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Some properties of convex and increasing convex orders under Archimedean copula

Published online by Cambridge University Press:  05 March 2024

Qingyuan Guan
Affiliation:
School of Mathematics and Computer Science, Wuyi University, Wuyishan, Fujian, China Key Laboratory of Cognitive Computing and Intelligent Information Processing of Fujian Education Institutions, Wuyishan, Fujian, China Fujian Key Laboratory of Big Data Application and Intellectualization for Tea Industry, Wuyishan, Fujian, China
Bing Xing Wang*
Affiliation:
Department of Statistics, Zhejiang Gongshang University, Hangzhou, Zhejiang, China
*
Corresponding author: Bing Xing Wang; Email: wangbingxing@163.com
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Abstract

In this paper, the ordering properties of convex and increasing convex orders of the dependent random variables are studied. Some closure properties of the convex and increasing convex orders under independent random variables are extended to the dependent random variables under the Archimedean copula. Two applications are provided to illustrate our results.

Type
Research Article
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© The Author(s), 2024. Published by Cambridge University Press.

1. Introduction

Various concepts of stochastic ordering provide a variety of useful comparisons in insurance actuarial science [Reference Balakrishnan, Zhang and Zhao3, Reference Das and Kayal8Reference Das, Kayal and Balakrishnan10, Reference Zhang, Cai and Zhao28], risk management [Reference Barmalzan, Payandeh Najafabadi and Balakrishnan5, Reference Denuit and Frostig12], and reliability [Reference Fang and Balakrishnan14, Reference Kayal and Kundu20, Reference Kayal, Patra, Bhakta and Nadarajah21, Reference Panja, Kundu and Pradhan24], etc. Many researchers have studied convex order and its related orders. These researches mainly focus on stochastic comparisons of independent random variables. For example, Alain and Liu [Reference Alain and Liu1] studied the relationships of their random partial sums among the stochastic ordering of independent random variables. Pellerey [Reference Pellerey25] considered the invariance under convolutions and mixing of the increasing convex order based on independent random variables. Denuit et al. [Reference Denuit, Lefèvre and Utev13] obtained the comparison properties of the m-convex order for compound sums based on nonnegative independent and identically distributed random variables.

In the real world, interdependent random variables are often encountered. For this reason, it is important to investigate stochastic comparisons of dependent random variables. Copula is widely applied to describe the dependence relationship among random variables because it provides the dependence structure of random variables. Archimedean copulas are a very important class of copulas, which are widely used in many fields of society. For a comprehensive review of copulas and their applications, see [Reference Cherubini, Gobbi, Mulinacci and Romagnoli6, Reference Cherubini, Luciano and Vecchiato7, Reference Denuit, Dhaene, Goovaerts and Kaas11]. Under the Archimedean copula, Zuo et al. [Reference Zuo, Feng, Zhang and Hou29] established a bivariate joint model on the basis of the marginal distributions. Ji and Liu [Reference Ji and Liu18] made use of the three-dimensional Archimedean copula method to assess the PM2.5 pollution risk. Fang and Huang [Reference Fang and Huang16] used the Archimedean copula for two random vectors to study two inequalities based on majorization. For series-parallel and parallel-series systems, Fang et al. [Reference Fang, Balakrishnan and Jin15] investigated various stochastic comparisons based on the Archimedean copula, and Barmalzan et al. [Reference Barmalzan, Ayat and Akrami4] investigated the hazard rate order and reversed hazard rate order when these components conforming to the general scale model have the dependence under the Archimedean copula. Fang et al. [Reference Fang, Balakrishnan, Huang and Zhang17] discussed stochastic comparisons of the largest order statistics arising from two sets of distribution-free random variables under the Archimedean copula. Ariyafar et al. [Reference Ariyafar, Tata, Rezapour and Madadi2] compared the aggregation and minimum of these portfolios with respect to the Laplace transform order using Archimedean copulas. We find that for dependent random variables, fewer researches considered the properties of convex order and increasing convex order. We consider these issues in this paper.

The rest of this article is organized as follows. Section 2 introduces some related definitions. The closure properties and characterizations of the convex order and increasing convex order under the Archimedean copula dependence, which are the generalizations of some theorems in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] to dependent case, are developed in Sections 3 and 4. In Section 5, two applications are given. In Section 6, some conclusions are provided.

2. Preliminaries

In this section, we recall the concepts of copula, convex order, increasing convex order. Let $\mathbb{R}=(-\infty, \infty)$ and $\mathbb{R}^+=[0, \infty)$, $\mathbb{R}^{n}=\{(z_{1}, \ldots, z_{n}): z_{i}\in (-\infty, \infty)$, for all $i\}$. In this paper, we assume that all expectations exist wherever they are given.

2.1. Copula

Definition 2.1. ([Reference Widder27])

If for all $t \in(a, b)$, all of derivatives of a function h(t) exist and satisfy $(-1)^{k} h^{(k)}(t) \geq 0, k \in\{0,1, \ldots\}$, where $h^{(k)}(\cdot)$ denotes the kth derivative of $h(\cdot)$. Then $h(\cdot)$ is said to be completely monotone on an interval $(a, b), \,\,a, b \in {\mathbb{R}}$.

Definition 2.2. For a completely monotone function $\phi: (0,1] \rightarrow [0,\infty)$ with $\phi(1)=0$ and $\phi(0)=\infty$, then $C_{\phi}:[0,1]^{n}\rightarrow[0,1]$, $C_\phi(\boldsymbol{u})=\phi^{-1}\left(\phi\left(u_1\right)+\cdots+\phi\left(u_n\right)\right)$ is called an Archimedean copula with strict generator ϕ, where $\phi^{-1}(u)$ is the pseudo-inverse of ϕ.

Let F be an n-dimensional distribution function with marginal distributions $F_{1}, \ldots, F_{n}$. A copula associated with F is a distribution function $C:[0,1]^{n} \rightarrow[0,1]$ satisfying

\begin{equation*}F\left(x_{1}, \ldots, x_{n}\right)=C\left({F}_{1}\left(x_{1}\right), \ldots, F_{n}\left(x_{n}\right)\right).\end{equation*}

Similarly, a survival copula associated with $\bar F$ is a survival function $C:[0,1]^{n} \rightarrow[0,1]$ satisfying: $\bar F{(x_1,\dots,x_n)}=C{({\bar F}_1{(x_1)},\dots,{\bar F}_n{(x_n)})}$. For comprehensive discussions on “copula,” one may refer to Widder [Reference Joe19, Reference Nelsen23, Reference Widder27].

According to the Bernstein’s Theorem 12a in Widder [Reference Widder27], we know that, if ϕ −1 is a completely monotone function, then there must be a distribution function $L_{\phi^{-1}}$ such that:

\begin{equation*} \phi^{-1}(x)=\int_{0}^{\infty} e^{-\alpha x} d L_{\phi^{-1}}(\alpha). \end{equation*}

Therefore, we have

(1)\begin{equation} C_{\phi}(\boldsymbol{u})=\int_{0}^{\infty} \prod_{i=1}^{n} e^{-\alpha \phi\left(u_{i}\right)} d L_{\phi^{-1}}(\alpha). \end{equation}

2.2. Stochastic orders

In this subsection, we give the definitions of the convex order and the increasing convex order.

Definition 2.3. The random variable X is said to be smaller than the random variable Y in the convex order, written $X \leq_{cx} Y$, if $ E[\psi(X)] \leq E[\psi(Y)]$ for all convex functions $\psi: \mathbb{R} \rightarrow \mathbb{R}$.

Definition 2.4. The random variable X is said to be smaller than the random variable Y in the increasing convex order, written $X\leq_{icx}Y$, if $ E[\psi(X)] \leq E[\psi(Y)]$ for all increasing convex functions $\psi: \mathbb{R} \rightarrow \mathbb{R}$.

Comprehensive discussion on various stochastic orderings and relations between them may refer to [Reference Müller and Stoyan22, Reference Shaked and Shanthikumar26].

3. The convex order

In this section, some results of convex order under independent random variables are extended to the case of dependent random variables with the Archimedean copula. In order to extend those results, we need the following lemmas.

Lemma 3.1. Let $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ be the joint survival function of $(U_{1}, \ldots, U_{n})$, where C is the Archimedean copula with generator ϕ. For $i=1,\dots,n$, let $U_{i}(\alpha)$’s be independent random variables with survival functions $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}$. Then, for all α > 0 and all continuous functions $g: \mathbb{R}^n \rightarrow \mathbb{R} $, we have

\begin{equation*} E \left[{g}\left(U_{1}, \ldots, U_{n}\right)\right]=\int_{0}^{\infty} E \left[{g}\left(U_{1}(\alpha), \ldots, U_{n}(\alpha)\right)\right] d L_{\phi^{-1}}(\alpha).\end{equation*}

Proof. Using Eq. (1), for all $\alpha \gt 0,$ the joint survival function of $\left(U_{1}, \ldots, U_{n}\right)$ can be written as:

(2)\begin{align} {\bar F}_{U_1,\dots,U_n}{(u_1,\dots,u_n)}&=\phi^{-1}{(\phi{({\bar F}_{U_1}(u_1))}+\cdots+\phi{({\bar F}_{U_n}(u_n))})}\nonumber\\&=\int_0^\infty e^{-\alpha\phi({\bar F}_{U_1}{(u_1)})}\times\cdots\times e^{-\alpha\phi({\bar F}_{U_n}{(u_n)})}dL_{\phi^{-1}}(\alpha).\end{align}

Considering that the derivative of the survival function is a negative probability density function, therefore the probability density function of $\left(U_{1}, \ldots, U_{n}\right)$ is given by:

\begin{align*}f_{U_1,\dots,U_n}{(u_1,\dots,u_n)}&=(-1)^n\frac{\partial^n}{\partial u_1\dots\partial u_n}{\bar F}_{U_1,\dots,U_n}{(u_1,\dots,u_n)}\nonumber\\&=\int_0^\infty\prod_{k=1}^nh_{U_k}{(u_k;\alpha)}dL_{\phi^{-1}}(\alpha),\end{align*}

where

\begin{equation*}h_{U_k}{(u_k;\alpha)}=-\alpha f_{U_k}{(u_k)}\exp{(-\alpha\phi({\bar F}_{U_k}{(u_k)}))}\phi^{'}{({\bar F}_{U_k}(u_k))},{}1\leq k\leq n.\end{equation*}

Clearly, for all α > 0, $h_{U_{i}}\left(u_{i} ; \alpha\right)$ is the probability density function of $U_{i}(\alpha)$. Hence for any continuous function $g: \mathbb{R}^n \rightarrow \mathbb{R}$, we have

(3)\begin{align} E \left[{g}\left(U_{1}, \ldots, U_{n}\right)\right] &=\int_{u_{1}} \ldots \int_{u_{n}} {g}\left(u_{1}, \ldots, u_{n}\right) \int_{0}^{\infty} \prod_{i=1}^{n} h_{U_{i}}\left(u_{i} ; \alpha\right) d L_{\phi^{-1}}(\alpha) d u_{1} \ldots d u_{n} \notag\\ &=\int_{0}^{\infty} \int_{u_{1}} \cdots \int_{u_{n}} {g}\left(u_{1}, \ldots, u_{n}\right) \prod_{i=1}^{n} h_{U_{i}}\left(u_{i} ; \alpha\right) d u_{1} \ldots d u_{n} d L_{\phi^{-1}}(\alpha) \notag\\ &=\int_{0}^{\infty} E \left[{g}\left(U_{1}(\alpha), \ldots, U_{n}(\alpha)\right)\right] d L_{\phi^{-1}}(\alpha), \end{align}

where we use the Fubini theorem in the second equation and the definition of expectation in the third equation.

Theorem 4.A.8 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] provided the following result.

Lemma 3.2. Let $X, Y$, and Θ be random variables such that, for all θ in the support of Θ, we have that $[X \mid \Theta=\theta] \leq_{icx}[Y \mid \Theta=\theta]$. Then $X \leq_{icx}$ Y. That is, the increasing convex order is closed under mixtures.

The following theorem shows that the convex order is still closed to convolution operation under the Archimedean copula, and it is an extension of Theorem 3.A.12(d) in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26].

Theorem 3.3. Let $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ be the joint survival functions of $(U_{1}, \ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $U_1(\alpha),\dots, U_n(\alpha)\,[V_1(\alpha),\dots, V_n(\alpha)]$ be independent, and the survival function of $U_i(\alpha)\,[V_i(\alpha)]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. If $U_{i}(\alpha) \leq_{cx } V_{i}(\alpha)$ for $i=1,2, \ldots, n$, then

\begin{equation*} \sum_{i=1}^{n} U_{i} \leq_{c x} \sum_{i=1}^{n} V_{i}. \end{equation*}

Proof. Since $U_{i}(\alpha) \leq_{cx}V_{i}(\alpha)$ for $i=1,2, \ldots, n$, it can be obtained from Theorem 3.A.12(d) in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] that:

\begin{equation*} \sum_{i=1}^{n} U_{i}(\alpha) \leq_{cx}\sum_{i=1}^{n} V_{i}(\alpha). \end{equation*}

Therefore for all convex functions φ, we have:

(4)\begin{equation} E\left[\varphi\left(\sum_{i=1}^{n} U_{i}(\alpha)\right)\right] \leq E\left[\varphi\left(\sum_{i=1}^{n} V_{i}(\alpha)\right)\right]. \end{equation}

Using Lemma 3.1 and Eq. (4), we have:

\begin{align*} E\left[\varphi\left(\sum_{i=1}^{n} U_{i}\right)\right] &=\int_{0}^{\infty}E\left[\varphi\left(\sum_{i=1}^{n} U_{i}(\alpha)\right)d L_{\phi^{-1}}(\alpha)\right.\\ &\leq \int_{0}^{\infty}E\left[\varphi\left(\sum_{i=1}^{n} V_{i}(\alpha)\right)d L_{\phi^{-1}}(\alpha)\right.\\ &=E\left[\varphi\left(\sum_{i=1}^{n} V_{i}\right)\right], \,\, \mbox{for all convex functions} \,\,\varphi. \end{align*}

The proof is completed.

Now we extend Theorem 3.3 to random sums case.

Theorem 3.4. Suppose that $\{U_i, \,i\geq1\}$ and $\{V_i, \,i\geq1\}$ are two sequences of random variables, $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ are the joint survival functions of $(U_{1}, \ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $\{U_i(\alpha),\, i\geq1\}$ $[\{V_i(\alpha), \,i\geq1\}]$ be independent, and the survival function of $U_i(\alpha)\,[V_i(\alpha)]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. Assume that the nonnegative integer-valued random variable N is independent of Ui’s, Vi’s, $U_{i}(\alpha)$’s and $V_{i}(\alpha)$’s, respectively. Then

\begin{equation*} U_{i}(\alpha) \leq_{cx } V_{i}(\alpha),\quad i=1,2, \ldots \Rightarrow\sum_{i=1}^{N} U_{i} \leq_{c x} \sum_{i=1}^{N} V_{i}. \end{equation*}

Proof. Since $U_{i}(\alpha) \leq_{cx} V_{i}(\alpha), i=1,2, \ldots$, we have from Theorem 3.3 that for all convex functions φ,

\begin{equation*}E\left[\varphi\left(\sum_{i=1}^{n} U_{i}\right)\right]\le E\left[\varphi\left(\sum_{i=1}^{n} V_{i}\right)\right], \quad n=1,2,\dots.\end{equation*}

Therefore, we have that for all convex functions φ,

\begin{align*} E\left[\varphi\left(\sum_{i=1}^{N} U_{i}\right)\right]&=\sum_{n=1}^\infty P(N=n)E\left[\varphi\left(\sum_{i=1}^{n} U_{i}\right)\right]\\ &\le\sum_{n=1}^\infty P(N=n)E\left[\varphi\left(\sum_{i=1}^{n} V_{i}\right)\right]\\ &=E\left[\varphi\left(\sum_{i=1}^{N} V_{i}\right)\right]. \end{align*}

This shows that $\sum_{i=1}^{N} U_{i} \leq_{c x} \sum_{i=1}^{N} V_{i}$.

The following theorem shows that Theorem 3.A.13 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] can be extended to the Archimedean copula case.

Theorem 3.5. Suppose that $\left\{U_i, i \geq 1\right\}$ and $\left\{V_i, i \geq 1\right\}$ are two sequences of nonnegative identically distributed random variables, $C{({\bar{\boldsymbol F}}_{U_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{V_n}{(v_n)})}$ are the joint survival functions of $\left(U_1, \ldots, U_n\right)$ and $\left(V_1, \ldots, V_n\right)$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $\left\{U_i(\alpha), i \geq 1\right\}\left[\left\{V_i(\alpha), i \geq 1\right\}\right]$ be independent, and the survival function of $U_i(\alpha)\left[V_i(\alpha)\right]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. Let N 1 and N 2 be two positive integer-valued random variables that are independent of Ui’s, Vi’s, $U_i(\alpha)$’s, and $V_i(\alpha)$’s, respectively. If $U_i(\alpha) \leq_{c x} V_i(\alpha)$ for $i=1,2, \ldots$, and $N_1 \leq_{c x} N_2$, then

\begin{equation*} \sum_{i=1}^{N_1} U_i \leq_{c x} \sum_{i=1}^{N_2} V_i. \end{equation*}

Proof. To prove this theorem, we know from Theorem 3.4 that we only need to show:

\begin{equation*} \sum_{i=1}^{N_1} U_i \leq_{c x} \sum_{i=1}^{N_2} U_{i}. \end{equation*}

Let h be a convex function, $T_n=\sum_i^{n} U_i$ and define $g(n)=E\left[h\left(T_n\right)\right]$. Then

\begin{equation*}g(n+1)-g(n)=E\left[h\left(T_n+U_{n+1}\right)-h\left(T_n\right)\right].\end{equation*}

Note that h is a convex function, and

\begin{align*} E\left[h\left(T_n+U_{n+1}\right)-h\left(T_n\right)\right|T_n=z]&=E\left[h\left(z+U_{n+1}\right)-h\left(z\right)\right]\\ &=f(z)(say), \end{align*}

then f(z) is increasing in z. Since Tn increases in n in the usual stochastic order, it can be obtained that $g(n+1)-g(n)=E\left[f\left(T_n\right)\right]$ increases in n. Hence, g(n) is a convex function of n. Therefore, for $N_1 \leq{}_{c x} N_2$, we have:

\begin{equation*}E\left[h\left(\sum_{i=1}^{N_1} U_i\right)\right] \leq E\left[h\left(\sum_{i=1}^{N_2} U_i\right)\right].\end{equation*}

That is,

(5)\begin{equation} \sum_{i=1}^{N_1} U_i \leq_{cx} \sum_{i=1}^{N_2} U_i. \end{equation}

The proof is completed. In particular, taking $V_{i}=U_{i}$ in Theorem 3.5, we obtain the following corollary.

Corollary 3.6. Suppose that $\{U_i, i\geq1\}$ is a sequence of nonnegative identically distributed random variables, $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ is the joint survival function of $(U_{1}, \ldots, U_{n})$, where C is the Archimedean copula with generator ϕ. Let N 1 and N 2 be two positive integer-valued random variables, and be independent of Ui’s. Then

\begin{equation*}N_1 \leq_{cx} N_2 \Longrightarrow \sum_{i=1}^{N_1} U_{i} \leq_{cx} \sum_{i=1}^{N_2} U_{i}.\end{equation*}

Remark 3.7. Corollary 3.6 is the generalization of Theorem 8.A.13(b) in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26].

Corollary 3.8. Under the setup of Theorem 3.5, if there is some positive integer k such that:

\begin{equation*} \sum_{i=1}^{k} U_{i}(\alpha) \leq_{cx} V_{1}(\alpha)\,\, \mbox{and}\,\,N_1 \leq_{cx} k N_2, \end{equation*}

then

\begin{equation*} \sum_{j=1}^{N_1} U_{j} \leq_{cx}\sum_{j=1}^{N_2} V_{j}. \end{equation*}

Proof. Note that $N_1 \leq_{cx} k N_2 $, by Corollary 3.6, we have $\sum_{j=1}^{N_1} U_{j}\leq_{cx} \sum_{j=1}^{kN_2} U_{j}$. It is observed that $\sum_{j=1}^{kN_2} U_{j}=\sum_{i=1}^{N_2}\sum_{j=k(i-1)+1}^{ki}U_{j}$. Under the condition that $\sum_{i=1}^{k} U_{i}(\alpha) \leq_{cx} V_{1}(\alpha)$, using Theorem 3.4, we obtain $\sum_{i=1}^{N_2}\sum_{j=k(i-1)+1}^{ki}U_{j}\leq_{cx}\sum_{i=1}^{N_2}V_{i}$. Therefore,

\begin{equation*} \sum_{j=1}^{N_1} U_{j} \leq_{cx}\sum_{j=1}^{N_2} V_{j}, \end{equation*}

which is the desired result.

The above corollary is an extension of Theorem 3.A.14 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26]. Similarly, Theorem 3.A.15 and 3.A.16 of Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] can be extended to the Archimedean copula case. These results are not stated.

4. The increasing convex order

In this section, some increasing convex order results under independent random variables are extended to the case of dependent random variables with the Archimedean copula.

Theorem 4.1. Let $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ be the joint survival functions of $(U_{1}, \ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $U_1(\alpha),\dots, U_n(\alpha)\,[V_1(\alpha),\dots, V_n(\alpha)]$ be independent, and the survival function of $U_i(\alpha)\,[V_i(\alpha)]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. If $U_{i}(\alpha) \leq_{icx} V_{i}(\alpha)$ for $i=1,2, \ldots, n$, then

\begin{equation*} \sum_{i=1}^{n} U_{i} \leq_{icx} \sum_{i=1}^{n} V_{i}. \end{equation*}

The above theorem is the generalization of Theorem 4.A.8(d) in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26]. The proof of this theorem is similar to the proof of the Theorem 3.3, so it is omitted. Furthermore, we have the following result.

Theorem 4.2. Let $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ be the joint survival functions of $(U_{1}, \ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $U_1(\alpha),\dots, U_n(\alpha)\,[V_1(\alpha),\dots, V_n(\alpha)]$ be independent, and the survival function of $U_i(\alpha)\,[V_i(\alpha)]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. Assume that the nonnegative integer-valued random variable N is independent of Ui’s, Vi’s, $U_{i}(\alpha)$’s and $V_{i}(\alpha)$’s, respectively. Then

\begin{equation*} U_{i}(\alpha) \leq_{icx} V_{i}(\alpha),\quad i=1,2, \ldots \Rightarrow\sum_{i=1}^{N} U_{i} \leq_{icx} \sum_{i=1}^{N} V_{i}. \end{equation*}

Proof. Note that the condition that:

\begin{equation*}U_{i}(\alpha) \leq_{icx} V_{i}(\alpha), i=1,2, \ldots, n,\end{equation*}

by Theorem 4.1, we have:

\begin{equation*} \sum_{i=1}^{n} U_{i} \leq_{icx} \sum_{i=1}^{n} V_{i}, \end{equation*}

for each $n\in \{1,2,\ldots\}$. This means,

\begin{equation*} \left(\sum_{i=1}^{N} U_{i}|N=n\right) \leq_{icx} \left(\sum_{i=1}^{N} V_{i}|N=n\right), \end{equation*}

for each $n\in \{1,2,\ldots\}$. Using Lemma 3.2, the desired result is immediately obtained.

In addition, we can extend Theorem 4.A.9 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26]. The proof is similar to the proof of Theorem 3.5, so it is omitted.

Theorem 4.3. Suppose that $\left\{U_i, i \geq 1\right\}$ and $\left\{V_i, i \geq 1\right\}$ are two sequences of nonnegative identically distributed random variables, $C{({\bar{\boldsymbol F}}_{U_n}{(u_n)})}$ and $C{({\bar{\boldsymbol F}}_{V_n}{(v_n)})}$ are the joint survival functions of $\left(U_1, \ldots, U_n\right)$ and $\left(V_1, \ldots, V_n\right)$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $U_1(\alpha), U_2(\alpha), \ldots\left[V_1(\alpha), V_2(\alpha), \ldots\right]$ be independent, and the survival function of $U_i(\alpha)\left[V_i(\alpha)\right]$ be given by $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. Let N 1 and N 2 be two positive integer-valued random variables, and be independent of Ui’s, Vi’s, $U_i(\alpha)$’s and $V_i(\alpha)$’s, respectively. If $U_i(\alpha) \leq_{icx} V_i(\alpha)$ for $i=1,2, \ldots$, and $N_1 \leq{}_{i c x} N_2$, then

\begin{equation*} \sum_{i=1}^{N_1} U_i \leq_{i c x} \sum_{i=1}^{N_2} V_i. \end{equation*}

Particularly, taking $V_k=U_k$ in Theorem 4.3, we obtain the following result, which is the extension of Theorem 8.A.13(a) in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26].

Corollary 4.4. Suppose that $\left\{U_i, i \geq 1\right\}$ is a sequence of nonnegative identically distributed random variables, $C{({\bar{\boldsymbol F}}_{U_n}{({\boldsymbol u}_n)})}$ is the joint survival function of $\left(U_1, \ldots, U_n\right)$, where C is the Archimedean copula with generator ϕ. Let N 1 and N 2 be two positive integer-valued random variables that are independent of Ui’s. Then

\begin{equation*} N_1 \leq_{i c x} N_2 \Longrightarrow \sum_{i=1}^{N_1} U_i \leq_{i c x} \sum_{i=1}^{N_2} U_i. \end{equation*}

Corollary 4.5. Under the setup of Theorem 4.3, if there is some positive integer k such that:

\begin{equation*}\sum_{i=1}^kU_i(\alpha)\leq_{icx}V_1(\alpha)\;\;\;and\;\;{}N_1\leq_{icx}kN_2,\end{equation*}

then

\begin{equation*} \sum_{j=1}^{N_1} U_j \leq_{i c x} \sum_{j=1}^{N_2} V_j. \end{equation*}

The above corollary is an extension of Theorem 4.A.12 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26]. Similarly, Theorem 4.A.13 and 4.A.14 of Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] can be extended to the Archimedean copula case. These results are not stated.

The following theorem shows that Theorem 4.A.15 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] can be extended to the Archimedean copula dependent case.

Theorem 4.6. Let $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ be the joint survival functions of $(U_{1}, \ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $U_1(\alpha),\dots, U_n(\alpha)\,[V_1(\alpha),\dots, V_n(\alpha)]$ be independent, and the survival function of $U_i(\alpha)\,[V_i(\alpha)]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i})}\}}\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i})}\}}\rbrack$, respectively. If $U_{i}(\alpha) \leq_{icx} V_{i}(\alpha)$ for $i=1,2, \ldots, n$, then for every increasing and componentwise convex function g, we have:

\begin{equation*} g\left(U_{1}, U_{2}, \ldots, U_{n}\right) \leq_{icx} g\left(V_{1}, V_{2}, \ldots, V_{n}\right). \end{equation*}

Proof. For any increasing convex function φ, according to Lemma 3.1, we have:

(6)\begin{equation} E\left\{\varphi \left[{g}\left(U_{1}, \ldots, U_{n}\right)\right]\right\}=\int_{0}^{\infty} E\left\{\varphi \left[{g}\left(U_{1}(\alpha), \ldots, U_{n}(\alpha)\right)\right]\right\} d L_{\phi^{-1}}(\alpha), \end{equation}

and

(7)\begin{equation} E\left\{\varphi \left[{g}\left(V_{1}, \ldots, V_{n}\right)\right]\right\}=\int_{0}^{\infty} E\left\{\varphi \left[{g}\left(V_{1}(\alpha), \ldots, V_{n}(\alpha)\right)\right]\right\} d L_{\phi^{-1}}(\alpha). \end{equation}

Because $U_{k}(\alpha) \leq_{icx} V_{k}(\alpha), 1\leq k \leq n$ for all α > 0, we get from Theorem 4.A.15 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26] that

\begin{equation*}g\left(U_{1}(\alpha), \ldots, U_{n}(\alpha)\right) \leq_{icx} g\left(V_{1}(\alpha), \ldots, V_{n}(\alpha)\right).\end{equation*}

This means that for any increasing convex function φ, we have:

(8)\begin{equation} E\left[\varphi \left({g}\left(U_{1}(\alpha), \ldots, U_{n}(\alpha)\right)\right)\right] \leq E\left[\varphi \left({g}\left(V_{1}(\alpha), \ldots, V_{n}(\alpha)\right)\right)\right]. \end{equation}

Using (6), (7) and (8), we obtain:

\begin{equation*} E\left[\varphi \left({g}\left(U_{1}, \ldots, U_{n}\right)\right)\right] \leq E\left[\varphi \left({g}\left(V_{1}, \ldots, V_{n}\right)\right)\right].\end{equation*}

Hence we have $g\left(U_{1}, \ldots, U_{n}\right) \leq_{icx} g\left(V_{1}, \ldots, V_{n}\right)$.

In particular, Theorem 4.1 can be obtained by taking $g\left(U_{1}, \ldots, U_{n}\right)=\sum_{i=1}^{n}U_{i}$. Similarly, we can extend Theorem 4.A.16 in Shaked and Shanthikumar [Reference Shaked and Shanthikumar26]. The proof is omitted.

Corollary 4.7. Under the setup of Theorem 4.6. Then

\begin{equation*} U_{i}(\alpha) \leq_{icx} V_{i}(\alpha), \quad i=1,2, \ldots, n \Rightarrow max\{U_{1},U_{2},\cdots,U_{n}\}\leq_{icx} max\{V_{1},V_{2},\cdots,V_{n}\}. \end{equation*}

The following corollary shows the comparison results of the sums and products of the dependent random variables, which have very important applications in the fields of finance and insurance.

Corollary 4.8. Under the setup of Theorem 4.6, assume that $a_{1}, \ldots, a_{n}$ are nonnegative real numbers, and $U_{i}(\alpha) \leq_{icx} V_{i}(\alpha), i=1,2, \ldots, n$. Then

  1. (i) $\sum_{k=1}^{n} a_{k} U_{k} \leq_{icx} \sum_{k=1}^{n} a_{k} V_{k};$

  2. (ii) if $(U_{1},\ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ are nonnegative, we have: $\prod_{k=1}^{n} a_{k} U_{k} \leq_{icx} \prod_{k=1}^{n} a_{k} V_{k}.$

Remark 4.9. It should be emphasized that all the above theorems and corollaries still hold if $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ are replaced by the joint distribution functions $C\left(\boldsymbol{F}_{\boldsymbol{U}_{n}}\left(\boldsymbol{u}_{n}\right)\right)$ and $C\left(\boldsymbol{F}_{\boldsymbol{V}_{n}}\left(\boldsymbol{v}_{n}\right)\right)$, and the survival functions of $U_{i}(\alpha)$ and $V_{i}(\alpha)$ are replaced by the distribution functions $\exp \left\{-\alpha \phi\left(F_{U_{i}}\right)\right\}$ and $\exp \left\{-\alpha \phi\left(F_{V_{i}}\right)\right\}$.

5. Two applications

In this section, two potential applications of our results are presented. One application is to compare the lifetimes of two systems subjected to shocks. Compound Poisson processes are usually used to describe the wear accumulated by systems during time. Suppose that the system is subjected to shocks arriving according to the Poisson process $\{N(t), t \geq 0\}$, and that the ith shock causes a nonnegative damage Ui $[V_i]$. Then $\sum_{i=1}^{N(t)} U_i$ and $\sum_{i=1}^{N(t)} V_i$ denote the total wear accumulated up to time t by the two systems, respectively. It is usually assumed that $\{U_1,U_2,\dots\} \,[\{V_1,V_2,\dots\}]$ is the sequence of independent random variables. In practice, however, this assumption of independence often fails. The following theorem, which is obtained by using Theorem 3.4, can be used to compare these two totals.

Theorem 5.1. Suppose that $\{U_i, \,i\geq1\}$ and $\{V_i, \,i\geq1\}$ are two nonnegative dependent sequences of random variables, $C{({\bar{\boldsymbol F}}_{{\boldsymbol U}_n}{({\boldsymbol u}_n)})}$ and $C{({\bar{\boldsymbol F}}_{{\boldsymbol V}_n}{({\boldsymbol v}_n)})}$ are the joint survival functions of $(U_{1}, \ldots, U_{n})$ and $(V_{1}, \ldots, V_{n})$ respectively, where C is the Archimedean copula with generator ϕ. For all α > 0, let the random variables $\{U_i(\alpha),\, i\geq1\}$ $[\{V_i(\alpha), \,i\geq1\}]$ be independent, and the survival function of $U_i(\alpha)\,[V_i(\alpha)]$ be $\exp{\{-\alpha\phi{({\bar F}_{U_i}(u_i))}\}}$ $\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i}(v_i))}\}}\rbrack$, respectively. Assume that the Poisson process N(t) is independent of Ui’s, Vi’s, $U_{i}(\alpha)$’s and $V_{i}(\alpha)$’s, respectively. Then,

\begin{equation*} U_{i}(\alpha) \leq_{cx} V_{i}(\alpha),\quad i=1,2, \ldots \Rightarrow\sum_{i=1}^{N(t)} U_{i} \leq_{c x}\sum_{i=1}^{N(t)} V_{i}. \end{equation*}

Another application is to compare the average life span of two populations. Assume that each population has n individuals. Ui $[V_i]$ denotes the life span of the ith individual. Then $\sum_{i=1}^{n} U_{i}/n$ and $\sum_{i=1}^{n} V_{i}/n$ denote the average life span of the two populations. Similar to the first application, we assume that $U_1,\dots, U_n\,[V_1,\dots, V_n]$ are dependent. We apply Theorem 4.1 to obtain the following result for the comparison of two populations in the sense of the increasing convex order.

Theorem 5.2. Suppose that $\left\{U_i, n \geq i \geq 1\right\}$ and $\left\{V_i, n \geq i \geq 1\right\}$ are two sequences of nonnegative random variables, $C{({\bar{\boldsymbol F}}_{U_n}{(u_n)})}$ and $C{({\bar{\boldsymbol F}}_{V_n}{(v_n)})}$ are the joint survival functions of $\left(U_1, \ldots, U_n\right)$ and $\left(V_1, \ldots, V_n\right)$ respectively, where C is the Archimedean copula with generator ϕ. Let the random variables $U_1(\alpha), U_2(\alpha), \ldots\left[V_1(\alpha), V_2(\alpha), \ldots\right]$ be independent, and the survival function of $U_i(\alpha)\left[V_i(\alpha)\right]$ be given by $\exp{\{-\alpha\phi{({\bar F}_{U_i}(u_i))}\}}$ $\lbrack\exp{\{-\alpha\phi{({\bar F}_{V_i}(v_i))}\}}\rbrack$, respectively, for all α > 0. If $U_i(\alpha) \leq_{icx} V_i(\alpha)$ for $i=1,2, \ldots, n$, then:

\begin{equation*} \sum_{i=1}^{n} U_i/n \leq_{i c x} \sum_{i=1}^{n} V_i/n. \end{equation*}

6. Conclusions

It is an important issue to compare the stochastic ordering for the functions of random variables especially in the insurance and economic context for the close relationship between stochastic orders and risk measurement. Among various stochastic orders, convex order and increasing convex order have many applications in the fields of finance and insurance. Given that Archimedean copulas are often used to describe the dependence of the risk factors and claim amounts, it is meaningful to study the properties of convex order and increasing convex order under the Archimedean copula dependence.

Under the Archimedean copula, the results of some well-known independent random variables on convex order and increasing convex order are generalized to the dependent case, which include the functions and random sums of dependent random variables. Two applications in reliability are also provided to illustrate the main results.

Acknowledgments

The work is supported by both the National Natural Science Foundation of China under the contract number 12271480 and Wuyi University Started the Project of Introducing Talents for Scientific Research under the contract number YJ202316.

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