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Posts feedEvents, dear boy, events!
When asked what was most likely to blow a government off-course, Harold Macmillan allegedly replied "Events, dear boy, events!". Macmillan may not have actually uttered these words (Knowles, 2006, pages 33-34), but there's no denying that unexpected events can derail your plans. I was recently faced with some unexpected events, albeit in a rather different context.
The actuarial data onion
Actuaries tasked with analysing a portfolio's mortality experience face a gap between what has happened in the outside world and the data they actually work with. The various difference levels are depicted in Figure 1.
Figure 1. The actuarial data onion.
Right-Censoring Rules!
A fundamental assumption underlying most modern presentations of mortality modelling (see our new book) is that the future lifetime of a person now age \(x\) can be represented as a non-negative random variable \(T_x\). The actuary's standard functions can then be defined in terms of the distribution of \(T_x\), for example:
\[{}_tp_x = \Pr[ T_x > t ].\]