Force of mortality

In actuarial science and demography, force of mortality, also known as death intensity,[1][2] is a function, usually written , that gives the instantaneous rate at which deaths occur at age x, conditional on survival to age x.[3] In survival analysis it corresponds to the hazard function, and in reliability theory it corresponds to the failure rate.[4][5] It has units of inverse time, and integrating it over an interval gives the survival probability over that interval.[4]

Definition

Let be a non-negative random variable representing an individual's age at death (or lifetime). Write for its cumulative distribution function and for its survival function.[4]

The force of mortality at age , written , is defined as the instantaneous conditional rate of death at age . Formally, it is the limit of the conditional probability of dying in a short interval after , divided by the interval length[3]:

When is continuous with probability density function , the force of mortality can be written in terms of and as[4]

Equivalently, where is differentiable, it is the negative derivative of the log-survival function[4]:

The force of mortality is an instantaneous rate rather than a probability. For a short interval , the conditional probability of dying shortly after age is approximately , provided is small enough that the rate does not change much over the interval.[3]

In survival analysis, is the hazard function.[4] In reliability theory, the same mathematical object is commonly called the failure rate.[5]

The cumulative force of mortality (also called the cumulative hazard) is the integral of the force over age. Writing then the survival function can be expressed as[4]

These identities imply the differential relationship and, for a continuous lifetime distribution, the density can be written as[4]

Survival probabilities and life tables

In actuarial notation, the probability that a life aged survives for a further years is written . In terms of the lifetime random variable , it is[3]

Using the force of mortality, this conditional survival probability can be expressed as an exponential of the integrated force[3][4]:

Life tables often tabulate survival and death probabilities at integer ages. In that setting, the one-year survival probability is and the one-year death probability is .[3] The force of mortality provides a continuous-age description that can be used to relate probabilities over different intervals through the integral relationship above.[3]

Examples of mortality models

Several parametric models are used to describe how the force of mortality varies with age. A constant force of mortality, for , corresponds to an exponential distribution for and gives a memoryless survival pattern.[4]

In actuarial work, the Gompertz–Makeham law of mortality is often written as the sum of an age-independent component and an exponentially increasing component, for example with , , and .[3] The Gompertz model is the special case , giving:[3]

A common model in survival analysis and reliability uses a Weibull hazard, which has the form for shape and scale . This family includes decreasing, constant, and increasing forces of mortality depending on the value of .[4][5]

See also

References

  1. ^ Andersen, Per Kragh; Borgan, Ørnulf; Hjort, Nils Lid; Arjas, Elja; Stene, Jon; Aalen, Odd (1985). "Counting Process Models for Life History Data: A Review [with Discussion and Reply]". Scandinavian Journal of Statistics. 12 (2): 97–158. ISSN 0303-6898.
  2. ^ Ioannidis, John P. A. (2013). "Expressing Death Risk as Condensed Life Experience and Death Intensity". Medical Decision Making. 33 (6): 853–859. doi:10.1177/0272989X13484389. ISSN 0272-989X.
  3. ^ a b c d e f g h i Dickson, David C. M.; Hardy, Mary R.; Waters, Howard R. (2013). Actuarial Mathematics for Life Contingent Risks (2nd ed.). Cambridge University Press. ISBN 9781107044074.
  4. ^ a b c d e f g h i j k Klein, John P.; Moeschberger, Melvin L. (2003). Survival Analysis: Techniques for Censored and Truncated Data (2nd ed.). Springer. ISBN 9780387953991.
  5. ^ a b c Rausand, Marvin; Høyland, Arnljot (2004). System Reliability Theory: Models, Statistical Methods, and Applications (2nd ed.). Wiley-Interscience. ISBN 9780471471332.