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18
Identifying, Measuring and
Communicating Uncertainty
In the previous chapters, we learned how to produce a stochastic model for our aggregate
losses, which encapsulates our prediction for the losses in the next policy period. On the
basis of this model, underwriters and clients may (if they trust us) take decisions on how
much premium to charge (underwriters), whether to buy a policy and how much risk to
retain (clients) and so on.
It is only fair to communicate how accurate our predictions are. A statement such as, ‘the
expected losses to this policy for the year 2012 are £1.62M’ is neither right nor wrong if you
are not also able, to some extent, to assess the error on your estimate: because saying that the
expected losses are £1.62 ± £0.01M is very different from saying that they are £1.62 ± £1M!
Things get more confusing because we are not speaking of deterministic quantities such
as your weight, but of the mean of a stochastic variable that uctuates widely, so it may
take several years to realise that an estimate may be materially wrong.
We have several types of uncertainty that we need to address in actuarial practice:
Process uncertainty
Parameter uncertainty
Model uncertainty
Assumption/data uncertainty
Approximation errors in calculations
We are now going to look at each type of uncertainty in turn. After a few words of
explanation, we will explain how to calculate the effect of that type of uncertainty on pric-
ing and we will briey comment on how that type of uncertainty can be communicated
to a non-technical audience: a section on communicating uncertainty has been included
because it is one of the things that the actuary is explicitly required to do in formal reports
and because it is also something that is quite challenging.
In dening the various types of uncertainty, it is useful to keep the following simple
examples in mind:
Example 1: Consider the yearly number of claims related to a risk. Assume that the
number of claims follows a Poisson distribution and that the Poisson rate is esti-
mated based on the number of claims observed over a past period.
Example 2: Consider the distribution of loss severities for a given risk. Assume that
the loss amounts follow a lognormal distribution and that the parameters of the
lognormal distribution are calculated based on a number of claims observed over
a past period. Also, consider that the nal loss amount of some of the claims is not
known yet – only a reserve estimate is available.

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