Title: Riskiness Leverage Models
1Riskiness Leverage Models
Rodney Kreps Stand In (Stewart Gleason)CAS
Limited Attendance Seminar on Risk and
ReturnSeptember 26, 2005
2Riskiness Leverage Models
- Paper by Rodney Kreps accepted for the 2005
Proceedings - One criticism of capital allocation in the past
has been that most implementations are actually
superadditive - If Ck is the capital need for line of business k
and C is the total capital need, then - The formulation presented by Kreps provides a
natural way to allocate capital to components of
the business in a completely additive fashion
3Riskiness Leverage Models
- Capital can be allocated to any level of detail
- Line of business
- State
- Contract
- Contract clauses
- Understanding profitability of a business unit is
the primary goal of allocation, not necessarily
for creating pricing risk loads - Riskiness only needs to be defined on the total,
and can be done so intuitively - Many functional forms of risk aversion are
possible - All the usual forms can be expressed, allowing
comparisons on a common basis - Simple to do in simulation situation
4Riskiness Leverage Models
- Start with N random variables Xk (think of unpaid
losses by line of business at the end of a policy
year) and their total X - Denote by m the mean of X, C the capital to
support X and R then the risk load - With analogy to the balance sheet, m is the
carried reserve, R is surplus and C is the total
assets - Denote by mk the mean of Xk, Ck the capital to
support Xk and Rk the risk load for the line of
business is
5Riskiness Leverage Models
- Riskiness be expressed as the mean value of a
linear function of the total times an arbitrary
function depending only on the total - where dF(x) f(x1,...,xN) dx1...dxN and
f(x1,...,xN) is the joint density function of all
of the variables - Key to the formulation is that the leverage
function L depends only on the sum of the
individual random variables - For example, if L(x) b(x m), then
6Riskiness Leverage Models
- Riskiness of each line of business is defined
analogously and results in the additive
allocation - It follows directly that
- regardless of the joint dependence of the Xk
- For example, if L(x) b(x m), then
7Riskiness Leverage Models
- Covariance and higher powers have
- Riskiness models for a general function L(x) are
referred to as co-measures, in analogy with the
simple examples of covariance, co-skewness, and
so on. - What remains is to find appropriate forms for the
riskiness leverage L(x) - A number of familiar concepts can be recreated by
choosing the appropriate leverage function
8TVaR
- TVaR or Tail Value at Risk is defined for the
random variable X as the expected value given
that it is greater than some value b - To reproduce TVaR, choose
- q is a management chosen percentage, e.g. 99
- xq is the corresponding percentile of the
distribution of X - ?(y) is the step function, i.e., ?(y) 0 if y
0 and - ?(y) 1 if y gt0
- In our situation, ?(x-xq) is the indicator
function of the half space where x1?xN gt xq
9TVaR
- Here we compute the total capital instead
10TVaR
- The capital allocation is then
- Ck is the average contribution that Xk makes to
the total loss X when the total is at least xq - In simulation, you need to keep track of the
total and the component losses by line - Throw out the trials where the total loss is too
small - For the remaining trials, average the losses
within each line
11VaR
- VaR or Value at Risk is simply a given quantile
xq of the distribution - The math is much harder to recover VaR than for
TVar! - To reproduce VaR, choose
- d(y-y0) is the Dirac delta function (which is not
a function at all!) - d(y-y0) is really defined by how it acts on
other functions - It picks out the value of the function at y0
- May be familiar with it when referred to as a
point mass in probability readings - b is a constant to be determined as we progress
12The Dirac Delta Function
- The Dirac delta function is actually an operator,
that is a function whose argument is actually
other functions - If g is such a function and Db is the Dirac delta
operator with a mass at y b, - Formally, we write
- As a Riemann integral, this statement has no
meaning - Manipulating d(?) as if it was a function often
leads to the right result - When g is a function of several variables and b
is a point in N space, the same thing still
applies
13The Dirac Delta Function
- The following was suggested for the leverage
function - We know what d(x-xq) means if both x and xq are
points in RN, but xq is a scalar! - In this case, d(x-xq) is actually not a point
mass but a hyperplane mass living on the plane
x1?xN xq - One more thing in the paper, the constant b is
given as f(xq) - f(x) is a function of several variables and xq is
a scalar! - We will walk through the calculation in two
variables to see how to interpret these
quantities
14Back To VaR
- We compute the total capital again with x
(x1,x2)
15Back To VaR
- Now we see what f(xq) actually means the
right choice for b is - We also recognize that
- is just the conditional probability density above
the line - t xq - s
16Back To VaR
- With this choice of b we get
- The comeasure is
- For C2, we integrate with respect to x1 first
(and vice versa)
17VaR In Simulations
- When running simulations, calculating the
contributions becomes problematic - Ideally, we would select all of the trials for
which X is exactly xq and then average the
component losses to get the co VaR - In practice, we are likely to have exactly one
trial in which X xq - The solution is to take all of the trials for
which X is in a small range around xq, e.g. xq
1
18Expected Policyholder Deficit
- Expected Policyholder Deficit (EPD) has
- This is very similar to TVaR but without the
normalizing constant - It becomes expected loss given that loss exceeds
b times the probability of exceeding b - The riskiness functional becomes (R, not C)
19Mean Downside Deviation
- Mean downside deviation has
- This is actually a special case of TVaR with xq
m - It assigns capital to outcomes that are worse
than the mean in proportion to how much greater
than the mean they are - Until this point we have been thinking in terms
of calibrating our leverage function so that
total capital equals actual capital and
performing an allocation - What is the right total capital?
- Interesting argument in the paper suggests b ? 2
for this (very simplistic) leverage function
20Semi Variance
- Semi Variance has
- Similar to the variance leverage function but
only includes outcomes that are greater than the
mean - Similar to mean downside deviation but increases
quadratically instead of linearly with the
severity of the outcome
21Considerations in Selecting a Leverage Function
- Should be a down side measure (the accountants
point of view) - Should be more or less constant for excess that
is small compared to capital (risk of not making
plan, but also not a disaster) - Should become much larger for excess
significantly impacting capital and - Should go to zero (or at least not increase) for
excess significantly exceeding capital - once you are buried it doesnt matter how much
dirt is on top
22Considerations in Selecting a Leverage Function
- Regulators criteria for instance might be
- Riskiness leverage is zero until capital is
seriously impacted - Leverage should not decrease for large outcomes
due to risk to the guaranty fund - TVaR could be used as the regulators choice with
the quantile chosen as an appropriate multiple of
surplus
23Considerations in Selecting a Leverage Function
- A possibility for a leverage function that
satisfies management criteria is - This function
- Recognizes downside risk only
- Is close to constant when x is close to m, i.e.,
when x m is small - Takes on more linear characteristics as the loss
deviates from the mean - Fails to flatten out or diminish for extreme
outcomes much greater than capital - Testing shows that allocations are almost
independent of a
24Implementation Example
- ABC Mini-DFA.xls is a spreadsheet representation
of a company with two lines of business - X1 Net Underwriting Income for Line of Business
A - X2 Net Underwriting Income for Line of Business
B - X3 Investment Income on beginning Surplus
- Lines of Business A and B are simulated in
aggregate and are correlated - B is much more volatile than A
- The first goal is to test the adequacy of capital
in total
25Implementation Example
- We want our surplus to be a prudent multiple of
the average net loss for those losses that are
worse than the 98th percentile. - Prudent multiple in this case is 1.5
- Even in the worst 2 of outcomes, you would
expect to retain 1/3 of your surplus - Prudent multiple might mean having enough surplus
remaining to service renewal book - Summary of results from simulation
- 98th percentile of net income is a loss of 4.7
million - TVaR at the 98th percentile is 6.2 million
- Beginning surplus is 9.0 million almost (but
not quite) the prudent multiple required
26Implementation Example
- Allocation Line B is a capital hog
- Line A 13.6
- Line B 84.3
- Investment Risk 2.1
- Returns on allocated capital
- Line A 40.9
- Line B 5.3
- Investments 190.6
- Overall 14.0
- Misleading perhaps Line B needs so much capital,
other returns are inflated
27Implementation Example
- Could shift mix of business away from Line B but
also could buy reinsurance on Line B - X4 Net Ceded Premium and Recoveries for a Stop
Loss contract on Line of Business B - Summary of results from simulation with
reinsurance - 98th percentile of net income is a loss of 2.9
million - TVaR at the 98th percentile is reduced to 3.6
million - Capital could be released and still satisfy the
prudent multiple rule - Allocation
- Line A 36.3
- Line B 73.9
- Investment Risk 14.2
- Reinsurance -24.4
28Implementation Example
- Reinsurance is a supplier of capital
- In the worst 2 of outcomes, Line B contributes
significant loss - In those scenarios, there is a net benefit from
reinsurance - The values of X4 averaged to compute the co
measure have the opposite sign of the values for
Line B (X2) - Returns on allocated capital including
reinsurance - Line A 15.3
- Line B 6.0 (5.1 if Line B and Reinsurance are
combined) - Investments 28.3
- Reinsurance 7.9
- Overall 12.1
- Overall return reduced because of the expected
cost of reinsurance - Releasing 1.2 million in capital would restore
overall return to 14 and still leave surplus at
more than 2 times TVaR