Pricing Insurance Risk. Stephen J. Mildenhall
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Название: Pricing Insurance Risk

Автор: Stephen J. Mildenhall

Издательство: John Wiley & Sons Limited

Жанр: Банковское дело

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isbn: 9781119756521

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СКАЧАТЬ another floor of the same building, the actuaries responsible for commerical auto physical damage have a similar file, except losses refer to the commercial auto portfolio. But the same nine digit catastrophe identifier is used. This means that the Enterprise Risk Management folks (in yet another building) can take those two spreadsheets and merge them together to see results across the entire commercial property book of business. Without this linkage, the dependence of results across the two lines of business would be a mystery.

      The strength of explicit event representation is that it enables outcomes to be linked across a book of business, thus dependence risk can be modeled without making assumptions. It is useful when events are not too numerous and affect significant portions of the portfolio. When events are very numerous and affect only small portions of the portfolio, explicit event representation does not provide enough benefit to justify its greater complexity.

      To summarize: the explicit representation uses a random variable X(ω) defined on a sample space Ω of interpretable sample points, such as typhoon landfall and windspeed, or earthquake epicenter and magnitude. It is the most detailed representation and allows for easy aggregation, critical in reinsurance and risk management. It can distinguish between different events even if they cause the same loss outcome. It suffers from being arbitrary, especially regarding the detail communicated by the sample points, and the complexity of defining events, especially for high volume lines where it is unrealistic to tie an event to each individual policyholder.

      The implicit representation identifies an outcome with its value, creating an implicit event.

      The implicit representation relabels the sample space by identifying the event {X=x} with the sample point x, creating a new random variable on the sample space of outcome values. It is easy to understand but hard to aggregate because there is no way to link outcomes. There is no easy way to specify dependence, which explains the interest in copulas, mathematical objects used to specify the dependence structure between two or more random variables. It is impossible to distinguish between implicit events that cause the same loss outcome.

      The implicit representation defines a probability on the new outcome sample space by PX(A):=Pr(X∈A) for A⊂R. PX is uniquely determined by the distribution function F(x):=Pr(X≤x).

      When risk is solely a function of loss outcome, rather than the cause of loss, it can be appropriate to work with implicit events.

      Example 9 Ins Co. actuaries working with the homeowners line of business use the same catastrophe model as the commercial lines folks, but their spreadsheet has only the following columns:

       Hurricane/earthquake flag

       Homeowners portfolio loss

      This information allows them to compute the probability distributions of losses, in total and also conditional on type of peril. However, it is insufficient to tie back to the commercial lines experience. The primary identifying feature for an event is the loss amount.

      Example 10 Ins Co. wants to purchase California earthquake reinsurance. The reinsurer needs explicit (event ID, event loss) model output, so it can aggregate its exposure. But Ins Co. can evaluate its reinsurance programs using implicit events (loss amount, probability).

      3.4.3 Dual Implicit Representation

      The implicit representation is a useful simplification. But there are situations where we can simplify it further. If we don’t care about the monetary outcome but care only about the rank of the outcomes, we can use the dual implicit representation and identify an outcome X = x with its nonexceedance probability p=F(x)=Pr(X≤x). Equivalently, we can relate x with s=S(x)=Pr(X>x), its exceedance probability. We work with the former and call it a dual implicit event.

      Identifying an outcome with its probability is scale invariant and straightforward. It is easy to make comparisons: no matter the range of X, F(X) lies between 0 and 1. In fact, for continuous X, F(X) is uniformly distributed between 0 and 1—the basis of the inversion method for simulating random variables.

      Example 11 Investors and rating agencies assess bonds by their estimated probability of default. They are using a dual implicit representation of the bond.

      Example 12 Although catastrophe models generally simulate explicit events, the results are often summarized by exceedance probability. Rating agency and regulatory capital models charge for catastrophe risk using events defined by exceedance probability, rather than objective event.

      Example 13 The homeowners reinsurance actuaries in Ins Co. get a spreadsheet similar to the commercial lines simulation output, with losses arranged in ascending order. Their concern is identifying where various proposed reinsurance programs attach and exhaust (Section 3.5.3). They flag various rows with notations such as program 1 attaches, program 2 exhausts, etc. Since the rows are in ascending loss order, they can count rows above or below a particular notation and calculate the probability of attachment and exhaustion. They prepare a report that focuses on these probabilities without mentioning the actual dollar loss amounts.

      Remark 14 The mapping from p back to x is defined by the inverse of the distribution function. Spreadsheet programs provide several, including: BETA.INV, CHISQ.INV, F.INV, GAMMA.INV, LOGNORM.INV, NORM.INV, and T.INV.

      3.4.4 Dictionary between the Three Representations

СКАЧАТЬ
Facet Random variable Distribution function Quantile function
Notation X F F −1
Events Explicit Implicit Dual implicit
Sample space