Survival models in a dynamic context: a survey (2004 Elsevier B.V.) 老師:戴天時 學生:謝昌宏.

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Presentation transcript:

Survival models in a dynamic context: a survey (2004 Elsevier B.V.) 老師:戴天時 學生:謝昌宏

1. Introduction This paper first aims at describing some aspects of the development of survival modeling in actuarial mathematics, focussing on various approaches to mortality assumptions in a moving scenario. Secondly, special emphasis is placed on a “new” type of risk affecting the management of life insurance and annuities, i.e. the longevity risk, which originates from the uncertainty in future mortality trends. 2

2. Modeling dynamic mortality: basic ideas and early contributions 2.1. Some preliminary ideas the annual probabilities of death q x, or the force of mortality µ x From the qx’s, a survival table is then derived as follows: ω is the assumed maximum age (105 or 110,say) and, for example, l 0 = 100,000, or l 0 = 1 3

2. Modeling dynamic mortality: basic ideas and early contributions Using the force of mortality, the survival function is given, for x > 0, by In many countries, statistical evidence show that human mortality declined over the 20th century, and in particular over its last decades. So, an hypothesis of “static” mortality, as implicitly involved by (2.1) and (2.2), cannot be assumed in principle. 4

2. Modeling dynamic mortality: basic ideas and early contributions

2. Modeling dynamic mortality: basic ideas and early contributions (a) a “vertical” arrangement (i.e. by columns), 6 Age Year

2. Modeling dynamic mortality: basic ideas and early contributions (b) a “diagonal” arrangement, (c) a “horizontal” arrangement (i.e. by rows), 7 Age Year

2. Modeling dynamic mortality: basic ideas and early contributions 2.5. Early seminal contributions to mortality forecast As Cramér and Wold (1935) notes, in 1924 the Institute of Actuaries in London proposed a “horizontal” method for mortality projection, assuming for the annual probability of death the following expression: 8

2. Modeling dynamic mortality: basic ideas and early contributions For instance, let us set a x = 0,, c x =r x, where y’ denotes the current (or “reference”) year and r x represents the annual rate of mortality improvement (if r x < 1) at age x, the so-called “reduction factor”; then we obtain 9

2. Modeling dynamic mortality: basic ideas and early contributions Moreover, with we find where represents (if r x < 1) the asymptotic mortality at age x. For more details; see also Section

3. Modern contributions and research in progress 3.1. Mortality forecast: contributions from demography Let us suppose that the existence of an “optimal” life table is assumed. The relevant age pattern of mortality must be meant as the limit to which mortality improvements can lead. 11

3. Modern contributions and research in progress Let denote the limit probability of death at age x, whereas q x (y’) denotes the current mortality. Assume then that the projected mortality q x (y) is expressed as follows: where the symbol F denotes some interpolation formula. 12

3. Modern contributions and research in progress In particular, an exponential interpolation canbe adopted, leading, for example, to: with r x < 1. 13

3. Modern contributions and research in progress A new way to mortality forecasts was paved by the “relational method” proposed by Brass. In order to express relationships among mortality of various populations, Brass (1974) focussed on the logit transform of the survival function, namely 14

3. Modern contributions and research in progress Petrioli and Berti proposed transform is the “resistance function” (see Petrioli and Berti, 1979; Keyfitz, 1982), defined as follows: where ω denotes the maximum age. Thus, the transform is the ratio of the average annual probability of death beyond age x to the average annual probability of death prior to age x. 15

3. Modern contributions and research in progress 3.2. Some remarks Early projection methods disregard the stochastic nature of (observed) mortality and provide the forecaster only with point estimates of future mortality. It is possible to build stochastic models recognizing the observed mortality rates as estimates, and allowing for an interval estimation of future mortality rates. 16

3. Modern contributions and research in progress Uncertainty in future mortality rates is first attributable to random fluctuations around the relevant point estimates, namely to “process risk”. Because the relevant parameters or the structure of the model itself do not reflect the actual mortality trend. Hence, a “parameter risk” and a “model risk” should be allowed for when projecting mortality. 17

3. Modern contributions and research in progress 3.3. Parametric models In particular, Brouhns et al. (2002a) stress that. the estimated parameters are often strongly dependent Hence, univariate extrapolation of the parameters may be misleading, whereas a multivariate time series for the parameters is theoretically possible but can lead to computational intractability. 18

3. Modern contributions and research in progress 3.5. Mortality forecast via reduction factors For example, in the UK actuarial practice projected probabilities of death are expressed as follows: The following reduction factor has been recently adopted (see CMIR17, 1999): 19

3. Modern contributions and research in progress 20 60

3. Modern contributions and research in progress Reduction factors are constructed without a specific modeling structure. The calculation of the reduction factors is based on a 20-year time span, with the origin y’ located one-and- a-half year into the base quadriennium 1991–

3. Modern contributions and research in progress 3.6. Mortality at very old ages A first problem obviously concerns the observed old-age mortality rates, heavily affected by random fluctuations because of their scarcity. As classical mortality laws may fail in representing the very old-age mortality. 22

3. Modern contributions and research in progress 3.7. Further issues In particular, it should be stressed that complex interrelationships exist among causes of death, whilst the assumption of independence is commonly accepted. When projecting mortality, collateral information available to the forecaster can be allowed for. 23

4. The longevity risk 4.1. Modeling the uncertainty in mortality trends let Γ(x, y) denote a projected mortality model, born in year τ = y − x. Denote by K(τ) a given assumption about the mortality trend for people born in year τ, and by K(τ) the set of such hypotheses. 24

4. The longevity risk let us consider the residual lifetime T x. According to a given choice θ j of the parameter, the (conditional) moments of T x may be evaluated. In an age-continuous context, we have, where fx(t|θj) is the (conditional) pdf of the residual lifetime Tx. 25

4. The longevity risk The unconditional moments are then as follows: 26

4. The longevity risk In particular, the following well-known result can be obtained for the variance developing expression (4.7): where ˜θ denotes the random value of the parameter. 27

4. The longevity risk 4.3. The longevity risk: actuarial evidence We focus on solvency requirements for life annuities portfolios (and funded pension plans). Solvency is investigated referring to immediate annuities. 28

4. The longevity risk From (4.10) the survival table lx can be obtained. Seven survival tables l, j =1, 2,..., 7, have been defined, to describe different mortality scenarios. 29

4. The longevity risk a “deterministic” approach, implemented by using a given projected survival table; this approach only allows for the random fluctuation risk; a “stochastic” approach, implemented by using a set of projected survival tables; this approach allows for both the random fluctuation risk and the longevity risk. 30

4. The longevity risk A deterministic approach to mortality risks In order to obtain results easier to interpret, we disregard profit; the actual life duration of the annuitants is thus simulated with the survival table. ε =

4. The longevity risk 32 (65)

4. The longevity risk A stochastic approach to mortality risks we consider the survival tables, j = 1, 2,..., 7, assuming that each of them is meant as a possible probability distribution of the future lifetime. A weight g j, j = 1, 2,..., 7, is assigned to each survival table, representing the relevant 33

4. The longevity risk 34

4. The longevity risk 35

36

Research Direction Add continuous mortality rate to our model. – (static => dynamic) – Continuous vs. Dispersed Progress – Mortality data – Review the paper about GMWB with mortality 37

Progress Data Source: HMD (Human Mortality Database from University of Berkeley) 38

Thanks End 39