ) < ;
(v) If F X OS and F ¯ Y ( x ) = O F ¯ X ( x ) , then F X F Y OS and F X F Y ¯ ( x ) x F ¯ X ( x ) .
Proof. 
A large part of the properties of the class OS listed in Lemma 1 can be found, for instance, in [1,2,4,5]. However, for the sake of exposition completeness, we present the full proof of the formulated lemma.
Part (i). If F X O S , then
lim sup x F X F X ¯ ( x ) F ¯ X ( x ) <
according to the definition. This estimate implies that F ¯ X ( x ) > 0 for each x R . In addition, the inequality (1) gives that
F X F X ¯ ( x ) F ¯ X ( x ) M
if x x M for some M and x M .
If x < x M , then, obviously, F ¯ X ( x ) F ¯ X ( x M ) and F X F X ¯ ( x ) 1 .
Therefore, for each x R , we obtain that
F X F X ¯ ( x ) F ¯ X ( x ) max M , 1 F ¯ X ( x M ) <
because F ¯ X ( x M ) > 0 . The last estimate finishes the proof of part (i), because the condition
sup x R F X F X ¯ ( x ) F ¯ X ( x ) <
implies (1), obviously.
Part (ii). The condition F ¯ Y ( x ) x F ¯ X ( x ) implies
lim inf x F ¯ Y ( x ) F ¯ X ( x ) > 0 and lim sup x F ¯ Y ( x ) F ¯ X ( x ) < .
It follows from this that
F ¯ Y ( x ) F ¯ X ( x ) N , x x N ,
for some N and x N . If x < x N , then
F ¯ Y ( x ) F ¯ X ( x ) 1 F ¯ X ( x N ) <
because F X OS . According to the derived estimates,
sup x R F ¯ Y ( x ) F ¯ X ( x ) = max N , 1 F ¯ X ( x N ) = C < .
Therefore, for each x R , we have
F Y F Y ¯ ( x ) = F ¯ Y ( x y ) F ¯ X ( x y ) F ¯ X ( x y ) d F Y ( y ) C F ¯ X ( x y ) d F Y ( y ) = C F ¯ Y ( x y ) d F X ( y ) = C F ¯ Y ( x y ) F ¯ X ( x y ) F ¯ X ( x y ) d F X ( y ) C 2 F ¯ X ( x y ) d F X ( y ) = C 2 F X F X ¯ ( x ) .
This estimate implies that
lim sup x F Y F Y ¯ ( x ) F ¯ Y ( x ) C 2 lim sup x F X F X ¯ ( x ) F ¯ Y ( x ) C 2 lim sup x F X F X ¯ ( x ) F ¯ X ( x ) 1 lim inf x F ¯ Y ( x ) F ¯ X ( x ) <
due to the assumption F X OS and the first inequality in (2). The last estimate gives that d.f. F Y belongs to the class OS . Part (ii) of the lemma is proven.
Part (iii). According to part (i), we have that
sup x R F X F X ¯ ( x ) F ¯ X ( x ) = C 1 < and sup x R F Y F Y ¯ ( x ) F ¯ Y ( x ) = C 2 < .
Let X 1 , X 2 , Y 1 , Y 2 be independent r.v.s. Suppose that X 1 , X 2 are distributed according to the d.f. F X , and Y 1 , Y 2 are distributed according to the d.f. F Y . For each x R , we obtain
( ( F X F Y ) ) 2 ¯ ( x ) = ( F X F Y ) ( F X F Y ) ¯ ( x ) = P ( X 1 + Y 1 + X 2 + Y 2 > x ) = P ( X 1 + X 2 + Y 1 + Y 2 ) > x ) = P ( X 1 + X 2 > x y ) d P ( Y 1 + Y 2 y ) = F X F X ¯ ( x y ) F ¯ X ( x y ) F ¯ X ( x y ) d P ( Y 1 + Y 2 y ) C 1 F ¯ X ( x y ) d P ( Y 1 + Y 2 y ) = C 1 P ( X 1 + Y 1 + Y 2 > x ) = C 1 F Y F Y ¯ ( x y ) F ¯ Y ( x y ) F ¯ Y ( x y ) d P ( X 1 y ) C 1 C 2 F ¯ Y ( x y ) d F X ( y ) = C 1 C 2 F X F Y ¯ ( x ) .
Hence,
sup x R ( ( F X F Y ) ) 2 ¯ ( x ) F X F Y ¯ ( x ) C 1 C 2
implying that F X F Y OS by part (i). Part (iii) of the lemma is proven.
Part (iv). Due to part (i),
sup x R F X F X ¯ ( x ) F X ¯ ( x ) = C 3 < .
In addition, for x > 2 , we obtain
F X F X ¯ ( x ) = F ¯ X ( x t ) d F X ( t ) ( 1 , x ] F ¯ X ( x t ) d F X ( t ) F ¯ X ( x 1 ) ( F X ( x ) F X ( 1 ) ) .
When x is large enough, we have F ( x ) F ( 1 ) > 0 , and, therefore,
F ¯ X ( x 1 ) F ¯ X ( x ) F X F X ¯ ( x ) F ¯ X ( x ) 1 F X ( x ) F X ( 1 ) .
Hence,
lim sup x F ¯ X ( x 1 ) F ¯ X ( x ) C 3 F ¯ X ( 1 ) < ,
and part (iv) of the lemma is proven.
Part (v). Since F ¯ Y ( x ) = O F ¯ X ( x ) , we have
F ¯ Y ( x ) F ¯ X ( x ) Q , x x Q ,
with certain constants Q and x Q . If x < x Q , then
F ¯ Y ( x ) F ¯ X ( x ) 1 F ¯ X ( x Q ) <
because F X OS implies F ¯ X ( x Q ) > 0 . From the above inequalities, it follows that
sup x R F ¯ Y ( x ) F ¯ X ( x ) max Q , 1 F ¯ X ( x Q ) = C 4 .
Consequently, for x R , we obtain
F X F Y ¯ ( x ) = F ¯ Y ( x y ) d F X ( y ) C 4 F ¯ X ( x y ) d F X ( y ) = C 4 F X F X ¯ ( x ) C 5 F X ¯ ( x )
with some positive constant C 5 , where the last step in the above derivation follows from part (i) of the lemma.
On the other hand, there exists a real b R for which
F ¯ Y ( b ) = 1 F Y ( b ) 1 2 .
For this b, we obtain
F X F Y ¯ ( x ) ( b , ) F ¯ X ( x y ) d F Y ( y ) F ¯ X ( x b ) ( b , ) d F Y ( y ) = F ¯ X ( x b ) F ¯ Y ( b ) 1 2 F ¯ X ( x ) F ¯ X ( x b ) F ¯ X ( x ) .
Hence,
lim inf x F X F Y ¯ ( x ) F ¯ X ( x ) 1 2 lim inf x F ¯ X ( x b ) F ¯ X ( x ) .
In part (iv) of the lemma, we proved that F X OL . It is easy to verify that
F X OL lim sup x F ¯ X ( x 1 ) F ¯ X ( x ) < F ¯ X ( x y ) x F ¯ X ( x ) for each y R .
Therefore, the estimate (4) implies that
lim inf x F X F Y ¯ ( x ) F ¯ X ( x ) > 0 .
From inequalities (3) and (5), it follows that F X F Y ¯ ( x ) x F X ¯ ( x ) . Moreover, by part (ii) of the lemma, F X F Y OS . This finishes the proof of the last part of the lemma. □
Lemma 2.
Let { ξ 1 , ξ 2 , } be a sequence of independent r.v.s, for which F ξ 1 OS , and, for other indices k 2 , either F ξ k OS or F ¯ ξ k ( x ) = O ( F ¯ ξ 1 ( x ) ) . Then, F S n OS for all n N .
Proof. 
If n = 1 , then the statement is obvious because S 1 = ξ 1 . If n = 2 , then two options are possible: F ξ 2 OS or F ¯ ξ 2 = O ( F ¯ ξ 1 ( x ) ) . In the first case, F S 2 = F ξ 1 F ξ 2 OS according to part (iii) of Lemma 1. In the second case, F S 2 OS by part (v) of the same lemma.
Now, let n > 2 , and denote
K = { k { 2 , . . . , n } : F ¯ ξ k ( x ) = O ( F ¯ ξ 1 ( x ) ) } .
Initially, assume that the set K is empty. In such a case, F ξ k OS for all indices k K c = { 1 , 2 , 3 , , n } . By part (iii) of Lemma 1, we know that F S n OS .
Now, let the index set K = { k 1 , k 2 , , k r } { 1 , , n } no longer be empty. Since
F ¯ ξ k 1 ( x ) = O ( F ¯ ξ 1 ( x ) ) ,
part (v) of Lemma 1 implies that
F ξ 1 F ξ k 1 OS ,
and
F ξ 1 F ξ k 1 ¯ ( x ) x F ¯ ξ 1 ( x ) .
According to relation (7),
lim sup x F ¯ ξ k 2 ( x ) F ξ 1 F ξ k 1 ¯ ( x ) lim sup x F ¯ ξ k 2 ( x ) F ¯ ξ 1 ( x ) 1 lim inf x F ξ 1 F ξ k 1 ¯ ( x ) F ¯ ξ 1 ( x ) <
because F ¯ ξ k 2 ( x ) = O ( F ¯ ξ 1 ( x ) ) . This means that
F ¯ ξ k 2 ( x ) = O ( F ξ 1 F ξ k 1 ¯ ( x ) ) .
Hence, according to (6) and part (v) of Lemma 1, we obtain
F ξ 1 F ξ k 1 F ξ k 2 = ( F ξ 1 F ξ k 1 ) F ξ k 2 OS ,
and
F ξ 1 F ξ k 1 F ξ k 2 ¯ ( x ) x F ξ 1 F ξ k 1 ¯ ( x ) .
Continuing the process we obtain
F K : = F ξ 1 j = 1 r F ξ k j = F ξ 1 F ξ k 1 F ξ k 2 F ξ k r OS ,
and
F ξ 1 F ξ k 1 F ξ k 2 F ξ k r ¯ ( x ) x F ξ 1 F ξ k 1 F ξ k 2 F ξ k r 1 ¯ ( x ) .
For the remaining indices k K c = { 2 , 3 , , n } { k 1 , k 2 , , k r } , d.f. F ξ k belongs to the class OS . By part (iii) of Lemma 1, we obtain
F K c : = k K c F ξ k OS .
Using part (iii) of Lemma 1 again, we derive that
F S n = F K F K c OS .
This finishes the proof of Lemma 2. □
Lemma 3.
Let ξ 1 , ξ 2 , be a sequence of independent random variables, for which F ξ 1 OS and
lim sup x sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) <
Then, there exists a constant C ^ 1 such that
F ¯ S n ( x ) C ^ n 1 F ¯ ξ 1 ( x )
for all x R and for all n 2 .
Proof. 
The condition (8) implies that
sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) C 6
for all x A , with some constants C 6 1 and A > 0 . If x < A , then
sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) 1 F ¯ ξ 1 ( x ) 1 F ¯ ξ 1 ( A ) < .
Therefore, for each x R ,
sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) max C 6 , 1 F ¯ ξ 1 ( A ) : = C 7 .
In addition, part (i) of Lemma 1 gives that
F ξ 1 F ξ 1 ¯ ( x ) C 8 F ¯ ξ 1 ( x )
for all x R with some constant C 8 1 .
We prove the inequality (9) with constant C ^ = C 7 C 8 . If n = 1 , the inequality (9) holds, evidently, because F ¯ S 1 ( x ) = F ¯ ξ 1 ( x ) . If n = 2 , then, by (10) and (11), for x R , we have
F ¯ S 2 ( x ) = F ¯ ξ 2 ( x y ) d F ξ 1 ( y ) C 7 F ¯ ξ 1 ( x y ) d F ξ 1 ( y ) = C 7 F ξ 1 F ξ 1 ¯ ( x ) C ^ F ¯ ξ 1 ( x ) .
Suppose now that the inequality (9) holds for n = m 2 , i.e.,
F ¯ S m ( x ) F ¯ ξ 1 ( x ) C ^ m 1 , x R .
After choosing n = m + 1 , from this assumption and from (10) and (11), we obtain
F ¯ S m + 1 ( x ) = F ¯ S m ( x y ) d F ξ m + 1 ( y ) C ^ m 1 F ¯ ξ 1 ( x y ) d F ξ m + 1 ( y ) = C ^ m 1 F ¯ ξ m + 1 ( x y ) d F ξ 1 ( y ) C ^ m 1 C 7 F ¯ ξ 1 ( x y ) d F ξ 1 ( y ) = C ^ m 1 C 7 F ξ 1 F ξ 1 ¯ ( x ) C ^ m F ¯ ξ 1 ( x ) , x R .
According to the induction principle, the inequality (9) holds for all n N . Lemma 3 is proven. □

6. Proofs of the Main Results

In this section, we present proofs of the main results of the paper.
Proof of Theorem 1.
According to conditions of the theorem, P ( η { 0 , 1 , , L } ) = 1 and P ( η = L ) > 0 for some L N . We have
F ¯ S η ( x ) = n = 1 L P ( η = n ) F ¯ S n ( x ) , x > 0 .
Hence, for each positive x,
F ¯ S η ( x ) F ¯ S L ( x ) P ( η = L ) F ¯ S L ( x ) F ¯ S L ( x ) = P ( η = L ) > 0 .
On the other hand,
F ¯ S η ( x ) = k = 0 L 1 P ( η = L k ) P ( S L k > x ) , x > 0 .
For any random variable ξ k , k { 1 , 2 , , L } , there exists a negative number a k , for which P ( ξ k a k ) 1 / 2 . We have
P ( S L 1 > x ) = P ( S L 1 a L > x a L , ξ L a L ) + P ( S L 1 > x , ξ L < a L ) P ( S L > x a L ) + P ( S L 1 > x ) P ( ξ L < a L ) .
From this, we derive that
P ( S L 1 > x ) 2 P ( S L > x a L )
for each x R . Similarly,
P ( S L 2 > x ) 2 P ( S L 1 > x a L 1 ) 4 P ( S L > x a L 1 a L )
also for each real number x. Continuing the process, we obtain
P ( S L k > x ) 2 k P S L > x j = 0 k 1 a L j
for all x R and for all k = 1 , 2 , , L 1 . After inserting the derived estimates into inequality (13), we obtain that
F ¯ S η ( x ) k = 0 L 1 P ( η = L k ) 2 k P ( S L > x j = 0 k 1 a L j ) P ( S L > x a ) k = 0 L 1 2 k P ( η = L k ) = C F ¯ S L ( x a ) ,
where
C = k = 0 L 1 2 k P ( η = L k ) , and a = j = 1 L a j .
Consequently, for all positive x,
F ¯ S η ( x ) F ¯ S L ( x ) C F ¯ S L ( x a ) F ¯ S L ( x ) .
By Lemma 2 and part (iv) of Lemma 1, we have that F S L OS OL . Therefore,
lim sup x F ¯ S η ( x ) F ¯ S L ( x ) < .
By (12) and (14), we have that
F ¯ S η ( x ) x F ¯ S L ( x ) .
Therefore, F S η OS , together with F S L by part (ii) of Lemma 1. Theorem 1 is proven. □
Proof of Theorem 2.
Part (i) Because
F ¯ S η ( x ) = n = 1 P ( η = n ) F ¯ S n ( x ) , x > 0 ,
by Lemma 3 for all positive numbers x, we obtain
F ¯ S η ( x ) F ¯ ξ 1 ( x ) n = 1 C ^ n 1 P ( η = n ) F ¯ ξ 1 ( x ) F ¯ ξ 1 ( x ) E e η log C ^ < ,
where C ^ > 1 is some constant.
On the other hand,
F ¯ S η ( x ) P ( η = 1 ) F ¯ ξ 1 ( x ) .
Hence, under conditions of part (i), we have that F ¯ S η ( x ) x F ¯ ξ 1 ( x ) . Therefore, F S η OS according to part (ii) of Lemma 1. Part (i) of Theorem 2 is proven.
Part (ii). If P ( η = 1 ) > 0 , then assertion of this part follows from the proven part (i). Hence, we can further suppose that P ( η = 1 ) = 0 , implying that P ( η 2 ) > 0 . Since E e λ η < for each λ > 0 , the inequality (15) implies that
lim sup x F ¯ S η ( x ) F ¯ ξ 1 ( x ) < .
In addition, conditions of part (ii) of the theorem give that
inf k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) Δ
for all x x Δ and some positive Δ . If x < x Δ , then
inf k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) inf k 1 F ¯ ξ k ( x Δ ) inf k 1 F ¯ ξ k ( x Δ ) F ¯ ξ 1 ( x Δ ) F ¯ ξ 1 ( x Δ ) Δ F ¯ ξ 1 ( x Δ ) : = C ˜ > 0
due to the assumption F ξ 1 OS . The derived inequalities imply that
F ¯ ξ k ( x ) C ˜ F ¯ ξ 1 ( x )
for some positive constant C ˜ , and for all x R , k { 1 , 2 , } .
Using the last estimate, we obtain
F ¯ S 2 ( x ) = F ¯ ξ 2 ( x y ) F ¯ ξ 1 ( x y ) F ¯ ξ 1 ( x y ) d F ξ 1 ( y ) C ˜ F ξ 1 F ξ 1 ¯ ( x ) C ˜ F ¯ ξ 1 ( 0 ) F ¯ ξ 1 ( x ) , x R .
Similarly,
F ¯ S 3 ( x ) = F ¯ S 2 ( x y ) F ¯ ξ 1 ( x y ) F ¯ ξ 1 ( x y ) d F ξ 1 ( y ) C ˜ F ¯ ξ 1 ( 0 ) F ξ 1 F ξ 1 ¯ ( x ) C ˜ F ¯ ξ 1 ( 0 ) 2 F ¯ ξ 1 ( x ) , x R .
Continuing the process, we obtain
F ¯ S n ( x ) C ˜ F ¯ ξ 1 ( 0 ) n 1 F ¯ ξ 1 ( x )
for all x R and n { 2 , 3 , } .
Therefore,
lim inf x F ¯ S η ( x ) F ¯ ξ 1 ( x ) lim inf x P ( η = L ˜ ) F ¯ S L ˜ ( x ) F ¯ ξ 1 ( x ) P ( η = L ˜ ) C ˜ F ¯ ξ 1 ( 0 ) L ˜ 1 > 0 ,
where L ˜ = min { n 2 : P ( η = n ) > 0 } .
The derived inequalities (16) and (17) imply F ¯ S η ( x ) x F ¯ ξ 1 ( x ) . By part (ii) of Lemma 1, we have F S η OS . Theorem 2 is proven. □

7. Illustration of the Results

In this section, we present two examples showing how, using Theorems 1 and 2, it is possible to construct distributions belonging to the class OS . It is practically impossible to write the analytical expression of d.f F S η in the general case, but, according to Theorems 1 and 2, we can establish whether the constructed distributions are generalized subexponential.
Example 1.
Let ξ 1 be r.v. having the t.f.
F ¯ ξ 1 ( x ) = I ( , 0 ) ( x ) + e x ( 1 + x ) 3 1 + sin x d I [ 0 , ) ( x ) ,
where d > 2 . According to the results of [44], the d.f. F ξ 1 belongs to class OS . Therefore, Theorem 1 gives that d.f. F S η belongs to OS for each sequence of independent r.v.s { ξ 1 , ξ 2 , } such that either F ξ k OS or
F ¯ ξ k ( x ) = O e x ( 1 + x ) 3
when k { 2 , 3 , } , and for each bounded counting r.v. η independent of { ξ 1 , ξ 2 , } .
In particular, the d.f. with tail
F ¯ S η ( x ) = I ( , 0 ) ( x ) + 1 3 F ¯ ξ 1 ( x ) + F ξ 1 F ξ 2 ¯ ( x ) + F ξ 1 F ξ 2 F ξ 3 ¯ ( x ) I [ 0 , ) ( x )
belongs to the class OS with
F ¯ ξ 1 ( x ) = I ( , 0 ) ( x ) + e x ( 1 + x ) 3 1 + sin x 3 I [ 0 , ) ( x ) , F ¯ ξ 2 ( x ) = I ( , 0 ) ( x ) + e x ( 1 + x ) 3 1 + sin x 4 I [ 0 , ) ( x ) , F ¯ ξ 3 ( x ) = I ( , 0 ) ( x ) + e x ( 1 + x ) 3 I [ 0 , ) ( x ) .
Example 2.
Let { η , ξ 1 , ξ 2 , } be independent r.v.s, where counting r.v. η is distributed according to the Poisson law with parameter μ > 0 , and
F ¯ ξ k ( x ) = I ( , 1 ) ( x ) + e 1 x x 2 I [ 1 , ) ( x ) if k { 1 , 3 , 5 , } , I ( , 2 ) ( x ) + 4 e 2 x x 2 I [ 2 , ) ( x ) if k { 2 , 4 , 6 , } .
According to the results of [22], d.f. F ξ 1 belongs to the class OS . In addition,
lim sup x sup k 1 F ¯ ξ k ( x ) F ¯ ξ 1 ( x ) = 4 e .
Hence, d.f. F S η with the t.f.
F ¯ S η ( x ) = I ( , 1 ) ( x ) + e μ n = 1 μ n n ! F ξ 1 F ξ 2 F ξ n ¯ ( x ) I [ 1 , ) ( x )
is generalized subexponential, due to Theorem 2.

8. Concluding Remarks

One of the incentives to study the closure properties is the evolution of ruin probability in the insurance business. We recall that, in the renewal risk model (Sparre Andersen model), the risk process is
R x ( t ) = x + p t i = 1 N ( t ) Z i , t 0 ,
where x 0 is the initial capital, p > 0 is the premium rate, { Z 1 , Z 2 , } is a sequence of nonnegative independent and identically distributed random claims, and
N ( t ) = # { n 1 : θ 1 + θ 2 + + θ n t }
is a counting process generated by independent and identically distributed inter-arrival times { θ 1 , θ 2 , } . In addition, it is assumed that the sequences { Z 1 , Z 2 , } and { θ 1 , θ 2 , } are independent.
It is well known (see, for instance, [25,45,46,47]) that the model ruin probability
ψ ( x ) = P inf t 0 R x ( t ) < 0 x 1 ρ F ¯ I ( x )
in the case when ρ = ( p E θ 1 / E X 1 ) 1 > 0 and the integrated tail d.f.
F I ( x ) = 1 E X 1 0 x P ( X 1 > y ) d y
belongs to the class S . The similar results for the generalized subexponential distributions are presented in [48,49,50].
The results obtained in this work can be applied to the analysis of the compound renewal risk model, which is described in [51,52,53], for instance, and in which the claim amount has the form of a randomly stopped sum.

Author Contributions

Conceptualization, J.Š.; methodology, J.K. and J.Š.; software, J.K.; validation, J.Š.; formal analysis, J.K.; investigation, J.K. and J.Š.; writing—original draft preparation, J.K.; writing—review and editing, J.Š.; visualization, J.Š.; supervision, J.Š.; project administration, J.Š.; funding acquisition, J.K. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors would like to express deep gratitude to three anonymous referees for their valuable suggestions and comments which have helped to improve the previous version of the paper.

Conflicts of Interest

The authors declare no conflict of interest.

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Karasevičienė, J.; Šiaulys, J. Randomly Stopped Sums with Generalized Subexponential Distribution. Axioms 2023, 12, 641. https://doi.org/10.3390/axioms12070641

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Karasevičienė J, Šiaulys J. Randomly Stopped Sums with Generalized Subexponential Distribution. Axioms. 2023; 12(7):641. https://doi.org/10.3390/axioms12070641

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Karasevičienė, Jūratė, and Jonas Šiaulys. 2023. "Randomly Stopped Sums with Generalized Subexponential Distribution" Axioms 12, no. 7: 641. https://doi.org/10.3390/axioms12070641

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