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Risk-sharing rules for mortality pooling products with stochastic and correlated mortality rates

Published online by Cambridge University Press:  15 September 2025

Yuxin Zhou*
Affiliation:
School of Risk and Actuarial Studies, University of New South Wales, Kensington, NSW, Australia ARC Centre of Excellence in Population Ageing Research, University of New South Wales, Kensington, NSW, Australia
Len Patrick Dominic Garces
Affiliation:
ARC Centre of Excellence in Population Ageing Research, University of New South Wales, Kensington, NSW, Australia School of Mathematical and Physical Sciences, University of Technology Sydney, Ultimo, NSW, Australia
Yang Shen
Affiliation:
School of Risk and Actuarial Studies, University of New South Wales, Kensington, NSW, Australia ARC Centre of Excellence in Population Ageing Research, University of New South Wales, Kensington, NSW, Australia
Michael Sherris
Affiliation:
School of Risk and Actuarial Studies, University of New South Wales, Kensington, NSW, Australia ARC Centre of Excellence in Population Ageing Research, University of New South Wales, Kensington, NSW, Australia
Jonathan Ziveyi
Affiliation:
School of Risk and Actuarial Studies, University of New South Wales, Kensington, NSW, Australia ARC Centre of Excellence in Population Ageing Research, University of New South Wales, Kensington, NSW, Australia
*
Corresponding author: Yuxin Zhou; Email: yuxin.zhou@unsw.edu.au
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Abstract

Risk-sharing rules have been applied to mortality pooling products to ensure these products are actuarially fair and self-sustaining. However, most of the existing studies on the risk-sharing rules of mortality pooling products assume deterministic mortality rates, whereas the literature on mortality models provides empirical evidence suggesting that mortality rates are stochastic and correlated between cohorts. In this paper, we extend existing risk-sharing rules and introduce a new risk-sharing rule, named the joint expectation (JE) rule, to ensure the actuarial fairness of mortality pooling products while accounting for stochastic and correlated mortality rates. Moreover, we perform a systematic study of how the choice of risk-sharing rule, the volatility and correlation of mortality rates, pool size, account balance, and age affect the distribution of mortality credits. Then, we explore a dynamic pool that accommodates heterogeneous members and allows new entrants, and we track the income payments for different members over time. Furthermore, we compare different risk-sharing rules under the scenario of a systematic shock in mortality rates. We find that the account balance affects the distribution of mortality credits for the regression rule, while it has no effect under the proportional, JE, and alive-only rules. We also find that a larger pool size increases the sensitivity to the deviation in total mortality credits for cohorts with mortality rates that are volatile and highly correlated with those of other cohorts, under the stochastic regression rule. Finally, we find that risk-sharing rules significantly influence the effect of longevity shocks on fund balances since, under different risk-sharing rules, fund balances have different sensitivities to deviations in mortality credits.

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This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
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© The Author(s), 2025. Published by Cambridge University Press on behalf of The International Actuarial Association

1 Introduction

Mortality pooling products are useful tools for reducing the idiosyncratic mortality risks of their participants. These products involve retirees in a risk-sharing pool in which surviving members benefit from the mortality credits accrued by members who have passed away. Compared with conventional life annuity products, mortality pooling products have the advantage of requiring less capital because they are self-sustaining and do not guarantee lifetime income. As such, potential participants can purchase these products at a lower price, and providers can reduce their financial and longevity risk exposure with less capital. At the same time, they also provide retirees with retirement income streams. Mortality pooling products can be broadly categorized into pooled annuities (Piggott et al., Reference Piggott, Valdez and Detzel2005; Qiao and Sherris, Reference Qiao and Sherris2013; Bernhardt and Donnelly, Reference Bernhardt and Donnelly2021), tontines (Milevsky and Salisbury, Reference Milevsky and Salisbury2015; Milevsky and Salisbury, Reference Milevsky and Salisbury2016; Chen and Rach, Reference Chen and Rach2019; Chen et al., Reference Chen, Hieber and Klein2019; Chen et al., Reference Chen, Rach and Sehner2020), and risk-sharing products (Sabin, Reference Sabin2010; Donnelly et al., Reference Donnelly, Guillén and Nielsen2014; Donnelly and Young, Reference Donnelly and Young2017; Fullmer and Sabin, Reference Fullmer and Sabin2018; Denuit, Reference Denuit2019; Weinert and Gründl, Reference Weinert and Gründl2021) with an additional decumulation plan. These products share the advantage of requiring zero or almost zero capital, while the ways of distributing the mortality credits and determining income payments are different.

Within the three broad categories of mortality pooling products, risk-sharing products apply a specific risk-sharing rule in the step of distributing mortality credits. The risk-sharing rule is a concept of sharing insurance losses, which can be applied to sharing the loss of individuals in the case of death for mortality pooling products. An extensive study is conducted in Denuit et al. (Reference Denuit, Dhaene and Robert2022a) on the properties of risk-sharing rules. Due to the application of a risk-sharing rule with desirable properties, risk-sharing products allow heterogeneity of fund members, allow new entrants, and are actuarially fair. These ideal properties can attract potential buyers so that the fund can benefit from a large pool size to reduce the volatility of payments. Therefore, risk-sharing products become a natural choice for this study.

Previous studies on risk-sharing products include Sabin (Reference Sabin2010), Donnelly et al. (Reference Donnelly, Guillén and Nielsen2014), Forman and Sabin (Reference Forman and Sabin2015), Donnelly (Reference Donnelly2017), Donnelly and Young (Reference Donnelly and Young2017), Fullmer and Sabin (Reference Fullmer and Sabin2018), Denuit (Reference Denuit2019), Weinert and Gründl (Reference Weinert and Gründl2021), Denuit et al. (Reference Denuit, Hieber and Robert2022b). Sabin (Reference Sabin2010) focuses on actuarial fairness and proposes fair tontine and fair tontine annuity designs that allow heterogeneity in the pool. Despite the product being named tontine, the risk-transfer plan essentially uses a risk-sharing rule to distribute the total mortality credits to individual accounts of members alive. Then, an income payment is paid from the account balance of the individual after risk sharing following a decumulation plan. Forman and Sabin (Reference Forman and Sabin2015) state that the two main advantages of these products are the low probability of underfunding, and the issuer will not need to bear all the mortality risk and investment risk. Weinert and Gründl (Reference Weinert and Gründl2021) study the effect of tontines on retirement planning subject to different individual preferences and characteristics. However, the fair transfer plan involves solving a system of linear equations that increases in size with the number of members, making the transfer plan computationally difficult to implement and hard to explain to members and potential buyers. Donnelly and Young (Reference Donnelly and Young2017) propose a risk-sharing rule for mortality pooling products, which is actuarially fair for individuals of all ages at any point in time and thus gives members the freedom to join and leave the pool. The distribution of mortality credits in Donnelly and Young (Reference Donnelly and Young2017) is determined by the risk exposure of individuals. The proportional risk-sharing rule in Donnelly and Young (Reference Donnelly and Young2017) is the discrete-time version of the annuity overlay fund in Donnelly et al. (Reference Donnelly, Guillén and Nielsen2014). Denuit (Reference Denuit2019) applies the conditional-mean risk-sharing rule proposed in Denuit and Dhaene (Reference Denuit and Dhaene2012) on sharing mortality credits and compares it with the formalised discrete-time risk-sharing rule in Donnelly (Reference Donnelly2017). Denuit et al. (Reference Denuit, Hieber and Robert2022b) then study the effect of pool size on conditional mean mortality risk sharing and find that the individual risk can be fully diversified if the pool size tends to infinity. However, the focus of Donnelly and Young (Reference Donnelly and Young2017) and Denuit (Reference Denuit2019) is mainly on the fair game of the fund balance but does not specify a decumulation plan. Individuals can decide to spend part of the fund balance and invest the remaining back into the pool, or they can take the money and leave the pool forever. As such, there is a risk that individuals overspend their fund balance due to a preference for early spending or short-sighted behaviour, leaving an insufficient amount of income to sustain them for their remaining lifetimes. Fullmer and Sabin (Reference Fullmer and Sabin2018) propose a risk-sharing rule that is slightly different from the one in Donnelly and Young (Reference Donnelly and Young2017) and only distributes mortality credits to the members alive, and they are also one of the earliest to study two decumulation strategies: a $10$ -year lump sum or annuity-like payments. However, their risk-sharing rule is almost fair but not strictly fair mathematically. Hieber and Lucas (Reference Hieber and Lucas2022) study mortality and morbidity pooling products, which enable the use of different risk-sharing rules. The decumulation strategy in Hieber and Lucas (Reference Hieber and Lucas2022) pays out all the mortality credits distributed to the individual as part of the benefit payments, in addition to a fixed payment to be determined to ensure actuarial fairness. This paper differs from Hieber and Lucas (Reference Hieber and Lucas2022) in that the mortality credit is directly added to the fund balance, and the benefit payment is determined by the fund balance with the mortality credits included, using the idea of group self-annuitisation (GSA) payments. Therefore, our approach has the benefit of more straightforward calculation while maintaining actuarial fairness because it does not require backward iterations. Moreover, the literature lacks focus on the factors that affect the decumulation of a risk-sharing product and the comparison of different risk-sharing rules for mortality pooling products. This research is thus motivated to study risk-sharing rules with these properties along with a decumulation plan. The income payments are investigated over a period of time since the initial establishment of the product.

Moreover, despite multiple risk-sharing rules proposed to distribute mortality credits, most existing studies on mortality risk-sharing products assume deterministic mortality rates, whereas the developments in the literature on mortality models suggest that mortality rates are stochastic and correlated (Jevtić et al., Reference Jevtić, Luciano and Vigna2013; Xu et al., Reference Xu, Sherris and Ziveyi2020; Zhou et al., Reference Zhou, Garces, Shen, Sherris and Ziveyi2023). Therefore, this paper is motivated to extend current risk-sharing rules to a stochastic setting and explores new risk-sharing rules that are fair and self-sustaining under the stochastic setting. When mortality rates are stochastic and correlated, but a pooling product applies a risk-sharing rule based on deterministic mortality rates, bias can arise, leading to an unfair distribution of mortality credits among fund members, especially when the mortality experience deviates from expectations. Moreover, all risk-sharing rules studied in this paper are self-sustaining, even when the mortality experience deviates from the expectation. Therefore, from the perspective of the issuer, there is no risk of going underfunded, regardless of the chosen risk-sharing rule. However, the choice of risk-sharing rule significantly impacts fund members, especially when the mortality rates deviate from the expectation. For example, some risk-sharing rules result in lower rates of return on mortality credits to fund members with higher fund balances when there is a longevity shock. Meanwhile, for other risk-sharing rules, the fund balance will not have an impact. Moreover, the pool size, age distribution, and assumptions on mortality rates also have an impact on risk sharing. Therefore, this paper examines the differences in risk-sharing rules under deterministic versus stochastic mortality rates and explores the factors influencing the distribution of mortality credits across various risk-sharing rules. Furthermore, few studies have been conducted so far on the comparison of different risk-sharing rules and the evolution of a dynamic pool allowing heterogeneous members. This motivates us to study the income payments and balances over time and how they are affected by the choice of risk-sharing rules, member profiles, and a longevity shock.

This paper contributes to the literature in the following aspects. First, we contribute to the literature on risk-sharing rules in mortality pooling products by considering the fact that mortality rates are stochastic and correlated random variables in risk sharing. Most of the existing papers on mortality risk sharing assume deterministic mortality rates (Sabin, Reference Sabin2010; Donnelly, Reference Donnelly2017; Fullmer and Sabin, Reference Fullmer and Sabin2018; Denuit and Robert, Reference Denuit and Robert2021), although Chen and Rach (Reference Chen and Rach2023) apply a stochastic shock to the deterministic Gompertz Law (Gompertz, Reference Gompertz1825). We analyse existing risk-sharing rules, such as the proportional rule (Donnelly and Young, Reference Donnelly and Young2017), the regression rule (Denuit and Robert, Reference Denuit and Robert2021), and the alive-only rule (Fullmer and Sabin, Reference Fullmer and Sabin2018), and we extend them to the case in which mortality rates are stochastic and correlated. Another contribution is that a new risk-sharing rule called the joint expectation (JE) rule is proposed and tested, which takes stochastic mortality rates and correlations between mortality rates of different cohorts into account. We show that the JE risk-sharing rule is actuarially fair and sustainable with heterogeneous cohorts when mortality rates are stochastic and when a death benefit is included. The JE rule can be considered as the stochastic extension of the proportional rule which further incorporates the volatility and correlation of mortality rates into risk sharing. In this paper, we compare the differences between risk-sharing rules and their stochastic extensions, as well as between different categories of risk-sharing rules to study the effect of incorporating the volatility and correlation of mortality rates for different risk-sharing rules.

Moreover, we contribute to the literature by investigating the effect of fund balance, age, pool size, and volatilities and correlations of mortality rates on fund balances and benefit payments for different risk-sharing rules. Our findings show that for regression rules, in which the risk-sharing weights take into account the covariance between the individual fund balance at risk and the total mortality credits, the higher the initial balance, the higher the weighting in the difference between the empirical and expected total mortality credits. Meanwhile, for proportional, JE, and alive-only rules, individual account balance does not affect the weight of the deviation in the total mortality credits. The weight of the deviation in the total mortality credits measures the impact on a risk-sharing rule when there is a longevity shock. For example, when there is a systematic reduction in mortality rates, then there will be a negative deviation from the expected total mortality credits, which will cause more reduction in the balance and income payments in the risk-sharing rules that have a higher weight in this deviation. Furthermore, we find that pool size plays an important role when stochasticity and correlation of mortality rates are included in risk sharing. For the stochastic regression rule, with the assumed correlation matrix between the mortality rates of cohorts, when the pool size increases, the weight in the deviation of total mortality credits increases for middle-aged retirees at age $80$ who have more volatile mortality rates and are more correlated with other cohorts. Meanwhile, for young and very old retirees at ages $60$ and $100$ , the weight in the deviation decreases.

Finally, we study how a longevity shock will affect income payments and fund balances for different risk-sharing rules when mortality rates are assumed to be either deterministic or stochastic and correlated. A dynamic pool with new and heterogeneous members joining is investigated over time. It is found that with a $5$ -year systematic reduction in mortality rates, the stochastic and deterministic regression rules give lower account balances at the end of the period for younger retirees and middle-aged retirees with high balances, compared with proportional and JE rules. Meanwhile, for older retirees and middle-aged retirees with low balances, the stochastic and deterministic regression rules give higher account balances than the proportional and JE rules. The alive-only rule always gives the highest account balances in old age.

The rest of the paper is structured as follows. The operation of the risk-sharing product with a decumulation rule along with the two important properties, namely actuarial fairness and self-sustainability, is introduced in Section 2. We extend risk-sharing rules to the setting with stochastic and correlated mortality rates in Section 3 and prove their fairness and self-sustainability. In particular, Subsection 3.4 introduces a new risk-sharing rule, named the JE rule, which is actuarially fair and self-sustaining with stochastic and correlated mortality rates. Meanwhile, the JE rule reduces to the proportional risk-sharing rule when mortality rates are deterministic. We examine the risk-sharing rules by considering an open pool with heterogeneous members joining every year. Section 4 presents the data, assumptions, and results of how the deviation in expected mortality credits, different fund balances, pool sizes, and longevity shocks will affect different risk-sharing rules, respectively. Section 5 concludes the paper.

2 Fund operation

This section presents the fund operation, which is innovated by Fullmer and Sabin (Reference Fullmer and Sabin2018) and Piggott et al. (Reference Piggott, Valdez and Detzel2005) but has been reformulated for the study of different risk-sharing rules in this paper. We consider a probability space $(\Omega, \mathcal{F}, P),$ which supports all random variables and stochastic processes involved in the fund operation and the risk-sharing rules. All expected values, variances, and covariances are computed with respect to the probability measure $P$ . The fund operation allows each member $i$ to have their own account. When the pooling product commences, each member $i$ contributes an initial amount $F_{i}(0)$ as the initial account balance. At the end of the first period, the initial investment has an accumulated value denoted by $s_{i}(1) = F_{i}(0) (1 + ROR_{i}(0))$ , where $ROR_{i}(0)$ is the deterministic rate of return on the investment of the $i^{\text{th}}$ th member over the period $[0,1]$ . The rate of return $ROR_{i}(0)$ is specific to each individual $i$ since individuals can choose their asset allocation in government and corporate bonds. A risk-sharing rule is then applied to obtain the fund balance $V_{i}(1)$ after distributing the total mortality credits from the members who have passed away over the period $[0,1]$ , and the benefit $B_{i}(1)$ based on $V_{i}(1)$ is paid to the individual. The remaining balance $F_{i}(1) = V_{i}(1) - B_{i}(1)$ is then reinvested. New members can join the fund at time $1$ , and the process is repeated for all members.

We now describe the fund mechanics at an arbitrary point in time $t$ . The fund operates as the following steps.

Step 1: Accumulation

Assume that the fund value of member $i$ at time $t$ after all the payments to be made is $F_{i}(t)$ . Then, at time $t+1$ , the fund value is accumulated to:

(2.1) \begin{align} s_{i}(t+1)=F_{i}(t)(1+ROR_{i}(t)), \end{align}

where $ROR_{i}(t)$ is the deterministic return rate of individual $i$ between time $t$ and $t+1$ .

Step 2: Risk sharing

The set of members who have passed away over the period $[t, t+1]$ is denoted by $D(t+1)$ . The accumulated fund values of members in the set $D(t+1)$ who have passed away over the period $[t, t+1]$ are added up to form the total mortality credits $S(t+1)$ at time $t+1$ , that is,

\begin{align*} S(t+1)=\sum_{j=1}^{N(t)}1_{j \in D(t+1)}s_{j}(t+1),\end{align*}

where $N(t)$ is the total number of members in the pool at time $t$ . The total mortality credits $S(t+1)$ will be distributed at time $t+1$ to either every member alive at time $t$ or only those who survive at the end of the period time $t+1$ , depending on the choice of the risk-sharing rule.

The distribution of the total mortality credit $S(t+1)$ to each individual account with a risk-sharing rule is represented in Equation (2.2). The fund value $V_{i}(t+1)$ of individual $i$ at time $t+1$ after risk sharing and before paying the benefit will be

(2.2) \begin{align}V_{i}(t+1)=\begin{cases}g_{A}(s_{i}(t+1),S(t+1)) & \text{if individual $i$ survives this period,} \\[3pt] g_{D}(s_{i}(t+1),S(t+1)) & \text{if individual $i$ dies during this period,}\end{cases}\end{align}

where $g_{A}(\!\cdot\!)$ and $g_{D}(\!\cdot\!)$ are functions of fund balance $s_{i}(t+1)$ of individual $i$ and total mortality credits $S(t+1)$ at time $t+1$ in the case of being alive or dead at time $t+1$ , respectively, representing the risk-sharing rule. One common setting of the risk-sharing rule, as an example, is

(2.3) \begin{align}V_{i}(t+1)=\begin{cases}s_{i}(t+1) + w_{i}^{A}(t+1) S(t+1) & \text{if individual $i$ survives this period,} \\[3pt] w_{i}^{D}(t+1) S(t+1) & \text{if individual $i$ dies during this period,}\end{cases}\end{align}

where $w_{i}^{j}(t+1)$ is the weighting of individual $i$ on the total mortality credits $S(t+1)$ at time $t+1$ for $j=A$ or $D$ representing alive or dead. The weighting functions often depend on the one-year probability of death $q_{i}(t)$ for individual $i$ at time $t$ . We can see that under this setting, members who are alive will be better off because $s_{i}(t+1)\leq s_{i}(t+1) + w_{i}^{A}(t+1) S(t+1)$ when the weighting $w_{i}^{A}(t+1)$ and the total mortality credits $S(t+1)$ are nonnegative. Meanwhile, members who have died will lose their accumulated fund value $s_{i}(t+1)$ .

Step 3: Benefit payment

After risk sharing, the benefit payment as the retirement income to every individual at time $t+1$ is determined by

(2.4) \begin{align}B_{i}(t+1)=\begin{cases}\frac{V_{i}(t+1)}{\ddot{a}_{x_{i,t+1}}} & \text{if individual $i$ survives this period,} \\[3pt] V_{i}(t+1) & \text{if individual $i$ dies during this period,}\end{cases}\end{align}

where $\ddot{a}_{x_{i,t+1}}$ is the actuarial notation of an annuity due for individual $i$ who is aged $x_{i}$ at time $t+1$ . The fund recalculates the annuity-like payment values at each point in time, similar to the idea of a GSA in Piggott et al. (Reference Piggott, Valdez and Detzel2005). The annuity due factor is calculated as

\begin{align*} \ddot{a}_{x_{i,t+1}}=1+\sum_{s=1}^{\infty}\frac{E[{}_{s}{p}_{x_{i}}(t+1)]}{\prod_{k=1}^{k=s}(1+RF_{i}(t+k))}\geq1,\end{align*}

where ${}_{s}{p}_{x_{i}}(t+1)$ is the $s$ -year survival probability for individual $i$ aged $x_i$ at time $t+1$ , and $RF_{i}(t)$ represents the deterministic risk-free rate for individual $i$ between time $t$ and $t+1$ . Despite $RF_{i}(t)$ being presented in a general form in the framework, all individuals are assumed to have the same risk-free rate so that $RF_{i}(t)=RF(t)$ . The annuity due factor $\ddot{a}_{x_{i,t+1}}\geq1$ ensures that the benefit payment is always smaller or equal to the fund value after risk sharing $B_{i}(t+1)\leq V_{i}(t+1)$ . If member $i$ dies, their balance after risk sharing will be paid out to them so that the remaining balance will be $0$ and their account will be closed. The remaining fund balance for member $i$ is represented as

(2.5) \begin{align}F_{i}(t+1)=\begin{cases}V_{i}(t+1)-B_{i}(t+1) & \text{if individual $i$ survives this period,} \\[3pt]0 & \begin{aligned} &\text{if individual $i$ dies during this period and}\\[3pt] &\text{thus leaves the pool at the end of the period.}\end{aligned}\end{cases}\end{align}

If member $i$ survives, the fund value of member $i$ after risk sharing will often be higher than the fund value before risk sharing: $V_{i}(t+1)\gt s_{i}(t+1)$ if the return of member $i$ from the distribution of total mortality credits is nonnegative. Hence, if they live longer than expected, their sum of income payments discounted to time zero will be higher than what they initially invested, similar to life annuities. This coincides with the idea in the monograph Milevsky (Reference Milevsky2022), which states that the major purpose of mortality risk sharing is pooling with people who are willing to share that risk and benefit from the mortality credits.

Step 4: Accumulation in the next period

The fund value after risk sharing and benefit payment $F_{i}(t+1)$ becomes the initial value for the next period $[t+1,t+2]$ . New members can join the fund at time $t+1$ with their initial contributions. The fund value of member $i$ is accumulated to $s_{i}(t+2)=F_{i}(t+1)(1+ROR_{i}(t+1))$ following Equation (2.1).

2.1 Fairness and self-sustainability

Fairness and self-sustainability are two important properties of a risk-sharing rule in Step 2, as discussed in Denuit et al. (Reference Denuit, Dhaene and Robert2022a), Hieber and Lucas (Reference Hieber and Lucas2022). We equip $(\Omega, \mathcal{F}, P)$ with the filtration $\{\mathcal{F}(t)\}_{t \geq 0}$ , where $\mathcal{F}(t) = \sigma\{(A(s), F(s)) : 0 \leq s \leq t\}$ is the $\sigma$ -algebra generated by $A(t)$ the set of people alive in the pool at time $t$ and $F(t)$ the set of fund balances at time $t$ , where $F(t)=\{F_{1}(t), F_{2}(t), ..., F_{N(t)}(t)\}$ . We denote $E_{t}[\cdot]=E[\cdot|\mathcal{F}(t)]$ . When mortality rates are stochastic, we denote $Q(t)$ as the set of mortality rates $Q(t)=\{q_{1}(t), q_{2}(t), ..., q_{N(t)}(t)\}$ , where $q_{i}(t)$ are random variables of the one-year mortality rates of individual $i$ during the period. We also denote $E_{t}[\cdot|\sigma(Q(t))]=E[\cdot|\mathcal{F}(t)\vee \sigma(Q(t))]$ , where $\sigma(Q(t))$ is the $\sigma$ -algebra generated by $Q(t)$ . Note that the mortality rate $q_{i}(t)$ of any individual $i$ over $[t, t+1]$ is independent to the filtration $\mathcal{F}(t)$ since the mortality rates over time $[t, t+1]$ only rely on random events over that period and are independent to the survivorship and fund balances by time $t$ , so $E_{t}[q_{i}(t)]=E[q_{i}(t)]$ .

Definition 1 (Fairness). A risk-sharing rule is said to be fair if for each member $i$ at time $t+1$ for $t=0, 1, 2, 3, ...$ , the expected fund value after risk sharing conditional on $\mathcal{F}(t)$ is equal to its value before risk sharing:

(2.6) \begin{align}\mathrm{E}_{t}\left[V_{i}(t+1)\right]=s_{i}(t+1).\end{align}

Condition (2.6) promises that members are not taking advantage or disadvantage of other members by joining risk sharing. Note that $s_{i}(t+1)=F_{i}(t)(1+ROR_{i}(t))$ so $s_{i}(t+1)$ is $\mathcal{F}(t)$ -measurable.

Definition 2 (Self-sustainability). A risk-sharing rule is said to be self-sustaining if at any time $t=0, 1, 2, 3, ...$ , the sum of member fund balances before and after risk sharing are equal to each other:

(2.7) \begin{align} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}s_{j}(t+1). \end{align}

When a risk-sharing rule is self-sustaining, it will not pay higher than the total fund balance. Thus, insurance companies do not need to worry about the huge loss in the case of systematic mortality improvement. Therefore, it benefits from a lower capital requirement and thus a lower loading compared with life annuities.

3 Risk-sharing rules and extensions to stochastic mortality rates

We study and extend three risk-sharing rules in the literature, which are the proportional rule in Donnelly and Young (Reference Donnelly and Young2017), the regression rule in Denuit and Robert (Reference Denuit and Robert2021), and the alive-only rule in Fullmer and Sabin (Reference Fullmer and Sabin2018). We explain each of the risk-sharing rules in a consistent framework and extend them to the setting with stochastic and correlated mortality rates.

3.1 Proportional rule

First, we define the proportional rule that pays the total mortality credits in proportion to the expected loss when the mortality rates $q_{i}(t)$ are deterministic.

Definition 3. (Deterministic proportional rule). Consider a risk-sharing rule that the weights of the total mortality credits in Equation (2.3) are determined in proportion to the expected loss $s_{i}(t+1)q_{i}(t)$ , which is the product of accumulated fund balance and the one-year probability of death. At the end of a period, the fund value after risk sharing of an individual $i$ initially alive is

(3.1) \begin{align}V_{i}(t+1)=\begin{cases}s_{i}(t+1)+\frac{s_{i}(t+1)q_{i}(t)}{\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)} S(t+1) & \mathrm{if\ individual}\ i\ \mathrm{survives\ this\ period,}\\ \frac{s_{i}(t+1)q_{i}(t)}{\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)} S(t+1) & \mathrm{if\ individual}\ i\ \mathrm{dies\ during\ this\ period.} \end{cases}\end{align}

We call the risk-sharing rule in Equation (3.1) a deterministic proportional rule.

Proposition 1. The deterministic proportional rule in Equation (3.1) is fair and self-sustaining under deterministic mortality rates.

Proof. See Denuit (Reference Denuit2019).

We now extend the proportional risk-sharing rule to the case where mortality rates are stochastic and correlated. That is, we seek a risk-sharing rule of the form

\begin{align*}V_{i}(t+1)=\begin{cases}s_{i}(t+1)+w_{i}(t+1) S(t+1) & \text{if individual $i$ survives this period,} \\[3pt] w_{i}(t+1) S(t+1) & \text{if individual $i$ dies during this period,}\end{cases}\end{align*}

where the weights $w_{i}(t+1)$ are to be determined such that they are proportional to the total risk exposure and the rule is actuarially fair.

Proposition 2. When mortality rates are stochastic and correlated random variables, the risk-sharing rule:

(3.2) \begin{align} V_{i}(t+1) = \begin{cases} s_{i}(t+1)+\frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{i}(t)]} S(t+1) & \mathrm{individual}\ i\ \mathrm{survives\ this\ period,} \\[4pt] \frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{i}(t)]} S(t+1) & \mathrm{individual}\ i\ \mathrm{dies\ during\ this\ period,} \end{cases} \end{align}

is fair and self-sustaining.

Proof. Assume the following payout function holds:

\begin{align*}V_{i}(t+1)=\begin{cases}s_{i}(t+1)+w_{i}(t+1) S(t+1) & \text{if individual $i$ survives this period,} \\[3pt] w_{i}(t+1) S(t+1) & \text{if individual $i$ dies during this period.}\end{cases}\end{align*}

Using the law of conditional expectation, we obtain

\begin{align*} E_{t}[V_{i}(t+1)] &= E_{t}\left[E_{t}\left[V_{i}(t+1)|\sigma(Q(t))\right]\right]\\ &= E_{t}\left[s_{i}(t+1) (1-q_{i}(t))+w_{i}(t+1)\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)\right]\\ &= s_{i}(t+1)(1-E[q_{i}(t)])+E_{t}[w_{i}(t+1)]\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{j}(t)]\\ &= s_{i}(t+1),\end{align*}

which yields

\begin{align*} E_{t}[w_{i}(t+1)]=\frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{j}(t)]}.\end{align*}

Since the weight $w_{i}(t+1)$ is $\mathcal{F}(t)$ -measurable, we can write $w_{i}(t+1)=E_{t}[w_{i}(t+1)]=\frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{j}(t)]}$ . Therefore, the risk-sharing rule in Equation (3.2) is a fair risk-sharing rule.

The risk-sharing rule in Equation (3.2) is self-sustaining because

\begin{align*} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}\frac{s_{j}(t+1)E[q_{j}(t)]}{\sum_{k=1}^{N(t)}s_{k}(t+1)E[q_{k}(t)]} S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j \in D(t+1)}s_{j}(t+1)\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1).\end{align*}

The risk-sharing rule satisfying Equation (3.2) is called the stochastic proportional rule. One thing to notice is that $E[q_{i}(t)]$ is assumed to be equal to the $q_{i}(t)$ used in the numerical illustration of the deterministic case. Effectively, this is saying that the results on weighting are not affected when we move from deterministic to stochastic mortality rates.

Lemma 1. The stochastic proportional rule in Equation (3.2) can be rewritten as

\begin{align*} V_{i}(t+1)=\begin{cases} \begin{aligned} &s_{i}(t+1)+s_{i}(t+1)E[q_{i}(t)]\\[4pt] &+w_{i}^{\text{Proportional}}(t+1) (S(t+1)-E_{t}[S(t+1)]) \end{aligned} & \begin{aligned} &\mathrm{if\ individual}\ i \\[4pt] &\mathrm{survives\ this\ period,} \end{aligned} \\[12pt] \begin{aligned} &s_{i}(t+1)E[q_{i}(t)]\\[4pt] &+w_{i}^{\text{Proportional}}(t+1) (S(t+1)-E_{t}[S(t+1)]) \end{aligned} & \begin{aligned} &\mathrm{if\ individual}\ i\ \mathrm{dies} \\[4pt] &\mathrm{during\ this\ period,} \end{aligned} \end{cases}\end{align*}

where $w_{i}^{\text{Proportional}}(t+1)=\frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{i}(t)]}$ stands for the weighting for individual i at time $t+1$ with the stochastic proportional rule.

Proof. We can rewrite the share of mortality credits as

\begin{align*} &s_{i}(t+1)E[q_{i}(t)]+\frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{i}(t)]} (S(t+1)-E_{t}[S(t+1)])\\[4pt] & \quad = s_{i}(t+1)E[q_{i}(t)]+\frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{i}(t)]} S(t+1)-s_{i}(t+1)E[q_{i}(t)]\\[4pt] & \quad = \frac{s_{i}(t+1)E[q_{i}(t)]}{\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{i}(t)]} S(t+1), \end{align*}

which is equal to the form in Equation (3.2).

3.2 Regression rule

Denuit and Robert (Reference Denuit and Robert2021) consider a regression risk-sharing rule, which develops from linear regression and takes the volatility of the risky event into account. The regression risk-sharing rule is also referred to as the covariance risk-sharing rule in Jiao et al. (Reference Jiao, Kou, Liu and Wang2022). Despite the discussion in Hieber and Lucas (Reference Hieber and Lucas2022) under the setting of mortality-sharing products, the factors that affect this risk-sharing rule have not been discussed in detail, nor under stochastic mortality rates.

Definition 4 (Regression rule). Consider a risk-sharing rule that the distribution of the total mortality credits in Equation (2.2) is defined as the following:

(3.3) \begin{align}\begin{aligned}V_{i}(t+1) = \begin{cases}\begin{aligned} &s_{i}(t+1)+E_{t}[X_{i}(t+1)] \\[3pt] &+\frac{Cov_{t}(X_{i}(t+1),S(t+1))}{Var_{t}(S(t+1))}(S(t+1)-E_{t}[S(t+1)])\end{aligned} & \begin{aligned} &\mathrm{if\ individual}\ i \\[3pt] &\mathrm{survives\ this\ period,} \end{aligned} \\[24pt] \begin{aligned} &E_{t}[X_{i}(t+1)]\\[3pt] &+\frac{Cov_{t}(X_{i}(t+1),S(t+1))}{Var_{t}(S(t+1))}(S(t+1)-E_{t}[S(t+1)])\end{aligned}& \begin{aligned} &\mathrm{if\ individual}\ i\ \mathrm{dies} \\ &\mathrm{during\ this\ period,} \end{aligned}\end{cases}\end{aligned}\end{align}

where $X_{i}(t+1)=1_{i \in D(t+1)}s_{i}(t+1)$ and $S(t+1)=\sum_{j=1}^{N(t)} X_{j}(t+1)$ . We also denote $Cov_{t}(\cdot,\cdot)=Cov(\cdot,\cdot|\mathcal{F}(t))$ and $Var_{t}(\!\cdot\!)=Var(\cdot|\mathcal{F}(t))$ . The risk-sharing rule that satisfies Equation (3.3) is called the regression rule.

Proposition 3. The regression risk-sharing rule in Equation (3.3) is actuarially fair and self-sustaining.

Proof. The risk-sharing rule in Equation (3.3) is fair when mortality rates are deterministic because

\begin{align*}E_{t}[V_{i}(t+1)] &= s_{i}(t+1)p_{i}(t)+E_{t}[X_{i}(t+1)]\\ & \quad +\frac{Cov_{t}(X_{i}(t+1),S(t+1))}{Var_{t}(S(t+1))}(E_{t}[S(t+1)]-E_{t}[S(t+1)])\\ &= s_{i}(t+1)p_{i}(t)+s_{i}(t+1)q_{i}(t)\\ &=s_{i}(t+1),\end{align*}

where $p_{i}(t)=1-q_{i}(t)$ is the one-year survival probability of member $i$ between time $t$ and $t+1$ .

The risk-sharing rule in Equation (3.3) is fair when mortality rates are stochastic because

\begin{align*}E_{t}[V_{i}(t+1)] &= E_{t}\left[E_{t}\left[V_{i}(t+1)|\sigma(Q(t))\right]\right]\\ &= E_{t}\Bigr[s_{i}(t+1)p_{i}(t)+E_{t}[X_{i}(t+1)]\\ & \quad + \frac{Cov_{t}(X_{i}(t+1),S(t+1))}{Var_{t}(S(t+1))}(S(t+1)-E_{t}[S(t+1)])\Bigr]\\ &= s_{i}(t+1)E[p_{i}(t)]+s_{i}(t+1)E[q_{i}(t)]\\ &=s_{i}(t+1).\end{align*}

This risk-sharing rule in Equation (3.3) is self-sustaining regardless of whether mortality rates are deterministic or stochastic because

\begin{align*} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}E_{t}[X_{j}(t+1)]\\&+(S(t+1)-E_{t}[S(t+1)])\sum_{j=1}^{N(t)}\frac{Cov_{t}(X_{j}(t+1),S(t+1))}{Var_{t}(S(t+1))}\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+E_{t}[S(t+1)]+(S(t+1)-E_{t}[S(t+1)])\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j \in D(t+1)}s_{j}(t+1)\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1).\end{align*}

Proposition 4. When mortality rates are deterministic and assuming independence of future lifetimes of pool members, the regression risk-sharing rule in Equation (3.3) is

(3.4) \begin{align}V_{i}(t+1)=\begin{cases}\begin{aligned} &s_{i}(t+1)+s_{i}(t+1)q_{i}(t)\\ &+w_{i}^{\text{RD}}(t+1)(S(t+1)-\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t))\end{aligned} & \begin{aligned} &\mathrm{if individual}\ {i} \\ &\mathrm{survives\ this\ period,} \end{aligned} \\[24pt] \begin{aligned} &s_{i}(t+1)q_{i}(t)\\ &+w_{i}^{\text{RD}}(t+1)(S(t+1)-\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)) \end{aligned} & \begin{aligned} &\mathrm{if\ individual}\ i\ \mathrm{dies} \\ &\mathrm{during\ this\ period,} \end{aligned}\end{cases}\end{align}

where $w_{i}^{\text{RD}}(t+1)=\frac{s_{i}(t+1)^{2} q_{i}(t)(1-q_{i}(t))}{\sum_{j=1}^{N(t)}s_{j}(t+1)^{2} q_{j}(t)(1-q_{j}(t))}$ stands for the weighting for individual i at time $t+1$ with the regression deterministic (RD) risk-sharing rule.

Proof. Using $S(t+1)=\sum_{j=1}^{N(t)} X_{j}(t+1)$ , we have

(3.5) \begin{align}\begin{aligned} Cov_{t}(X_{i}(t+1),S(t+1)) &= Var_{t}(X_{i}(t+1))\\ &= s_{i}(t+1)^{2} q_{i}(t)(1-q_{i}(t)),\end{aligned} \end{align}

and

(3.6) \begin{align}\begin{aligned} Var_{t}(S(t+1)) &= \sum_{j=1}^{N(t)}Var_{t}(X_{j}(t+1))\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1)^{2} q_{j}(t)(1-q_{j}(t)).\end{aligned} \end{align}

Substituting Equations (3.5) and (3.6) into Equation (3.3) completes the proof.

The regression risk-sharing rule with deterministic mortality rates in Equation (3.4) is referred to as the deterministic regression rule in this paper. Since the mortality rate $q_{i}(t)$ in $w_{i}^{\text{RD}}(t+1)$ of Equation (3.4) is deterministic, the source of randomness comes from the uncertainty of survival for given deterministic mortality rates.

Proposition 5. Assuming stochastic mortality rates and independence of future lifetimes of pool members, the fair regression risk-sharing rule in Equation (3.3) becomes

(3.7) \begin{align}\begin{aligned}V_{i}(t+1)=\begin{cases}\begin{aligned} &s_{i}(t+1)+s_{i}(t+1)E[q_{i}(t)]\\ &+w_{i}^{\text{RS}}(t+1)(S(t+1)-\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{j}(t)])\end{aligned} & \begin{aligned} &\mathrm{if\ individual}\ {i} \\ &\mathrm{survives\ this\ period,} \end{aligned} \\[24pt] \begin{aligned} &s_{i}(t+1)E[q_{i}(t)]\\ &+w_{i}^{\text{RS}}(t+1)(S(t+1)-\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{j}(t)]) \end{aligned}& \begin{aligned} &\mathrm{if\ individual}\ i\ \mathrm{dies} \\ &\mathrm{during\ this\ period,} \end{aligned}\end{cases}\end{aligned}\end{align}

where $w_{i}^{\text{RS}}(t+1)=\frac{s_{i}(t+1)^{2}E\left[q_{i}(t)(1-q_{i}(t))\right]+s_{i}(t+1)\sum_{j=1}^{N(t)}s_{j}(t+1)Cov(q_{i}(t),q_{j}(t))}{\sum_{j=1}^{N(t)}s_{j}(t+1)^{2}E[q_{j}(t)(1-q_{j}(t))]+\sum_{j=1}^{N(t)}\sum_{k=1}^{N(t)}s_{j}(t+1)s_{k}(t+1)Cov(q_{j}(t),q_{k}(t))}$ stands for the weighting for individual i at time $t+1$ with the regression stochastic (RS) risk-sharing rule, and $E[q_{i}(t)(1-q_{i}(t))]=E[q_{i}(t)]-E[q_{i}(t)^{2}]=E[q_{i}(t)]-Var[q_{i}(t)]-E[q_{i}(t)]^{2}.$

Proof. Using the law of conditional expectation, we have

\begin{align*} E_{t}\left[X_{i}(t+1)\right] &= E_{t}\left[E_{t}[X_{i}(t+1)|\sigma(Q(t))]\right]\\ &= E_{t}\left[E_{t}[s_{i}(t+1)1_{i \in D(t+1)}|\sigma(Q(t))]\right]\\ &= E_{t}\left[s_{i}(t+1)q_{i}(t)\right]\\ &= s_{i}(t+1)E\left[q_{i}(t)\right],\end{align*}

and

\begin{align*} E_{t}\left[S(t+1)\right] &= E_{t}\left[E_{t}[S(t+1)|\sigma(Q(t))]\right]\\ &= E_{t}\left[E_{t}[\sum_{j=1}^{N(t)}s_{j}(t+1)1_{j \in D(t+1)}|\sigma(Q(t))]\right]\\ &= E_{t}\left[\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)\right]\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1)E\left[q_{j}(t)\right].\end{align*}

By the law of total covariance, we have

(3.8) \begin{align}\begin{aligned} &Cov_{t}(X_{i}(t+1),S(t+1))\\ & \quad = E_{t}[Cov_{t}(X_{i}(t+1),S(t+1)|\sigma(Q(t)))] +Cov_{t}(E_{t}[X_{i}(t+1)|\sigma(Q(t))],E_{t}[S(t+1)|\sigma(Q(t))])\\ & \quad = E_{t}\left[Cov_{t}\left(s_{i}(t+1)1_{i \in D(t+1)},\sum_{j=1}^{N(t)}s_{j}(t+1)1_{j \in D(t+1)}|\sigma(Q(t))\right)\right]\\ & \quad \quad + Cov_{t}\left(E_{t}\left[s_{i}(t+1)1_{i \in D(t+1)}|\sigma(Q(t))\right],E_{t}\left[\sum_{j=1}^{N(t)}s_{j}(t+1)1_{j \in D(t+1)}|\sigma(Q(t))\right]\right)\\ & \quad = E_{t}\left[Var_{t}(s_{i}(t+1)1_{i \in D(t+1)}|\sigma(Q(t)))\right]+Cov_{t}\left(s_{i}(t+1)q_{i}(t),\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)\right)\\ & \quad = s_{i}(t+1)^{2}E\left[q_{i}(t)(1-q_{i}(t))\right]+s_{i}(t+1)\sum_{j=1}^{N(t)}s_{j}(t+1)Cov(q_{i}(t),q_{j}(t)).\end{aligned}\end{align}

Similarly, we have

(3.9) \begin{align}\begin{aligned} &Var_{t}(S(t+1))\\ &\quad = E_{t}[Var_{t}(S(t+1)|\sigma(Q(t)))]+Var_{t}(E_{t}[S(t+1)|\sigma(Q(t))])\\ &\quad = E_{t}\left[\sum_{j=1}^{N(t)}s_{j}(t+1)^{2}q_{j}(t)(1-q_{j}(t))\right]+Var_{t}\left(\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)\right)\\ &\quad = \sum_{j=1}^{N(t)}s_{j}(t+1)^{2}E[q_{j}(t)(1-q_{j}(t))]+\sum_{j=1}^{N(t)}\sum_{k=1}^{N(t)}s_{j}(t+1)s_{k}(t+1)Cov(q_{j}(t),q_{k}(t)).\end{aligned}\end{align}

Substituting Equations (3.8) and (3.9) into Equation (3.3) completes the proof.

The regression risk-sharing rule with stochastic mortality rates in Equation (3.7) is referred to as the stochastic regression rule in this paper.

3.3 Alive-only rule

The alive-only rule is a risk-sharing rule proposed in Fullmer and Sabin (Reference Fullmer and Sabin2018) that only distributes the total mortality credits to members alive at the end of each period.

Definition 5 (Alive-only rule). Consider a risk-sharing rule that only the members alive at the end of the period share the total mortality credits as the following:

(3.10) \begin{align}V_{i}(t+1)=\begin{cases}s_{i}(t+1)+\frac{s_{i}(t+1)r_{i}(t)}{\sum_{j\in A(t+1)}s_{j}(t+1)r_{j}(t)} S(t+1) & \mathrm{if\ individual}\ i\ \mathrm{survives\ this\ period,} \\0 & \mathrm{if\ individual}\ i\ \mathrm{dies\ during\ this\ period,}\end{cases}\end{align}

where $r_{i}(t)=\frac{q_{i}(t)}{1-q_{i}(t)}$ , and the major difference is that the dead individual loses everything. The risk-sharing rule in Equation (3.10) is called the alive-only rule.

The weight $\frac{s_{i}(t+1)r_{i}(t)}{\sum_{j\in A(t+1)}s_{j}(t+1)r_{j}(t)}$ is not predetermined, but it depends on the realised survivorship at the end of the period. As the name implies, only members alive receive part of the total mortality credits to compensate, while members who die lose everything.

Proposition 6. The alive-only risk-sharing rule in Equation (3.10) is self-sustaining and almost fair, but not exactly fair.

Proof. The expected value of $V_{i}(t+1)$ is

\begin{align*}\mathrm{E}_{t}\left[V_{i}(t+1)\right] &= E_{t}[E_{t}[V_{i}(t+1)|\mathcal{F}_{i}(t+1)]]\\ &= P(i\in A(t+1))E_{t}[V_{i}(t+1)|i\in A(t+1)]+P(i\notin A(t+1))E_{t}[V_{i}(t+1)|i\notin A(t+1)]\\ &= \left(1-q_{i}(t)\right)\left[s_{i}(t+1)+E_{t}\left[\frac{s_{i}(t+1)r_{i}(t)}{\sum_{j\in A(t+1)}s_{j}(t+1)r_{j}(t)} S(t+1)|i\in A(t+1)\right]\right],\end{align*}

where $\mathcal{F}_{i}(t+1)$ is the filtration representing the survival status of individual $i$ up to time $t+1$ . Fullmer and Sabin (Reference Fullmer and Sabin2018) mention that this is not strictly fair. This is because of the approximation of $E_{t}\left[\frac{s_{i}(t+1)r_{i}(t)}{\sum_{j\in A(t+1)}s_{j}(t+1)r_{j}(t)} S(t+1)|i\in A(t+1)\right]\approx s_{i}(t+1)r_{i}(t)$ , which gives

\begin{align*} \mathrm{E}_{t}\left[V_{i}(t+1)\right] & \approx \left(1-q_{i}(t)\right)s_{i}(t+1)+(1-q_{i}(t))s_{i}(t+1)r_{i}(t)\\ & \approx \left(1-q_{i}(t)\right)s_{i}(t+1)+(1-q_{i}(t))s_{i}(t+1)\frac{q_{i}(t)}{1-q_{i}(t)}\\ & \approx s_{i}(t+1).\end{align*}

This is an approximation because

\begin{align*} E_{t}\left[\frac{S(t+1)}{\sum_{j\in A(t+1)}s_{j}(t+1)r_{j}(t)}|i\in A(t+1)\right] & = E_{t}\left[\frac{\sum_{j=1}^{N(t)}1_{j \in D(t+1)}s_{j}(t+1)}{\sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)\frac{q_{j}(t)}{1-q_{j}(t)}}|i\in A(t+1)\right]\\ & \neq 1\end{align*}

since we cannot move the expectation into the summation in the denominator.

Due to the approximation, the alive-only rule in Equation (3.10) is an almost fair risk-sharing rule. The term almost fair is used since the bias is found to be negligible in Sabin and Forman (Reference Sabin and Forman2016), Fullmer and Sabin (Reference Fullmer and Sabin2018) when the mean amount forfeited by dying members is large compared to the nominal gain of any one member, which is satisfied in the setting of this paper.

Meanwhile, the alive-only rule in Equation (3.10) is still self-sustaining because

\begin{align*} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j \in A(t+1)}\frac{s_{j}(t+1)r_{j}(t)}{\sum_{k\in A(t+1)}s_{k}(t+1)r_{k}(t)} S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j \in D(t+1)}s_{j}(t+1)\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1).\end{align*}

Proposition 7. The risk-sharing rule below in Equation (3.11) is a self-sustaining and almost fair alive-only rule under stochastic mortality rates:

(3.11) \begin{align}V_{i}(t+1)=\begin{cases}s_{i}(t+1)+w_{i}^{\text{Alive}}(t+1) S(t+1) & \mathrm{if\ individual}\ i\ \mathrm{survives\ this\ period,} \\0 & \mathrm{if\ individual}\ i\ \mathrm{dies\ during\ this\ period,}\end{cases}\end{align}

where $w_{i}^{\text{Alive}}(t+1)=\frac{s_{i}(t+1)\frac{E[q_{i}(t)]}{1-E[q_{i}(t)]}}{\sum_{j\in A(t+1)}s_{j}(t+1)\frac{E[q_{j}(t)]}{1-E[q_{j}(t)]}}$ stands for the weighting for individual i at time $t+1$ with the alive-only rule under stochastic mortality rates.

Proof. By the law of total expectation, we have

\begin{align*} E_{t}[V_{i}(t+1)] &= E_{t}\left[E_{t}\left[E_{t}\left[V_{i}(t+1)|\sigma(Q(t))\right]|\mathcal{F}_{i}(t+1)\right]\right]\\ &= E_{t}\left[(1-q_{i}(t))\Big(s_{i}(t+1)+\frac{s_{i}(t+1)\frac{E[q_{i}(t)]}{1-E[q_{i}(t)]}}{\sum_{j\in A(t+1)}s_{j}(t+1)\frac{E[q_{j}(t)]}{1-E[q_{j}(t)]}} S(t+1)\Big)|i \in A(t+1)\right]\\ &= s_{i}(t+1)(1-E[q_{i}(t)])+s_{i}(t+1)E[q_{i}(t)]E_{t}\left[\frac{S(t+1)}{\sum_{j\in A(t+1)}s_{j}(t+1)\frac{E[q_{j}(t)]}{1-E[q_{j}(t)]}}|i \in A(t+1) \right].\end{align*}

When we make the approximation $E_{t}\left[\frac{S(t+1)}{\sum_{j\in A(t+1)}s_{j}(t+1)\frac{E[q_{j}(t)]}{1-E[q_{j}(t)]}}|i \in A(t+1) \right]\approx1$ , it gives us

\begin{align*} E_{t}[V_{i}(t+1)]\approx s_{i}(t+1),\end{align*}

which means the risk-sharing rule in Equation (3.11) is almost fair. The risk-sharing rule in Equation (3.11) is self-sustaining because

(3.12) \begin{align}\begin{aligned} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+\sum_{j\in A(t+1)}\frac{s_{j}(t+1)\frac{E[q_{j}(t)]}{1-E[q_{j}(t)]}}{\sum_{k\in A(t+1)}s_{k}(t+1)\frac{E[q_{k}(t)]}{1-E[q_{k}(t)]}} S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j\in D(t+1)}s_{j}(t+1)\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1).\end{aligned}\end{align}

3.4 A new risk-sharing rule: Joint expectation rule

In this subsection, a new fair and self-sustaining risk-sharing rule is proposed. The weight in the total mortality credits of an individual is higher when the fund balance, the mean of the mortality rate, the standard deviation of the mortality rate, and the correlation between the mortality rates of other fund members are higher. The risk-sharing rule is named the JE rule, and it will reduce to the proportional rule when the mortality rates are no longer stochastic and correlated random variables but deterministic values. In comparison with the regression rule, the weighting of the mortality credits under the JE rule increases monotonically with the mean mortality rate, and the slope of the rate of return from mortality credits is not affected by the fund balance.

Proposition 8. The following risk-sharing rule is a fair and self-sustaining rule incorporating correlations between stochastic mortality rates:

(3.13) \begin{align}V_{i}(t+1)=\begin{cases}\begin{aligned} &s_{i}(t+1) + s_{i}(t+1)E[q_{i}(t)]\\[3pt] &+ w_{i}^{\text{JE}}(t+1) (S(t+1)-E_{t}[S(t+1)])\end{aligned}& \begin{aligned} &\mathrm{if\ individual}\ {i} \\ &\mathrm{survives\ this\ period,} \end{aligned}\\[24pt]\begin{aligned} &s_{i}(t+1)E[q_{i}(t)] \\[3pt] &+ w_{i}^{\text{JE}}(t+1) (S(t+1)-E_{t}[S(t+1)])\end{aligned}& \begin{aligned} &\mathrm{if\ individual}\ i\ \mathrm{dies} \\ &\mathrm{during\ this\ period,} \end{aligned}\end{cases}\end{align}

where $w_{i}^{\text{JE}}(t+1)=\frac{s_{i}(t+1)\sum_{k=1}^{N(t)}s_{k}(t+1)E[q_{i}(t)q_{k}(t)]}{\sum_{j=1}^{N(t)}\sum_{k=1}^{N(t)}s_{j}(t+1)s_{k}(t+1)E[q_{j}(t)q_{k}(t)]}$ .

Proof. The risk-sharing rule in Equation (3.13) is fair because

\begin{align*} E_{t}[V_{i}(t+1)] &= E_{t}[E_{t}[V_{i}(t+1)|\sigma(Q(t))]]\\ &= s_{i}(t+1)(1-E[q_{i}(t)])+s_{i}(t+1)E[q_{i}(t)]+w_{i}(t+1)(E_{t}[S(t+1)]-E_{t}[S(t+1)])\\ &= s_{i}(t+1).\end{align*}

The risk-sharing rule in Equation (3.13) is self-sustaining because

\begin{align*} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}s_{j}(t+1)E[q_{j}(t)]+S(t+1)-E_{t}[S(t+1)]\\ &= \sum_{j=1}^{N(t)}1_{j \in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j \in D(t+1)}s_{j}(t+1)\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1).\end{align*}

We name the risk-sharing rule in Equation (3.13) as the JE rule because the term $E[q_{i}(t)q_{k}(t)]$ in the numerator is the joint expectation of the one-year mortality rates $q_{i}(t)$ and $q_{k}(t)$ of individual $i$ and individual $k$ at time $t$ .

The joint expectation $E[q_{i}(t)q_{k}(t)]$ in the weight captures not only the expected values of mortality rates but also the volatility of mortality rates and the correlation between mortality rates of different individuals because:

(3.14) \begin{align}\begin{aligned} E[q_{i}(t)q_{k}(t)] & =Cov(q_{i}(t), q_{k}(t))+E[q_{i}(t)]E[q_{k}(t)]\\ & =\rho(q_{i}(t),q_{k}(t)) sd(q_{i}(t)) sd(q_{k}(t))+ E[q_{i}(t)]E[q_{k}(t)],\end{aligned}\end{align}

where $Cov(q_{i}(t),q_{k}(t))$ is the covariance between the one-year mortality rates $q_{i}(t)$ and $q_{k}(t)$ of individuals $i$ and $k$ at time $t$ , $\rho(q_{i}(t),q_{k}(t))$ is the correlation between $q_{i}(t)$ and $q_{k}(t)$ , and $sd(q_{i}(t))$ is the standard deviation of $q_{i}(t)$ .

Lemma 2. When the mortality rates are deterministic, then the risk-sharing rule proposed in Equation (3.13) reduces to the fair proportional rule in Equation (3.1):

\begin{align*}V_{i}(t+1)=\begin{cases}s_{i}(t+1)+\frac{s_{i}(t+1)q_{i}(t)}{\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)} S(t+1) & \mathrm{if\ individual}\ i\ \mathrm{survives\ this\ period,} \\[12pt]\frac{s_{i}(t+1)q_{i}(t)}{\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)} S(t+1) & \mathrm{if\ individual}\ i\ \mathrm{dies\ during\ this\ period.}\end{cases}\end{align*}

Proof. When $E[(q_{j}(t))^{2}]=E[q_{j}(t)]^{2}$ and $E[q_{j}(t)q_{k}(t)]=E[q_{j}(t)]E[q_{k}(t)]$ , the weighting becomes:

\begin{align*} w_{i}^{\text{JE}}(t+1) &= \frac{s_{i}(t+1)\sum_{k=1}^{N(t)}s_{k}(t+1)E[q_{i}(t)q_{k}(t)]}{\sum_{j=1}^{N(t)}\sum_{k=1}^{N(t)}s_{j}(t+1)s_{k}(t+1)E[q_{j}(t)q_{k}(t)]}\\[4pt] &= \frac{s_{i}(t+1)\sum_{k=1}^{N(t)}s_{k}(t+1)E[q_{i}(t)]E[q_{k}(t)]}{\sum_{j=1}^{N(t)}\sum_{k=1}^{N(t)}s_{j}(t+1)s_{k}(t+1)E[q_{j}(t)]E[q_{k}(t)]}\\[4pt] &= \frac{s_{i}(t+1)q_{i}(t)\sum_{k=1}^{N(t)}s_{k}(t+1)q_{k}(t)}{\left(\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)\right)\left(\sum_{k=1}^{N(t)}s_{k}(t+1)q_{k}(t)\right)}\\[4pt] &= \frac{s_{i}(t+1)q_{i}(t)}{\sum_{j=1}^{N(t)}s_{j}(t+1)q_{j}(t)}.\end{align*}

Moreover, the proposed JE rule in Equation (3.13) can be extended to include a death benefit so that when a member dies they do not lose all of the accumulated fund balance but get $d_{i}(t+1)$ as the death benefit in the case of death. The inclusion of a death benefit aims to address the loss aversion so that members do not lose all of their fund balances in the event of death. The expected loss thus becomes $s_{i}(t+1)-d_{i}(t+1)$ . The death benefit $d_{i}(t+1)$ can be set as a predetermined proportion of the accumulated fund balance $s_{i}(t+1)$ so that the expected loss is positive. In that sense, $d_{i}(t+1)$ is also $\mathcal{F}(t)$ -measurable.

Proposition 9. With death benefit protection included, the risk-sharing rule in Equation (3.13) can be extended to:

(3.15) \begin{align}V_{i}(t+1)=\begin{cases}\begin{aligned} &s_{i}(t+1) + (s_{i}(t+1)-d_{i}(t+1)) E[q_{i}(t)]\\[3pt] &+ w_{i}(t+1) (S(t+1)-E_{t}[S(t+1)])\end{aligned}& \begin{aligned} &\mathrm{if\ individual}\ {i} \\ &\mathrm{survives\ this\ period,} \end{aligned}\\[12pt] \begin{aligned} &d_{i}(t+1) + (s_{i}(t+1)-d_{i}(t+1)) E[q_{i}(t)]\\ &+w_{i}(t+1) (S(t+1)-E_{t}[S(t+1)]) \end{aligned}& \begin{aligned} &\mathrm{if\ individual}\ i\ \mathrm{dies} \\ &\mathrm{during\ this\ period,} \end{aligned}\end{cases}\end{align}

where $w_{i}^{\text{JE}}(t+1)=\frac{(s_{i}(t+1)-d_{i}(t+1))\sum_{k=1}^{N(t)}(s_{k}(t+1)-d_{k}(t+1))E[q_{i}(t)q_{k}(t)]}{\sum_{j=1}^{N(t)}\sum_{k=1}^{N(t)}(s_{j}(t+1)-d_{j}(t+1))(s_{k}(t+1)-d_{k}(t+1))E[q_{j}(t)q_{k}(t)]}$ , and $S(t+1)= \sum_{j=1}^{N(t)}1_{j\in D(t+1)}(s_{j}(t+1)-d_{j}(t+1))$ . In this case, the risk-sharing rule is still fair and self-sustaining.

Proof. The risk-sharing rule in Equation (3.15) is fair because

\begin{align*} E_{t}[V_{i}(t+1)]=E_{t}[E_{t}[V_{i}(t+1)|\sigma(Q(t))]] &= s_{i}(t+1)(1-E[q_{i}(t)])+d_{i}(t+1)E[q_{i}(t)]\\ & \quad +(s_{i}(t+1)-d_{i}(t+1))E[q_{i}(t)]\\ & \quad + w_{i}(t+1)(E_{t}[S(t+1)]-E_{t}[S(t+1)])\\ &= s_{i}(t+1).\end{align*}

The risk-sharing rule in Equation (3.15) is self-sustaining because

\begin{align*} \sum_{j=1}^{N(t)}V_{j}(t+1) &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j\in D(t+1)}d_{j}(t+1)+\sum_{j=1}^{N(t)}(s_{j}(t+1)-d_{j}(t+1))E[q_{j}(t)]\\&+S(t+1)-E_{t}[S(t+1)]\\ &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j\in D(t+1)}d_{j}(t+1)+S(t+1)\\ &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j\in D(t+1)}d_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j\in D(t+1)}(s_{j}(t+1)-d_{j}(t+1))\\ &= \sum_{j=1}^{N(t)}1_{j\in A(t+1)}s_{j}(t+1)+\sum_{j=1}^{N(t)}1_{j\in D(t+1)}s_{j}(t+1)\\ &= \sum_{j=1}^{N(t)}s_{j}(t+1).\end{align*}

3.5 Summary of risk-sharing rules

We summarise the properties of different risk-sharing rules in Tables 1 and 2. Table 1 compares the weightings in the total mortality credits $S(t+1)$ between different deterministic and stochastic risk-sharing rules. We can see that when extended to stochastic risk-sharing rules, only the JE rule and the stochastic regression rules take the correlation between mortality rates into consideration.

Table 1. Comparison of weighting in $S(t+1)$ of member $i$ between deterministic and stochastic versions of risk-sharing rules.

Table 2. Change in weighting $w_{i}(t+1)$ when the mean, variance of mortality rates, or correlation to mortality rates of other cohorts increase for different risk-sharing rules.

Table 2 further compares how the increment in one statistic (mean, variance, or correlation of mortality rates) affects the weighting in the total mortality credits between different risk-sharing rules, holding the other two statistics the same. We can see that the stochastic regression risk-sharing rule gives a higher weight when the variance and correlation of mortality rates are higher, while the effect of the mean is not monotonic. The proposed JE risk-sharing rule will distribute a higher proportion of total mortality when the mean, variance, or correlation of mortality rates is higher. The proof of the results in Table 2 can be found in the Supplementary Material. Intuitively, it is easy to understand that the weight in mortality credits should increase when the mean mortality rates increase, as a higher mean mortality rate indicates a higher expected loss. Moreover, a higher variance in the mortality rates should also indicate a higher proportion of mortality credits since it means more volatile expected loss, which is associated with more volatile total mortality credits. We note that for the stochastic regression and JE rules, the effect of a change in the variance of mortality rates holds under the assumption that the sum of the covariance-weighted accumulated fund values is positive. Furthermore, higher correlations with the other cohorts mean these cohorts are more likely to have their mortality rates move toward the same direction, leading to more volatile total mortality credits, which is also why these cohorts should take more proportion of the total mortality credits.

To further illustrate how incorporating the volatilities and correlations through the joint expectation would affect risk sharing, we present three scenarios in the Supplementary Material where the JE rule and the proportional rule produce different weights and values after risk sharing. The scenarios are designed around the heterogeneity of risk exposures and probabilities of incurring losses. Scenario 1 assumes that risk exposures are identical, and loss probabilities have the same mean and standard deviation. Scenario 2 assumes that risk exposures are different, and loss probabilities have the same mean and standard deviation. Scenario 3 assumes that risk exposures and the means and standard deviations of the loss probabilities are different. We can see that for a participant of a risk-sharing pool whose probability of loss is negatively correlated with the others, the weight using the JE rule is lower than using the proportional rule. The percentage difference in weight is $-5.26\%$ in Scenario 1, $-16.89\%$ in Scenario 2, and $-5.36\%$ in Scenario 3. Moreover, the percentage difference in the value after risk sharing with respect to the value before risk sharing can be up to $-2.98\%$ in Scenario 1, $-12.79\%$ in Scenario 2, and $-8.04\%$ in Scenario 3. Therefore, there is a need to incorporate the volatilities and correlations through the joint expectation in risk sharing.

4 Numerical analysis

This section outlines the methodology used in this research, including data and assumptions on mortality rates, the definition of the rate of return on mortality credits, and an overview of the analysis to be conducted.

Table 3. Assumptions on the pool and members.

4.1 Data and assumptions

We establish a risk-sharing pool that allows mixed-age cohorts with different initial balances and new members to join. The assumptions on the risk-sharing pool are the following:

  • A total of $586$ members in the initial pool at time zero as presented in Table 3.

  • Age range: $60$ $100$ . Age distribution refers to Australian population exposure in $2020$ (Human Mortality Database, 2022).

  • For each age, half of the members have a high balance and the other half have a low balance, where the high balance is $1.5$ times the low balance. The superannuation balance required for a comfortable retirement in Australia is around $\$600,000$ (ASFA, 2023), so we define high balance at age $60$ as $1.2\times600,000=720,000$ and low balance as $0.8\times600,000=480,000$ .

  • The balance decreases with age to reflect the consumption of retirement balance.

  • New members joining every year have the same size of $586$ members and the same age and balance distributions as in Table 3.

  • Rates of return and the risk-free rate: $3\%$ per annum.

The pool size of $586$ is chosen to demonstrate the pooling effect while maintaining computation efficiency, as we study $50$ times the pool size and perform $30$ years of analysis with new members of the same size joining each year.

The assumptions on mortality rates are

  • Australian male mortality rates.

  • Mortality rates follow a multivariate log-normal distribution since they are nonnegative. The Renshaw and Haberman model (Renshaw and Haberman, Reference Renshaw and Haberman2006) with a log link function and the cohort factor modelled by an ARIMA process (Villegas et al., Reference Villegas, Kaishev and Millossovich2018) implies log-normally distributed mortality rates.

  • The covariance matrix of the multivariate log-normal distribution is estimated by using an $11$ -year bracket with year $2020$ in the middle for each cohort at every point in time and calculating the covariance using these $11$ -element vectors.

Examples of the means, standard deviations, and correlation matrix of mortality rates for a selection of cohorts at ages $60, 70, 80, 90, 100$ in the calendar year $2020$ are displayed in Tables 4 and 5, which are based on Australian male mortality data. We can see that the means of mortality rates increase with age. The standard deviations of mortality rates also increase with age, except for age $100$ . From Table 5, we can see that the correlation is generally higher when the age difference is lower. Age $100$ is also an exception in this case because an improvement in the mortality at younger ages, for example, age $90$ often leads to a worsening mortality at age $100$ since people will die in the end.

Table 4. Mean and standard deviation of mortality rates at different ages in $2020$ .

Table 5. Correlation of mortality rates at different ages in $2020$ .

4.2 Overview of analysis

We compare risk-sharing rules by the rate of return from the distribution of mortality credits in the case of survival: $ROR_{i}^{mc}(t)=(V_{i}(t+1)-s_{i}(t+1))/F_{i}(t).$ We do not directly compare the weightings because they are heavily affected by the pool size and the fund value. The $ROR_{i}^{mc}(t)$ for different risk-sharing rules in the case of survival is shown below:

  • Proportional: $\frac{s_{i}(t+1)E[q_{i}(t)]+ w_{i}^{\text{Proportional}}(t+1) (S(t+1)-E_{t}[S(t+1)])}{F_{i}(t)}$

  • Joint Expectation: $\frac{s_{i}(t+1)E[q_{i}(t)] + w_{i}^{\text{JE}}(t+1)(S(t+1)-E_{t}[S(t+1)])}{F_{i}(t)}$

  • Regression Det: $\frac{s_{i}(t+1)q_{i}(t)+w_{i}^{\text{RD}}(t+1)(S(t+1)-E_{t}[S(t+1)])}{F_{i}(t)}$

  • Regression Sto: $\frac{s_{i}(t+1)E[q_{i}(t)]+w_{i}^{\text{RS}}(t+1)(S(t+1)-E_{t}[S(t+1)])}{F_{i}(t)}$

  • Alive: $\frac{w_{i}^{\text{Alive}}(t+1)S(t+1)}{F_{i}(t)}$

We omit the deterministic proportional and alive-only rules because we assume that the mortality rates $q_{i}(t)$ used in the deterministic case are equal to $E[q_{i}(t)]$ used in the stochastic case. We can see that the difference in risk-sharing rules is their weighting on the difference between the empirical and expected mortality credits $S(t+1)-E_{t}[S(t+1)]$ , except for the alive-only rule which is on $S(t+1)$ . This means different risk-sharing rules have different sensitivities when there is a deviation from the expected mortality credits. We measure this difference in the sensitivity by plotting $ROR^{mc}(t)$ versus the deviation in total mortality credits $S(t+1)-E_{t}[S(t+1)]$ for different (1) risk-sharing rules, (2) ages and thus mortality rates of members, (3) fund balances of members, and (4) pool sizes. The analyses in Sections 4.34.5 are between times $0$ and $1$ .

Then, we study the performance of the fund over time with new members joining in Section 4.6. We will assess benefit payments of different cohorts for the next $30$ years since the initial establishment of the pool assuming: (1) no systematic mortality risk and (2) $20\%$ reduction of mortality rates for the first $5$ years.

4.3 Comparison of rates of return from mortality credits against deviation in total mortality credits

We first compare the rates of return from mortality credits $ROR^{mc}(t)$ of different risk-sharing rules against the deviation in total mortality credits for time $t=0$ . As illustrated in Figure 1, $S(t+1)-E_{t}[S(t+1)]=0$ implies zero deviation in mortality credits and this is the point of the expected rate of return from mortality credits $E[ROR^{mc}(t)]$ , where all risk-sharing rules except for the alive-only rule pay the same.

Figure 1. Comparison of $ROR^{mc}(t)$ between risk-sharing rules.

Figure 1(a) shows the comparison of risk-sharing rules for the cohort aged $60$ with a high balance $720,000$ in year $1$ . The slope of the plot implies the sensitivity of $ROR^{mc}(t)$ to the deviation in total mortality credits $S(t+1)-E_{t}[S(t+1)]$ . A higher slope implies a higher sensitivity, and the value of the slope is shown in the figure as $k$ , calculated as the vertical change in $ROR^{mc}(t)$ between the two endpoints. This adjustment controls variations in the scale of $S(t+1)-E_{t}[S(t+1)]$ under different settings in this paper. We can see from Figure 1(a) that the deterministic regression rule and the stochastic regression rule give higher slopes at age $60$ than the other three risk-sharing rules, while the deterministic regression rule has a slightly higher slope than the stochastic regression rule. The differences between the regression rules and other risk-sharing rules are due to the different weightings in mortality credits, as illustrated in Table 1. The weighting of the regression rules has the quadratic of the accumulated fund balance in the numerator, which results in higher slopes than the other risk-sharing rules for cohorts with high fund balances in the pool. In addition to the quadratic accumulated fund balance, this can also be explained by the $E\left[q_{i}(t)(1-q_{i}(t))\right]$ and $q_{i}(t)(1-q_{i}(t))$ terms in the numerators of regression rules, whose relative rates to $E[q_{i}(t)]$ and $q_{i}(t)$ decrease as age increases and thus expected mortality rate increases. Meanwhile, the proportional rule, JE rule, and alive-only rule have minor differences at age 60.

Figure 1(b) shows the comparison at age $100$ with high balance $240,000$ . In contrast to age $60$ , the alive-only rule gives a higher slope than the other four risk-sharing rules with a significant difference. This is because the $\frac{E[q_{i}(t)]}{1-E[q_{i}(t)]}$ term for the alive-only rule in Table 1 is much higher than the expected mortality rates $E[q_{i}(t)]$ at older ages, since the $(1-E[q_{i}(t)])$ term is much smaller than $1$ at older ages with higher expected mortality rates. Meanwhile, the $\frac{E[q_{i}(t)]}{1-E[q_{i}(t)]}$ term at younger ages is close to $E[q_{i}(t)]$ because their expected mortality rates are relatively lower, which explains the minor difference between the alive-only rule with the JE rule and proportional rule at younger ages. The deterministic and stochastic regression rules now have lower slopes than the proportional and JE rules. The expected rate of return from mortality credits at age $100$ is much higher compared with age $60$ because of the much higher expected mortality rate at age $100$ .

Figure 2 compares $5$ cohorts aged $60, 70, 80, 90, 100$ years and with high or low balance. We can see that as age increases, the expected mortality rate $E[q_{i}(t)]$ increases, which leads to higher $E[ROR^{mc}(t)]$ at the point of $S(t+1)-E_{t}[S(t+1)]=0$ . Meanwhile, Table 7 displays the slopes of different risk-sharing rules for members with a high balance in the column ‘Original Size’. It can be seen from Figure 2 and Table 7 that, as age increases, the slopes of the regression rules increase, but not as fast as the proportional rule and JE rule, leading them to be relatively flatter at older ages. This is due to the quadratic accumulated fund balance and the $E\left[q_{i}(t)(1-q_{i}(t))\right]$ term in the regression rules explained earlier. The slope of the alive-only rule increases at the fastest rate with age, and it starts to dominate the other rules for old cohorts. We also find that the slopes of the regression rules are higher with high balance, keeping age the same.

Figure 2. Comparison of $ROR^{mc}(t)$ with different ages, balances, and rules.

4.4 Effect of balance

To further study the effect of balance on the slope, we divide the slope of high balance by the slope of low balance at every age for the period $[0,1]$ and present the results in Table 6. From Table 6, we find that the ratios for the proportional rule, JE rule, and alive-only rule are $1$ , indicating that balance does not affect the sensitivity to deviation in total mortality credits. However, we can see from Table 6 that the ratio for the deterministic regression rule is $1.5$ , which is exactly the ratio of high balance over low balance, indicating that the slope increases proportionally to balance for the deterministic regression rule. Moreover, for the stochastic regression rule, it is above $1$ but not equal to $1.5$ exactly, indicating that the slope still increases with balance, but the ratio is also affected by the mean, variance, and correlation of mortality rates of all fund members.

Table 6. Slope high balance over slope low balance at different ages.

Table 7. Slopes of $ROR^{mc}(t)$ for different risk-sharing rules and for high-balance individuals at ages $60$ , $80$ , and $100$ with different pool sizes.

4.5 Effect of pool size

Table 7 shows the slope values of different risk-sharing rules for different pool sizes and for ages $60$ , $80$ , and $100$ , respectively. The expected rate of return from mortality credits $E_{t}[ROR^{mc}(t)]$ at the point of $S(t+1)-E_{t}[S(t+1)]=0$ does not change with the pool size. We observe from Table 7 that the slopes of the proportional rule, JE rule, alive-only rule, and deterministic regression rule are relatively stable when we increase the pool size to $10$ times and $50$ times the original size. However, we find that the slope for the stochastic regression rule decreases for member age $60$ .

From Table 7, we can see that the slope of the stochastic regression rule increases with pool size at age $80$ . Meanwhile, a decrease in the slope with pool size is observed at age $100$ . When the pool size is $50$ times the original size, a significant difference in slope can be found between the deterministic and stochastic regression rules, as illustrated in Table 7 and Section 2 of the Supplementary Material. In particular, the slope for the cohort age $100$ using the stochastic regression rule reduces from $0.29115$ to $0.04998$ when the pool size is multiplied by $50$ , which is much lower than $0.30555$ using the deterministic regression rule. The decrease in slope at ages $60$ and $100$ can be explained by the low volatility in the mortality rates we assume, and being correlated to fewer members in the pool. Especially at age $100$ , the mortality rates are negatively correlated with the mortality rates of most members at other ages. Meanwhile, the slopes of the JE rule remain the same when the pool size increases. Note that the minor difference for varying pool sizes for the alive-only rule is due to the randomness in the simulation of member survivorship. The comparisons of all cohorts with $10$ and $50$ times the original pool size are displayed in the figures in the Supplementary Material.

To summarise, from the results in Sections 4.34.5, individuals can better determine which risk-sharing rule has the characteristics they favour. Since a higher slope indicates more volatility in the rate of return from mortality credits, individuals with higher risk aversion may favor the risk sharing rules with lower slopes, for example, the JE rule at younger ages, and the regression rules at older ages. Moreover, those who do not wish their rates of return from mortality credits to be more volatile with increased fund balances will avoid the regression rules. Meanwhile, those who do not wish their rates of return from mortality credits to change with the pool size will avoid the stochastic regression rule. Furthermore, if individuals believe a longevity shock will happen, they will favor the risk-sharing rule with a lower slope to mitigate the loss.

4.6 Benefit payments over time

The discussions so far are between time $0$ and time $1$ . We now allow new heterogeneous members as shown in Table 3 to enter the pool at the beginning of each year. The ages of existing members increase by one every year, and their balances after benefit payments become the initial balances at the beginning of the next year. Under the dynamic setting, we track the performance of the pool over the next $30$ years since the initial establishment. The means, standard deviations, and correlations of mortality rates at different ages in Tables 4 and 5 are updated over time to reflect the time evolution of mortality rates.

Figure 3 shows the simulated income payments for different cohorts over the next $30$ years. A sudden drop in income payments to zero represents the death of the member. We can see that for younger cohorts, the income payments of all risk-sharing rules stay at a relatively stable level until around age $90$ . The alive-only rule results in higher income payments at older ages, as illustrated in the previous subsections from their higher slope. The income for people who joined at older ages, for example, age $90$ is slightly decreasing because of the very small annuity factor at that age, leading to high-income payments relative to initial contributions and the balance to be consumed very quickly. However, the income keeps increasing for the alive-only rule because of the very high slope at old ages. At age $100$ , the income for risk-sharing rules except for the alive-only rule is decreasing fast, while it is still increasing for the alive-only rule.

Figure 3. Benefit payments over time in a dynamic pool allowing new members to join.

Figure 4 shows the simulated income payments when there is a systematic longevity shock of $20\%$ reduction in the mortality rates of all cohorts for the first $5$ years. We can see that for younger cohorts, their income payments are still relatively stable over their lifetime. However, for older cohorts, the payments for all risk-sharing rules experience a decrease compared with no longevity shock, mainly because the benefits from mortality credits decrease when mortality improves. We can also observe differences between different risk-sharing rules because as illustrated in previous sections, different risk-sharing rules allocate different weightings to the deviation in total mortality credits.

Figure 4. Benefit payments over time in a dynamic pool allowing new members to join, under a $5$ -year systematic longevity shock.

Since the benefit payments are determined by dividing the fund balances over the annuity factors, the differences in the balances between different risk-sharing rules are scaled down and mitigated when transferred into benefit payments. Therefore, to better illustrate the difference between risk-sharing rules, we further compare the fund balances in year $5$ when there is a longevity shock for the first $5$ years in Figure 5. The difference in the way of distributing this deviation leads to the difference in the fund balances, and a lower slope leads to a higher balance. We can see that there is a significant difference when we move from the proportional or JE risk-sharing rule to the deterministic or stochastic regression rule or to the alive-only rule. The two regression rules give lower fund balances at younger ages than the other three rules, but they give higher fund balances at older ages than the proportional rule and JE rule.

Figure 5. Balance at time $5$ , under a $5$ -year systematic longevity shock.

From Figure 5, we can see that the difference in balance is several thousand dollars for ages $60$ , $70$ , and $80$ and can exceed $10,000$ for ages $90$ and $100$ with the initial balances we set in Table 3. An obvious difference is also observed between deterministic and stochastic regression rules. The stochastic regression rule gives higher balances than the deterministic regression rule at age $60$ , $70$ with high balance, $90$ with high balance, and $100$ . In the other cases, they will give lower balances than the deterministic regression rule. This is because when a systematic longevity shock of $20\%$ reduction in mortality rates happens, empirical total mortality credits will tend to be lower than expected. The difference between the JE rule and the proportional rule is small because when we include the variance and correlation for all cohorts, the numerator of every fund member increases, leading to a smaller change in the weighting. Therefore, there is a dilution effect when we move from the proportional rule to the JE rule.

Finally, the difference between the alive-only rule to the other risk-sharing rules is also obvious. We can see from Figure 5 that the difference between the alive-only rule and the JE rule ranges from a few hundred dollars at age $60$ to a few thousand dollars at age $80$ , up until around $50,000$ dollars at age $100$ . We can see that a higher difference between risk-sharing rules normally happens at older ages despite the lower initial contribution at older ages. Therefore, this paper provides a more accurate calculation of risk sharing with different rules under stochastic and correlated mortality rates and can help issuers decide which risk-sharing rule to choose when they establish the product according to their needs. If the issuers do not prefer the distribution of mortality credits to be affected by individual account balances, then they should not choose stochastic or deterministic regression rules. Meanwhile, if the issuers prefer the account balance of younger retirees to be higher than older retirees when a systematic reduction in mortality rates happens, then the proportional, JE, and alive-only rules are preferred. Moreover, if issuers prefer to pay more to surviving members, then they would prefer the alive-only rule. While the difference between different risk-sharing rules exists, we need to emphasise that all risk-sharing rules are still actuarially fair, or almost fair for the alive-only rule.

5 Conclusions

In conclusion, this paper studies mortality pooling products that use risk-sharing rules to distribute mortality credits first and then decumulate and calculate the benefit payments with the pooled-annuity strategy. Existing studies on the risk sharing of mortality pooling products mostly use deterministic mortality rates in the distribution of mortality credits. However, mortality rates are stochastic and correlated random variables between cohorts. This paper extends the existing risk-sharing rules to the case of stochastic mortality rates and proposes a new risk-sharing rule named the JE rule, which is the general form of the proportional rule when mortality rates are stochastic. The JE rule with death benefit is also proposed and proven to be fair and self-sustaining.

Moreover, the risk-sharing pool in this paper contains heterogeneous members with different ages and balances. In addition, the pool is dynamic so new heterogeneous members are joining every year. The pool of mixed members is observed for $30$ years since the initial establishment. The effect of age, balance, pool size, and choice of the risk-sharing rule on the distribution of mortality credits, and thus on the income payments and remaining balances of different members are studied in this paper.

Our results show that age mainly affects the distribution of mortality credits by the higher mortality rates at older ages. We find that the weight in the total mortality credits increases with the mean mortality rates for most risk-sharing rules, except for the regression rules when the mean mortality rates are higher than $0.5$ . Therefore, in most cases, for people with the same fund balance, those at higher ages have a larger proportion of the total mortality credits due to the higher mean mortality rates. Meanwhile, with the annuity-like decumulation strategy, a larger proportion of their remaining balance is paid out every year due to the smaller annuity due factor at older ages. Therefore, this framework of risk sharing and decumulation can consistently provide stable income payments to the majority of members. Moreover, we find that the fund balance does not affect mortality risk sharing in the proportional rule, alive-only rule, and the proposed JE rule. However, for the deterministic and stochastic regression rules, a higher balance results in a higher share of the total mortality credits.

Furthermore, with the assumption that the ages of people joining the pool range from $60$ to $100$ , we study how the volatility and correlation of mortality rates and the pool size affect the distribution of total mortality credits. The results show that for the stochastic regression rule which takes into account the volatility and correlation of mortality rates, a larger pool size results in a smaller sensitivity to the deviation in total mortality credits for the younger (age $60$ ) cohorts who have less volatile mortality rates and the older (age $100$ ) cohorts who are less positively correlated with other cohorts. Meanwhile, for the middle-aged $80$ cohorts who have relatively volatile mortality rates and are highly correlated with other cohorts, a larger pool size results in a higher sensitivity to the deviation in total mortality credits using the stochastic regression rule.

Finally, the effect of a longevity shock is compared between different risk-sharing rules. Our results show that under a $5$ -year longevity shock, the younger cohorts with deterministic and stochastic regression rules have lower fund balances, compared with the proportional, JE, and alive-only rules. Meanwhile, the older cohorts have higher fund balances using the deterministic and stochastic regression rules, compared with proportional and JE rules, while the alive-only rule always results in the highest account balance at older ages.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/asb.2025.10064

Acknowledgments

The authors gratefully acknowledge financial support from the Australian Research Council (ARC) Centre of Excellence in Population Ageing Research (CEPAR) project number CE170100005, ARC Discovery Early Career Researcher Award (DECRA) project number DE200101266, and ARC Discovery Projects project number DP210101195.

Competing interests

There are no competing interests to declare.

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Figure 0

Table 1. Comparison of weighting in $S(t+1)$ of member $i$ between deterministic and stochastic versions of risk-sharing rules.

Figure 1

Table 2. Change in weighting $w_{i}(t+1)$ when the mean, variance of mortality rates, or correlation to mortality rates of other cohorts increase for different risk-sharing rules.

Figure 2

Table 3. Assumptions on the pool and members.

Figure 3

Table 4. Mean and standard deviation of mortality rates at different ages in $2020$.

Figure 4

Table 5. Correlation of mortality rates at different ages in $2020$.

Figure 5

Figure 1. Comparison of $ROR^{mc}(t)$ between risk-sharing rules.

Figure 6

Figure 2. Comparison of $ROR^{mc}(t)$ with different ages, balances, and rules.

Figure 7

Table 6. Slope high balance over slope low balance at different ages.

Figure 8

Table 7. Slopes of $ROR^{mc}(t)$ for different risk-sharing rules and for high-balance individuals at ages $60$, $80$, and $100$ with different pool sizes.

Figure 9

Figure 3. Benefit payments over time in a dynamic pool allowing new members to join.

Figure 10

Figure 4. Benefit payments over time in a dynamic pool allowing new members to join, under a $5$-year systematic longevity shock.

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Figure 5. Balance at time $5$, under a $5$-year systematic longevity shock.

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