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Allowing for shocks in portfolio mortality models

Published online by Cambridge University Press:  12 January 2022

Stephen J. Richards*
Affiliation:
Longevitas Ltd, Edinburgh, EH3 6AJ, UK
*
E-mail: stephen@longevitas.co.uk, www.longevitas.co.uk.
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Abstract

The COVID-19 pandemic creates a challenge for actuaries analysing experience data that include mortality shocks. Without sufficient local flexibility in the time dimension, any analysis based on the most recent data will be biased by the temporarily higher mortality. Also, depending on where the shocks sit in the exposure period, any attempt to identify mortality trends will be distorted. We present a methodology for analysing portfolio mortality data that offer local flexibility in the time dimension. The approach permits the identification of seasonal variation, mortality shocks and occurred-but-not reported deaths (OBNR). The methodology also allows actuaries to measure portfolio-specific mortality improvements. Finally, the method assists actuaries in determining a representative mortality level for long-term applications like reserving and pricing, even in the presence of mortality shocks. Results are given for a mature annuity portfolio in the UK, which suggest that the Bayesian information criterion is better for actuarial model selection in this application than Akaike’s information criterion.

Information

Type
Sessional Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© Institute and Faculty of Actuaries 2022
Figure 0

Figure 1. Numbers of deaths in England & Wales ($ \bullet $, left scale) with 1918 and 2020 counts circled. The population size is also shown in grey (right scale). Source: ONS.

Figure 1

Figure 2. Weekly deaths in Scotland in 1918–1919 as percentage of 1913–1917 average. Source: Craufurd Dunlop and Watt (1915, 1916a, 1916b, 1918, 1919, 1920a, 1920b).

Figure 2

Figure 3. Daily deaths in UK where the death certificate mentions COVID-19 as one of the causes. Note that the first lockdown legally commenced in England on 26 March 2020. Source: ONS (2021).

Figure 3

Figure 4. Four Hermite basis splines for $u \in [0,1]$. Note that various potentially useful equalities exist, such as ${h_{00}}(u) + {h_{01}}(u) = 1$ and ${h_{10}}(u) + {h_{11}}(1 - u) = 0$.

Figure 4

Figure 5. (a) Crude mortality hazard ($ \circ $) for UK3 data set with fitted curve from equation (2). (b) Deviance residuals ($ \bullet $) from the model fit with dashed lines showing the 95% confidence limits for N(0,1) variates. Data cover ages 55–105 years across the period 2015–2020.

Figure 5

Figure 6. Deviance residuals by size band for the model specified by equation (4), that is, after accounting for variation by age and gender. Each of the 50 size bands contains around 2% of the lives in the UK3 portfolio. The dashed lines show the 95% confidence limits for N(0,1) variates.

Figure 6

Figure 7. Histograms of annuity amounts. (a) The untransformed amounts, ${a_i}$, displaying extreme kurtosis (there are four individuals with pensions in excess of £ 800,000 p.a.). (b) The amounts transformed by ${a_i}{e^{ - 8.58082}}/(1 + {a_i}{e^{ - 8.58082}})$, showing a marked reduction in kurtosis. The value of ${\hat \lambda _0} = - 8.58082$ comes from the model in Table 1, where it was estimated with reference to the mortality characteristics of the UK3 portfolio.

Figure 7

Figure 8. (a) Lives, (b) deaths and (c) proportion of annuity amounts by transformed annuity amount.

Figure 8

Table 1. Parameter Estimates for UK3 Portfolio, Together with Numbers of Contributing Lives and Deaths. The Model is Specified in equation (6). Ages Covered are 55–105 years, using Data from 1 January 2015 to 31 December 2020. AIC = 187,693 and BIC = 187,751

Figure 9

Figure 9. Deviance residuals, $\{ {r_m}:m = 1, \ldots ,20\} $, by transformed annuity amount for two models. (a) For a model including age and gender only with $\sum\nolimits_m r_m^2 = 67.8$. (b) For a model with age, gender and annuity level with $\sum\nolimits_m r_m^2 = 45.0$. The deviance residuals are calculated for 20 intervals each of length 0.05, which have very different numbers of lives and deaths, as shown in Figure 8. Note that the grouping here was performed purely for the purpose of residual calculation, and that the underlying mortality model by annuity amount is fully continuous. The dashed lines show the 95% confidence limits for N(0,1) variates.

Figure 10

Table 2. Information Criteria (ICs) from Stepwise Inclusion of Age, Gender and Annuity Amount as Risk Factors

Figure 11

Figure 10. Mortality level in time for a mature US annuity portfolio using a semi-parametric estimator. The vertical dotted line indicates 1 April 2020. Source: Richards (2021b, Figure 3(c)).

Figure 12

Figure 11. Schoenberg (1964) splines with 1-year spacing between knot points (marked $ \bullet $). (a) $bdeg = 0$, (b) $bdeg = 1$, (c) $bdeg = 2$ and (d) $bdeg = 3$. In this specimen example, each spline is 0 before the knot at 2015 and 0 above the knot $(bdeg + 1)$ knots to the right. The area under each spline is 1.

Figure 13

Figure 12. A basis of nine equally-spaced cubic $B$-splines spanning 1 January 2015 to 31 December 2020, indexed $j = 0,1, \ldots ,8$. Splines in solid black lie completely within the period, while splines in dashed grey are edge splines that only partly lie in the period being spanned. Knot points are marked $ \bullet $. Note that at any time-point $y \in [2015,2021]$, there are always four non-zero splines that sum to 1. This is not true outside $[2015,2021]$, meaning the method cannot extrapolate outside the calibration interval.

Figure 14

Table 3. Estimates of ${\kappa _{0,j}}$ for $j = 1,2, \ldots ,8$ for UK3 Portfolio, Using Data for the Age Range 55–105 years from 1 January 2015 to 31 December 2020. ${\kappa _{0,0}} = 0$ by Construction because it is Absorbed into the Baseline Hazard

Figure 15

Figure 13. ${\hat \kappa _{0,j}}{B_j}(y)$ using the nine basis splines in Figure 12 and the estimates in Table 3. Knot points are marked $ \bullet $.

Figure 16

Figure 14. Schoenberg time spline function spanning 1 January 2015 to the end of 2020 using the basis splines in Figure 12 and the ${\hat \kappa _{0,j}}$ in Table 3. Panel (a) shows the unadjusted spline function, while panel (b) shows the function normalised at 0 at 2019.75, the last mid-point between a summer trough and winter peak before the COVID-19 pandemic. Note that summation in panel (b) is from $j = 0$ because the coefficient of ${B_0}$ is no longer 0.

Figure 17

Figure 15. Addition to log(hazard) using equally spaced knots, normalised at 0 for 1 October 2019. (a) Two2 knots per year, (b) four knots per year and (c) ten knots per year.

Figure 18

Table 4. Information Criteria (ICs) for Various Knot Densities with Equal Spacing. UK3 Portfolio for 1 January 2015 to the End of 2020. ICs and Parameter Counts can be Compared with Table 2 as the Underlying Data are Identical. The Optimal AIC and BIC Values are Marked in Bold

Figure 19

Figure 16. Part of a basis of nineteen variably spaced cubic B-splines spanning 1 January 2015 to the end of 2020, indexed $j = 0,1, \ldots ,18$ (only splines $j = 10, \ldots ,18$ are shown). Splines in solid black lie completely within the period, while splines in dashed grey are edge splines that only partly lie in the period being spanned. Knot points are marked $ \bullet $.

Figure 20

Figure 17. Mortality level modelled using the spline basis depicted in Figure 16. Panel (a) shows the addition to log(mortality), while panel (b) shows the multiplier of the mortality hazard.

Figure 21

Table 5. Annualised Improvement Rates ($PSMI$) between Summer Troughs in Figure 17

Figure 22

Figure 18. Hazard multiplier using the spline basis depicted in Figure 16 and extended with more knots to cover Q1 2021. The identifiability constraint is that at 1 October 2019 (2019.75 decimalised) the multiplier is normalised at 1.

Figure 23

Figure 19. (a) AIC, (b) BIC and (c) number of spline parameters for UK3 mortality rates using model in equation (11) and various equidistant knot spacings. Ages covered are 55–105 years from 1 January 2015 to 31 December 2020.

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Figure 20. Crude mortality hazard at each age, $x$, and fitted curve using equation (11) and a 4-year knot spacing, showing over-fitting. Source: own calculations using UK3 data.

Figure 25

Figure 21. Graduated mortality rates for Australian males, showing accident hump around the age of 20 years. Source: Heligman & Pollard (1980, Figure 12).

Figure 26

Figure 22. Percentages of S2PA implied by mortality levels over 2019–2020. Liabilities for UK3 at 1 January 2021 equated as per equation (13) using a net discount rate of 0% p.a. (${v^t} = 1,\forall t$).

Figure 27

Table B.1. Configuration Parameters

Figure 28

Table B.2. Overview of Parameters