When is the least squares method appropriate?
When random year to year fluctuations in loss experience are significant
Give 3 possible ways to manage the reserves if losses come higher than expected
Explain why it’s difficult to compute Q(x) and we use L(x) instead
The best linear approximation of Q(x) is better because:
Give the formulas used in Brosius
LS : a + xb where b = (xy bar - x bary bar)/(x squared bar - x bar squared) and a = y bar -x barb OR
LS : ZX/d +(1-Z)y bar and Z = b/c and c = y bar/x bar
CL : X/d (LS with a = 0)
BL : y bar (LS with b =0)
BF : x + q*U OR
BF : a + X (LS with b =1)
Is the Benktander method superior to BF and CL
Lower MSE (if p is included within 2c*)
Better approximation to the exact Bayesian procedure
Superior to CL b/c gives more weight to the a priori expectation of ultimate losses
Superior to BF b/c gives more weight to actual loss experience
Formula for benktander
U(GB) = X + q*U(BF) U(BF) = X + q*U(0)
Express Benktander as a credibility weighting system
U(GB) = pU(CL)+qU(BF)
What is the credible loss ratio claims reserve?
Credibility weight of CL and BF with %reported calculated differently.
R=z*R(ind)+R(coll)
Express the Z for Neuhauss, Benktander and Optimal credibility
Z(NW) = p*ELR Z(GB) = p ***we weight ultimate claim amounts here Z(OPT) = p/(p + p^1/2)
How to calculate R ind and R coll
R(ind) = C/p*q R(coll) = (EP*m)*q
How to get ELR (m) and respective p’s?
Calculate the loss ratio by column (sum of incremental claims/EP) and sum all loss ratios.
To get your p’s you need to look at sum of m’s over the ELR
What is the Z that minimizes MSE (R)?
z = (p/q)*(Cov(C,R) + pqVar(U - bc))/(Var(C)+p^2Var(U - bc))
What is the MSE formula
E(alpha2Ui)(Z^2/p+1/q+(1-Z)^2/t)q^2
Characteristics of Hurlimanns Method
Clarks assumption
Formula for residual
r = (ci - ui)/(ui*sigma^2)^1/2
Formula for sigma^2
1/(n-p)*sum of (ci-ui)^2/ui
where n: nb of points in triangle and p: number of parameters (LDF = 2+AYs CC=3)
How to test for assumptions using normalized residuals
Give two growth functions
Weibull 1- e^-(x/w)^teta
Loglogistic: x^w /(x^w + teta^w)
Ultimate loss estimate - clarks method
CC: EPELR
ELR = sum of losses/sum of used up p (EP(G(x))
LDF: Paid to date/G(x)
LDF - truncated: Paid to date/G’(x) where G’(x) = G(x)/G(TP)
Reserve estimate - clarks method
CC: EPELR(1-G(x))
CC - truncated: EPELR(G(TP)-G(x))
ELR = sum of losses/sum of used up p (EP(G(x))
LDF: Paid to date(1/G(x) - 1)
LDF - truncated: Paid to date(1/G’(x)-1) where G’(x) = G(x)/G(TP)
How to chose the best set of parameters for your data
Maximize the MLE: l = sum of ci*ln(ui)-ui over the triangle
Data advantages to use Clark’s growth function
Advantages of using parameterized curves to describe the loss emergence patterns