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Arthur CHARPENTIER, Actuarial science with R
Actuarial Science withlife and nonlife insurance (a quick overview)
Arthur Charpentier
joint work with Christophe Dutang & Vincent Goulet
http ://freakonometrics.blog.free.fr
Meielisalp 2012 Conference, June
6th R/Rmetrics Meielisalp Workshop & Summer Schoolon Computational Finance and Financial Engineering
1
Arthur CHARPENTIER, Actuarial science with R
Actuarial models for life insurance ?Let (x) denote a life aged x, with x ≥ 0.at time t.
The future lifetime of (x) is a continuous random variable Tx.
E.g. term insurance, benefit of $1 payable at the end of the year of death, ifdeath occurs within a fixed term n,
Ax:n =n−1∑k=0
νk+1P(bTxc = k) =n−1∑k=0
νk+1 · k|qx
E.g. annuity of $1 per year, payable annually in advance, at timesk = 0, 1, · · · , n− 1 provided that (x) survived to age x+ k,
ax:n =n−1∑k=0
νk+1P(bTxc ≥ k) =n−1∑k=0
νk · kpx
2
Arthur CHARPENTIER, Actuarial science with R
Actuarial models for life insurance ?Let (x) denote a life aged x, with x ≥ 0, at time t.
The future lifetime of (x) is a continuous random variable Tx.
E.g. term insurance, benefit of $1 payable at the end of the year of death, ifdeath occurs within a fixed term n,
A(t)x:n =
n−1∑k=0
νk+1Pt(bTxc = k) =n−1∑k=0
νk+1 · k|q(t)x
E.g. annuity of $1 per year, payable annually in advance, at timesk = 0, 1, · · · , n− 1 provided that (x) survived to age x+ k,
a(t)x:n =
n−1∑k=0
νk+1Pt(bTxc ≥ k) =n−1∑k=0
νk · kp(t)x
3
Arthur CHARPENTIER, Actuarial science with R
Another possible motivation ?
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram, age and timeFrom Lexis (1880), idea of visualizing lifetime, age x, time t and year of birth y
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insuranceLexis diagrams have been designed to visualize dynamics of life among severalindividuals, but can be used also to follow claims’life dynamics, from theoccurrence until closure,
in life insurance in nonlife insurance
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insurance and databut usually we do not work on continuous time individual observations(individuals or claims) : we summarized information per year occurrence untilclosure,
in life insurance in nonlife insurance
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insurance and dataindividual lives or claims can also be followed looking at diagonals, occurrenceuntil closure,occurrence until closure,occurrence until closure,occurrence untilclosure,
in life insurance in nonlife insurance
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insuranceand usually, in nonlife insurance, instead of looking at (calendar) time, we followobservations per year of birth, or year of occurrence occurrence untilclosure,occurrence until closure,occurrence until closure,occurrence until closure,
in life insurance in nonlife insurance
9
Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insuranceand finally, recall that in standard models in nonlife insurance, we look at thetransposed triangle occurrence until closure,occurrence until closure,occurrenceuntil closure,occurrence until closure,
in life insurance in nonlife insurance
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insurancenote that whatever the way we look at triangles, there are still three dimensions,year of occurrence or birth, age or development and calendar time,calendar timecalendar time
in life insurance in nonlife insurance
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram in insuranceand in both cases, we want to answer a prediction question...calendar timecalendar time calendar time calendar time calendar time calendar time calendartime calendar timer time calendar time
in life insurance in nonlife insurance
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Arthur CHARPENTIER, Actuarial science with R
Part I
LIFE INSURANCE
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram, age and timeIdea : Life tables Lx should depend on time, Lx,t.
Let Dx,t denote the number of deaths of people aged x, during year t, data frameDEATH and let Ex,t denote the exposure, of age x, during year t, data frameEXPOSURE, from http://www.mortality.org/
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Arthur CHARPENTIER, Actuarial science with R
Lexis diagram, age and timeRemark : be carefull of age 110+
> DEATH$Age=as.numeric(as.character(DEATH$Age))> DEATH$Age[is.na(DEATH$Age)]=110> EXPOSURE$Age=as.numeric(as.character(EXPOSURE$Age))> EXPOSURE$Age[is.na(EXPOSURE$Age)]=110
Consider force of mortality function
µx,t = Dx,t
Ex,t
> MU=DEATH[,3:5]/EXPOSURE[,3:5]> MUT=matrix(MU[,3],length(AGE),length(ANNEE))> persp(AGE[1:100],ANNEE,log(MUT[1:100,]),+ theta=-30,col="light green",shade=TRUE)
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Arthur CHARPENTIER, Actuarial science with R
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Arthur CHARPENTIER, Actuarial science with R
Tables, per year t and Survival lifetimesLet us study deaths occurred in year=1900 or 2000, x 7→ logµx,t when t = 1900 or2000.
> D=DEATH[DEATH$Year==year,]; E=EXPOSURE[EXPOSURE$Year==year,]> MU = D[,3:5]/E[,3:5]> plot(0:110,log(MU[,1]),type="l",col="red"); lines(0:110,log(MU[,2]),col="blue")
Evolution of x 7→ Lx,t = exp(−∫ x
0µh,tdh
)when t = 1900 or 2000,
> PH=PF=matrix(NA,111,111)> for(x in 0:110){+ PH[x+1,1:(111-x)]=exp(-cumsum(MU[(x+1):111,2]))+ PF[x+1,1:(111-x)]=exp(-cumsum(MU[(x+1):111,1]))}> x=0; plot(1:111,PH[x+1,],ylim=c(0,1),type="l",col="blue")> lines(1:111,PF[x+1,],col="red")
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Arthur CHARPENTIER, Actuarial science with R
Tables, per year t and Survival lifetimes
0 20 40 60 80 100
−10
−8
−6
−4
−2
0Mortality rate 1900
Age
Dea
th r
ate
(log)
FemaleMale
0 20 40 60 80 100
−10
−8
−6
−4
−2
0
Mortality rate 2000
Age
Dea
th r
ate
(log)
FemaleMale
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Arthur CHARPENTIER, Actuarial science with R
Tables, per year t and Survival lifetimes
0 20 40 60 80 100
0.0
0.2
0.4
0.6
0.8
1.0
Survival probability in 1900
Age
Sur
viva
l pro
babi
lity
at a
ge 0
in 1
900
FemaleMale
0 20 40 60 80 100
0.0
0.2
0.4
0.6
0.8
1.0
Survival probability in 2000
Age
Sur
viva
l pro
babi
lity
at a
ge 0
in 2
000
FemaleMale
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Arthur CHARPENTIER, Actuarial science with R
Survival lifetimes and rectangularization’
0 20 40 60 80 100 120
0.0
0.2
0.4
0.6
0.8
1.0
Male Mortality
Age
Sur
viva
l pro
babi
lity
at b
irth
1900
1910
1920
1930
1940
1950
1960
1970
1980
1990
2000
0 20 40 60 80 100 120
0.0
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0.4
0.6
0.8
1.0
Female Mortality
Age
Sur
viva
l pro
babi
lity
at b
irth
1900
1910
1920
1930
1940
1950
1960
1970
1980
1990
2000
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Arthur CHARPENTIER, Actuarial science with R
Life table and transversality> XV<-unique(Deces$Age); YV<-unique(Deces$Year)> DTF<-t(matrix(Deces[,3],length(XV),length(YV)))> ownames(DTF)=YV;colnames(DTF)=XV> t(DTF)[1:13,1:10]
1899 1900 1901 1902 1903 1904 1905 1906 1907 19080 64039 61635 56421 53321 52573 54947 50720 53734 47255 469971 12119 11293 10293 10616 10251 10514 9340 10262 10104 95172 6983 6091 5853 5734 5673 5494 5028 5232 4477 40943 4329 3953 3748 3654 3382 3283 3294 3262 2912 27214 3220 3063 2936 2710 2500 2360 2381 2505 2213 20785 2284 2149 2172 2020 1932 1770 1788 1782 1789 17516 1834 1836 1761 1651 1664 1433 1448 1517 1428 13287 1475 1534 1493 1420 1353 1228 1259 1250 1204 11088 1353 1358 1255 1229 1251 1169 1132 1134 1083 9619 1175 1225 1154 1008 1089 981 1027 1025 957 88510 1174 1114 1063 984 977 882 955 937 942 81211 1162 1055 1038 1020 945 954 931 936 880 85112 1100 1254 1076 1034 1023 1009 1041 1026 954 90813 1251 1283 1190 1126 1108 1093 1111 1054 1103 940
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Arthur CHARPENTIER, Actuarial science with R
Life table and transversalityIt might be interesting to follow a cohort, per year of birth x− t,
> Nannee <- max(DEATH$Year)> naissance <- 1950> taille <- Nannee - naissance> Vage <- seq(0,length=taille+1)> Vnaissance <- seq(naissance,length=taille+1)> Cagreg <- DEATH$Year*1000+DEATH$Age> Vagreg <- Vnaissance*1000+Vage> indice <- Cagreg%in%Vagreg> DEATH[indice,]
Year Age Female Male Total5662 1950 0 18943.05 25912.38 44855.435774 1951 1 2078.41 2500.70 4579.115886 1952 2 693.20 810.32 1503.525998 1953 3 375.08 467.12 842.206110 1954 4 287.04 329.09 616.136222 1955 5 205.03 246.07 451.106334 1956 6 170.00 244.00 414.00
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Arthur CHARPENTIER, Actuarial science with R
Life table and transversality
0 20 40 60 80 100
−10
−8
−6
−4
−2
0Mortality rate 1900
Age
Dea
th r
ate
(log)
FemaleMale
FemaleMale
Transversal
Longitudinal
0 20 40 60 80 100
−10
−8
−6
−4
−2
0
Mortality rate 1950
Age
Dea
th r
ate
(log)
FemaleMale
FemaleMale
Transversal
Longitudinal
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Arthur CHARPENTIER, Actuarial science with R
Lee & Carter (1992) modelAssume here (as in the original model)
logµx,t = αx + βx · κt + εx,t,
with some i.i.d. noise εx,t. Identification assumptions are usually
xM∑x=xm
βx = 1 andtM∑
t=tm
κt = 0.
Then sets of parameters α = (αx), β = (βx) and κ = (κt), are obtained solving(αx, βx, κt
)= arg min
∑x,t
(lnµxt − αx − βx · kt)2.
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Arthur CHARPENTIER, Actuarial science with R
Using demography packagePackage demography can be used to fit a Lee-Carter model
> library(forecast)> library(demography)> YEAR=unique(DEATH$Year);nC=length(YEAR)> AGE =unique(DEATH$Age);nL=length(AGE)> MUF =matrix(DEATH$Female/EXPOSURE$Female,nL,nC)> MUH =matrix(DEATH$Male/EXPOSURE$Male,nL,nC)> POPF=matrix(EXPOSURE$Female,nL,nC)> POPH=matrix(EXPOSURE$Male,nL,nC)
Then wo use the demogdata format
> BASEH <- demogdata(data=MUH, pop=POPH, ages=AGE, years=YEAR, type="mortality",+ label="France", name="Hommes", lambda=1)> BASEF <- demogdata(data=MUF, pop=POPF,ages=AGE, years=YEAR, type="mortality",+ label="France", name="Femmes", lambda=1)
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Arthur CHARPENTIER, Actuarial science with R
Estimation of α = (αx) and β = (βx)The code is simply LCH <- lca(BASEH)
> plot(LCH$age,LCH$ax,col="blue"); plot(LCH$age,LCH$bx,col="blue")
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010
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5
LCH$age
LCH
$bx
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Arthur CHARPENTIER, Actuarial science with R
Estimation and projection of κ = (κt)’sUse library(forcast) to predict future κt’s, e.g. using exponential smoothing
> library(forecast)> Y <- LCH$kt> (ETS <- ets(Y))ETS(A,N,N)
Call:ets(y = Y)
Smoothing parameters:alpha = 0.8923
Initial states:l = 71.5007
sigma: 12.3592
AIC AICc BIC
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Arthur CHARPENTIER, Actuarial science with R
1042.074 1042.190 1047.420
> plot(forecast(ETS,h=100))
But as in Lee & Carter original model, it is possible to fit an ARMA(1,1) model,on the differentiate series (∆κt)
∆κt = φ∆κt−1 + δ + ut − θut−1
It is also possible to consider a linear tendency
κt = α+ βt+ φκt−1 + ut − θut−1.
> (ARIMA <- auto.arima(Y,allowdrift=TRUE))Series: YARIMA(0,1,0) with drift
Call: auto.arima(x = Y, allowdrift = TRUE)
Coefficients:
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Arthur CHARPENTIER, Actuarial science with R
drift-1.9346
s.e. 1.1972
sigma^2 estimated as 151.9: log likelihood = -416.64AIC = 837.29 AICc = 837.41 BIC = 842.62
> plot(forecast(ARIMA,h=100))
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Arthur CHARPENTIER, Actuarial science with R
Projection of κt’s
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Forecasts from ETS(A,N,N)
1900 1950 2000 2050 2100
−50
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400
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200
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100
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Forecasts from ARIMA(0,1,0) with drift
1900 1950 2000 2050 2100
−50
0−
400
−30
0−
200
−10
00
100
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Arthur CHARPENTIER, Actuarial science with R
Shouldn’t we start modeling after 1945 ?Starting in 1948, LCH0 <- lca(BASEH,years=1948:2005)
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LCH$age
LCH
$ax
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50.
010
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020
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LCH$age
LCH
$bx
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Arthur CHARPENTIER, Actuarial science with R
Projection of κt’s
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Forecasts from ARIMA(0,1,0) with drift
1900 1950 2000 2050 2100
−50
0−
400
−30
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200
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00
100
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Forecasts from ARIMA(1,1,0) with drift
1900 1950 2000 2050 2100
−50
0−
400
−30
0−
200
−10
00
100
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Arthur CHARPENTIER, Actuarial science with R
Projection of life expectancy, born in 2005> LCHT=lifetable(LCHf); plot(0:100,LCHT$ex[,5],type="l",col="red")> LCHTu=lifetable(LCHf,"upper"); lines(0:100,LCHTu$ex[,5],lty=2)> LCHTl=lifetable(LCHf,"lower"); lines(0:100,LCHTl$ex[,5],lty=2)
0 20 40 60 80 100
020
4060
80
Life expectancy in 2005
Age
Res
idua
l exp
ecte
d lif
time
33
Arthur CHARPENTIER, Actuarial science with R
Residuals in Lee & Carter modelRecall that
logµx,t = αx + βx · κt + εx,t
Let εx,t denote pseudo-residuals, obtained from estimation
εx,t = logµx,t −(αx + βx · κt
).
> RES=residuals(LCH,"pearson")> colr=function(k) rainbow(110)[k*100]> couleur=Vectorize(colr)(seq(.01,1,by=.01))> plot(rep(RES$y,length(RES$x)),(RES$z),col=couleur[rep(RES$x,+ each=length(RES$y))-RES$x[1]+1])> plot(rep(RES$x,each=length(RES$y)),t(RES$z),col=couleur[rep(RES$y,length(RES$x))+1])
34
Arthur CHARPENTIER, Actuarial science with R
Residuals in Lee & Carter model
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0 20 40 60 80 100 120
−1.
5−
1.0
−0.
50.
00.
51.
01.
5
Age
Res
idua
ls (
Pea
rson
)
1900
1910
1920
1930
1940
1950
1960
1970
1980
1990
2000
35
Arthur CHARPENTIER, Actuarial science with R
Residuals in Lee & Carter model
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1900 1920 1940 1960 1980 2000 2020
−1.
5−
1.0
−0.
50.
00.
51.
01.
5
Year
Res
idua
ls (
Pea
rson
)
0
10
20
30
40
50
60
70
80
90
100
110
36
Arthur CHARPENTIER, Actuarial science with R
LifeMetrics FunctionsLifeMetrics is based on R functions that can be downloaded from JPMorgan’swebsite, that can be uploaded using source("fitModels.r").
Standard functions are based on two matrices etx (for the exposure) and dtx fordeath counts, respectively at dates t and ages x.
Recall that, with discrete notation,
m(x, t) = # deaths during calendar year t aged x last birthdayaverage population during calendar year t aged x last birthday
Note that not only the Lee-Carter model is implemented, but several models,Lee & Carter (1992), logm(x, t) = β
(1)x + β
(2)x κ
(2)t ,
Renshaw & Haberman (2006), logm(x, t) = β(1)x + β
(2)x κ
(2)t + β
(3)x γ
(3)t−x,
Currie (2006), logm(x, t) = β(1)x + κ
(2)t + γ
(3)t−x,
Cairns, Blake & Dowd (2006), logit(1− e−m(x,t)) = κ(1)t + (x− α)κ(2)
t ,Cairns et al. (2007), logit(1− e−m(x,t)) = κ
(1)t + (x− α)κ(2)
t + γ(3)t−x.
37
Arthur CHARPENTIER, Actuarial science with R
LifeMetrics FunctionsFor Lee & Carter model,
> res <- fit701(x, y, etx, dtx, wa)
where wa is a (possible) weight function. Here, assume that wa=1.
Remark : we have to remove very old ages,
> DEATH <- DEATH[DEATH$Age<90,]> EXPOSURE <- EXPOSURE[EXPOSURE$Age<90,]> XV <- unique(DEATH$Age)> YV <- unique(DEATH$Year)> ETF <- t(matrix(EXPOSURE[,3],length(XV),length(YV)))> DTF <- t(matrix(DEATH[,3],length(XV),length(YV)))> ETH <- t(matrix(EXPOSURE[,4],length(XV),length(YV)))> DTH <- t(matrix(DEATH[,4],length(XV),length(YV)))> WA <- matrix(1,length(YV),length(XV))> LCF <- fit701(xv=XV,yv=YV,etx=ETF,dtx=DTF,wa=WA)> LCH <- fit701(xv=XV,yv=YV,etx=ETH,dtx=DTH,wa=WA)
38
Arthur CHARPENTIER, Actuarial science with R
LifeMetrics FunctionsThe output is the following, LC$kappa1, LC$beta1, ... LC$ll for the maximumlog-likelihood estimators of different parameters, LC$mtx is an array with crudedeath rates, and LC$mhat with fitted death rates. LC$cy is the vector of cohortyears of birth (corresponding to LC$gamma3).
It it then possible to plot one of the cofficients against either LC$x or LC$y.
> plot(LCF$x,LCF$beta1,type="l",col="red")> lines(LCH$x,LCH$beta1,col="blue",lty=2)> plot(LCF$x,LCF$beta2,type="l",col="red")> lines(LCH$x,LCH$beta2,col="blue",lty=2)
39
Arthur CHARPENTIER, Actuarial science with R
0 20 40 60 80
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LCF
$bet
a1
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020
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LCF
$bet
a2
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40
Arthur CHARPENTIER, Actuarial science with R
> plot(LCF$y,LCF$kappa2,type="l",col="red")> lines(LCH$y,LCH$kappa2,col="blue")
1900 1920 1940 1960 1980 2000
−15
0−
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LCF
$kap
pa2
41
Arthur CHARPENTIER, Actuarial science with R
Using the gnm package(Much) more generally, it is possible to use the gnm package, to run a regression.Assume here that
Dx,t ∼ P(λx,t) where λx,t = Ex,t exp (αx + βx · κt)
which is a generalized nonlinear regression model.
> library(gnm)> Y=DEATH$Male> E=EXPOSURE$Male> Age= DEATH$Age> Year=DEATH$Year> I=(DEATH$Age<100)> base=data.frame(Y=Y[I],E=E[I],Age=Age[I],Year=Year[I])> REG=gnm(Y~factor(Age)+Mult((factor(Age)),factor(Year)),
data=base,offset=log(E),family=quasipoisson)InitialisingRunning start-up iterations..Running main iterations.......................Done
42
Arthur CHARPENTIER, Actuarial science with R
Using the gnm package
> names(REG$coefficients[c(1:5,85:90)])[1] "(Intercept)" "factor(Age)1" "factor(Age)2" "factor(Age)3"[5] "factor(Age)4" "factor(Age)84" "factor(Age)85" "factor(Age)86"[9] "factor(Age)87" "factor(Age)88" "factor(Age)89"
> names(REG$coefficients[c(91:94,178:180)])[1] "Mult(., factor(Year)).factor(Age)0" "Mult(., factor(Year)).factor(Age)1"[3] "Mult(., factor(Year)).factor(Age)2" "Mult(., factor(Year)).factor(Age)3"[5] "Mult(., factor(Year)).factor(Age)87" "Mult(., factor(Year)).factor(Age)88"[7] "Mult(., factor(Year)).factor(Age)89"> nomvar <- names(REG$coefficients)> nb3 <- substr(nomvar,nchar(nomvar)-3,nchar(nomvar))> nb2 <- substr(nomvar,nchar(nomvar)-1,nchar(nomvar))> nb1 <- substr(nomvar,nchar(nomvar),nchar(nomvar))> nb <- nb3> nb[substr(nb,1,1)=="g"]<- nb1[substr(nb,1,1)=="g"]> nb[substr(nb,1,1)=="e"]<- nb2[substr(nb,1,1)=="e"]> nb <- as.numeric(nb)> I <- which(abs(diff(nb))>1)
43
Arthur CHARPENTIER, Actuarial science with R
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])]
44
Arthur CHARPENTIER, Actuarial science with R
1900 1920 1940 1960 1980 2000
−4
−2
02
46
Année
RE
G$c
oeffi
cien
ts[(
I[2] +
1):
leng
th(n
b)]
45
Arthur CHARPENTIER, Actuarial science with R
Using Lee & Carter projectionsUsing estimators of αx’s, βx’s, as well as projection of κt’s, it is possible to obtainprojection of any actuarial quantities, based on projections of µx,t’s. E.g.
> A <- LCH$ax; B <- LCH$bx> K1 <- LCH$kt; K2 <- LCH$kt[99]+LCHf$kt.f$mean; K <- c(K1,K2)> MU <- matrix(NA,length(A),length(K))> for(i in 1:length(A)){ for(j in 1:length(K)){+ MU[i,j] <- exp(A[i]+B[i]*K[j]) }}
46
Arthur CHARPENTIER, Actuarial science with R
It is then possible to extrapolate k 7→ kpx’s
> t=2000> x=40> s=seq(0,99-x-1)
47
Arthur CHARPENTIER, Actuarial science with R
> MUd=MU[x+1+s,t+s-1898]> (Pxt=cumprod(exp(-diag(MUd))))[1] 0.99838440 0.99663098 0.99469369 0.99248602 0.99030804 0.98782725[7] 0.98417947 0.98017722 0.97575106 0.97098896 0.96576107 0.96006617
[13] 0.95402111 0.94749333 0.94045500 0.93291535 0.92484762 0.91622709[19] 0.90707101 0.89726011 0.88690981 0.87577047 0.86405282 0.85159220[25] 0.83850049 0.82472277 0.81011757 0.79478797 0.77847592 0.76144457[31] 0.74364218 0.72457570 0.70474824 0.68387491 0.66193090 0.63903821[37] 0.61469237 0.58924560 0.56257772 0.53478172 0.50577349 0.47480005[43] 0.44324965 0.41055038 0.37750446 0.34390607 0.30973747 0.27613617[49] 0.24253289 0.21038508 0.17960626 0.14970800 0.12276231 0.09902686[55] 0.07742879 0.05959964 0.04495042 0.03281240 0.02366992
and then we can derive projections of several actuarial (or demography)quantities. E.g. remaining lifetimes
> x=40> E=rep(NA,150)> for(t in 1900:2040){+ s=seq(0,90-x-1)+ MUd=MU[x+1+s,t+s-1898]
48
Arthur CHARPENTIER, Actuarial science with R
+ Pxt=cumprod(exp(-diag(MUd)))+ ext=sum(Pxt)+ E[t-1899]=ext}> plot(1900:2049,E)
or expected present value of deferred whole life annuities, purchased at age 40,deferred of 30 years
> r=.035: m=70> VV=rep(NA,141)> for(t in 1900:2040){+ s=seq(0,90-x-1)+ MUd=MU[x+1+s,t+s-1898]+ Pxt=cumprod(exp(-diag(MUd)))+ h=seq(0,30)+ V=1/(1+r)^(m-x+h)*Pxt[m-x+h]+ VV[t-1899]=sum(V,na.rm=TRUE)}> plot(1900:2040,VV)
49
Arthur CHARPENTIER, Actuarial science with R
1900 1950 2000 2050
3035
40
Residual life expectancy
Year
Res
idua
l life
exp
ecta
ncy,
at a
ge 4
0
1900 1920 1940 1960 1980 2000 2020 2040
1.5
2.0
2.5
3.0
3.5
Whole life insurance annuity
Year
50
Arthur CHARPENTIER, Actuarial science with R
Mortality rates as functional time seriesIt is possible to consider functional time series using rainbow package
> library(rainbow)> rownames(MUH)=AGE> colnames(MUH)=YEAR> rownames(MUF)=AGE> colnames(MUF)=YEAR> MUH=MUH[1:90,]> MUF=MUF[1:90,]> MUHF=fts(x = AGE[1:90], y = log(MUH), xname = "Age",yname = "Log Mortality Rate")> MUFF=fts(x = AGE[1:90], y = log(MUF), xname = "Age",yname = "Log Mortality Rate")> fboxplot(data = MUHF, plot.type = "functional", type = "bag")
Using principal components, it is possible to detect outliers
> fboxplot(data = MUHF, plot.type = "bivariate", type = "bag")
51
Arthur CHARPENTIER, Actuarial science with R
0 20 40 60 80
−8
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Mor
talit
y R
ate
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19191940194319441945
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01
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sco
re 2
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52
Arthur CHARPENTIER, Actuarial science with R
Cohort effect and Lee & Carter modelA natural idea is to include (on top of the age x and the year t) a cohort factor,based on the year of birth, t− x
logµx,t = αx + βx · κt + γx · δt−x + ηx,t,
as in Renshaw & Haberman (2006).
Using gnm function, it is possible to estimate that model, assuming again that alog-Poisson model for death counts is valid,
> D=as.vector(BASEB)> E=as.vector(BASEC)> A=rep(AGE,each=length(ANNEE))> Y=rep(ANNEE,length(AGE))> C=Y-A> base=data.frame(D,E,A,Y,C,a=as.factor(A),+ y=as.factor(Y),c=as.factor(C))> LCC=gnm(D~a+Mult(a,y)+Mult(a,c),offset=log(E), family=poisson,data=base)
53
Arthur CHARPENTIER, Actuarial science with R
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54
Arthur CHARPENTIER, Actuarial science with R
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55
Arthur CHARPENTIER, Actuarial science with R
PRACTICALS
56
Arthur CHARPENTIER, Actuarial science with R
> DEATH=read.table(+ "http://freakonometrics.free.fr/DeathsSwitzerland.txt",+ header=TRUE,skip=2)> EXPOSURE=read.table(+ "http://freakonometrics.free.fr/ExposuresSwitzerland.txt",+ header=TRUE,skip=2)> DEATH$Age=as.numeric(as.character(DEATH$Age))> DEATH=DEATH[-which(is.na(DEATH$Age)),]> EXPOSURE$Age=as.numeric(as.character(EXPOSURE$Age))> EXPOSURE=EXPOSURE[-which(is.na(EXPOSURE$Age)),]
57
Arthur CHARPENTIER, Actuarial science with R
– based on those datasets, plot the log mortality rates for male and female,– for those two datasets, plot the log mortality rates in 1900 and 1950,
respectively– for those two datasets, plot the log mortality rates for the cohort born on 1900
and 1950, respectively– on the total dataset (male and female), fit a Lee-Carter model. Plot the age
coefficients– plot the time coefficients and propose a forecast for that series of estimators.– plot the residuals obtained from the regression– using those estimates, and the forecasts, project the log-mortality rates– extrapolate the survival function of an insured aged 40 in 2000, and compare it
with the one obtained on the longitudinal dataset.
58
Arthur CHARPENTIER, Actuarial science with R
Part II
NON LIFE INSURANCE
59
Arthur CHARPENTIER, Actuarial science with R
Loss development triangle in nonlife insuranceLet PAID denote a triangle of cumulated payments, over time
> PAID[,1] [,2] [,3] [,4] [,5] [,6]
[1,] 3209 4372 4411 4428 4435 4456[2,] 3367 4659 4696 4720 4730 NA[3,] 3871 5345 5398 5420 NA NA[4,] 4239 5917 6020 NA NA NA[5,] 4929 6794 NA NA NA NA[6,] 5217 NA NA NA NA NA
– row i the accident year– column j the development year– diagonal i+ j the calendar year (for incremental payments)– Yi,j are incremental payments– Ci,j are cumulated payments, per accident year, Ci,j = Yi,0 + Yi,1 + · · ·+ Yi,j
60
Arthur CHARPENTIER, Actuarial science with R
Incurred But Not Reported - IBNRAt time n, all claims occurred before have not necessarily been (fully) reported,or settled, so claims manager have to predict the total amount of payments. LetHn denote the information available at time n (the upper part of the triangle)
Hn = {(Yi,j), i+ j ≤ n} = {(Ci,j), i+ j ≤ n}.
For accident year i, we want to get a best estimate of the total amount ofpayment, i.e.
C(n−i)i,∞ = lim
j→∞E[Ci,j |Hn] = E[Ci,∞|Hn]
and the difference with the payment done as at year i will be the required reserve
Ri = C(n−i)i,∞ − Ci,n−i.
One interesting quantity can be the (ultimate) uncertainty,
Var[Ci,∞|Hn] or Var[C(n−i)i,∞ ]
61
Arthur CHARPENTIER, Actuarial science with R
One year uncertainty in Solvency IIIn Solvency II, it is required to study the CDR (claims development result)defined as
∆ni = C
(n−i+1)i,∞ − C(n−i)
i,∞ = CDRi(n),
Note that E[∆ni |Fi,n−i] = 0, but insurers have to estimate (and set a reserve for
that uncertainty) Var[∆ni |Fi,n−i].
62
Arthur CHARPENTIER, Actuarial science with R
Chain LadderThe most popular model is the Chain Ladder methodology, assuming that
Ci,j+1 = λj · Ci,j for all i, j = 1, · · · , n.
A natural estimator for λj is
λj =∑n−j
i=1 Ci,j+1∑n−ji=1 Ci,j
for all j = 1, · · · , n− 1.
Then it is natural to predict the non-observed part of the triangle using
Ci,j =[λn+1−i · · · λj−1
]· Ci,n+1−i.
> k <- 1> sum(PAID[1:(nl-k),k+1])/sum(PAID[1:(nl-k),k])[1] 1.380933
63
Arthur CHARPENTIER, Actuarial science with R
Chain LadderThose transition factors can be obtained using a simple loop
> LAMBDA <- rep(NA,nc-1)> for(k in 1:(nc-1)){+ LAMBDA[k]=(sum(PAID[1:(nl-k),k+1])/sum(PAID[1:(nl-k),k]))}> LAMBDA[1] 1.380933 1.011433 1.004343 1.001858 1.004735
It is possible to rewrite Ci,j+1 = λj · Ci,j for all i, j = 1, · · · , n, as follows
Ci,j = γj · Ci,∞ or Yi,j = ϕj · Ci,∞.
> (GAMMA <- rev(cumprod(rev(1/LAMBDA))))[1] 0.7081910 0.9779643 0.9891449 0.9934411 0.9952873> (PHI <- c(GAMMA[1],diff(GAMMA)))[1] 0.708191033 0.269773306 0.011180591 0.004296183 0.001846141
64
Arthur CHARPENTIER, Actuarial science with R
Chain Ladder
> barplot(PHI,names=1:5)
1 2 3 4 5
0.0
0.2
0.4
0.6
0 1 2 3 4 n
λj 1,38093 1,01143 1,00434 1,00186 1,00474 1,0000γj 70,819% 97,796% 98,914% 99,344% 99,529% 100,000%ϕj 70,819% 26,977% 1,118% 0,430% 0,185% 0,000%
65
Arthur CHARPENTIER, Actuarial science with R
Chain LadderNote that we can write
λj =n−j∑i=1
ωi,j · λi,j où ωi,j = Ci,j∑n−ji=1 Ci,j
et λi,j = Ci,j+1
Ci,j.
i.e.
> k <- 1> weighted.mean(x=PAID[,k+1]/PAID[,k],w=PAID[,k],na.rm=TRUE)[1] 1.380933
An alternative is to write that weighted mean as the solution of a weighted leastsquares problem, i.e.
> lm(PAID[,k+1]~0+PAID[,k],weights=1/PAID[,k])$coefficientsPAID[, k]1.380933
The main interest of that expression is that is remains valid when trianglecontains NA’s
66
Arthur CHARPENTIER, Actuarial science with R
> LAMBDA <- rep(NA,nc-1)> for(k in 1:(nc-1)){+ LAMBDA[k]=lm(PAID[,k+1]~0+PAID[,k],+ weights=1/PAID[,k])$coefficients}> LAMBDA[1] 1.380933 1.011433 1.004343 1.001858 1.004735
The idea here is to iterate, by column,
> TRIANGLE <- PAID> for(i in 1:(nc-1)){+ TRIANGLE[(nl-i+1):(nl),i+1]=LAMBDA[i]*TRIANGLE[(nl-i+1):(nl),i]}> TRIANGLE
[,1] [,2] [,3] [,4] [,5] [,6][1,] 3209 4372.000 4411.000 4428.000 4435.000 4456.000[2,] 3367 4659.000 4696.000 4720.000 4730.000 4752.397[3,] 3871 5345.000 5398.000 5420.000 5430.072 5455.784[4,] 4239 5917.000 6020.000 6046.147 6057.383 6086.065[5,] 4929 6794.000 6871.672 6901.518 6914.344 6947.084[6,] 5217 7204.327 7286.691 7318.339 7331.939 7366.656
> tail.factor <- 1
67
Arthur CHARPENTIER, Actuarial science with R
> chargeultime <- TRIANGLE[,nc]*tail.factor> paiements <- diag(TRIANGLE[,nc:1])> (RESERVES <- chargeultime-paiements)[1] 0.00000 22.39684 35.78388 66.06466 153.08358 2149.65640
Here sum(RESERVES) is equal to 2426.985, which is the best estimate of theamount of required reserves,
> DIAG <- diag(TRIANGLE[,nc:1])> PRODUIT <- c(1,rev(LAMBDA))> sum((cumprod(PRODUIT)-1)*DIAG)[1] 2426.985
It is possible to write a function Chainladder() which return the total amountof reserves
> Chainladder<-function(TR,f=1){+ nc <- ncol(TR); nl <- nrow(TR)+ L <- rep(NA,nc-1)+ for(k in 1:(nc-1)){
68
Arthur CHARPENTIER, Actuarial science with R
+ L[k]=lm(TR[,k+1]~0+ TR[,k],+ weights=1/TR[,k])$coefficients}+ TRc <- TR+ for(i in 1:(nc-1)){+ TRc[(nl-i+1):(nl),i+1]=L[i]* TRc[(nl-i+1):(nl),i]}+ C <- TRc[,nc]*f+ R <- (cumprod(c(1,rev(L)))-1)*diag(TR[,nc:1])+ return(list(charge=C,reserves=R,restot=sum(R)))+ }> Chainladder(PAID)$charge[1] 4456.000 4752.397 5455.784 6086.065 6947.084 7366.656
$reserves[1] 0.00000 22.39684 35.78388 66.06466 153.08358 2149.65640
$restot[1] 2426.985
69
Arthur CHARPENTIER, Actuarial science with R
A stochastic model for paimentsAssume is that (Ci,j)j≥0 is a Markovian process and that there are λ = (λj) andσ = (σ2
j ) such that E(Ci,j+1|Hi+j) = E(Ci,j+1|Ci,j) = λj · Ci,j
Var(Ci,j+1|Hi+j) = Var(Ci,j+1|Ci,j) = σ2j · Ci,j
Under those assumptions,
E(Ci,j+k|Hi+j) = E(Ci,j+k|Ci,j) = λj · λj+1 · · ·λj+k−1Ci,j
Mack (1993) assumes moreover that (Ci,j)j=1,...,n and (Ci′,j)j=1,...,n areindependent for all i 6= i′.
Remark : It is also possible to write
Ci,j+1 = λjCi,j + σj
√Ci,j · εi,j ,
where residuals (εi,j) are i.i.d., centred, with unit variance.
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Arthur CHARPENTIER, Actuarial science with R
From that expression, one might think of weigthed least squares techniques, toestimation transition factors, i.e. given j, solve
min{
n−j∑i=1
1Ci,j
(Ci,j+1 − λjCi,j)2
}.
Remark : The interpretation of the first assumption is that points C·,j+1 versusC·,j should be on a straight line that goes through 0.
> par(mfrow = c(1, 2))> j=1> plot(PAID[,j],PAID[,j+1],pch=19,cex=1.5)> abline(lm(PAID[,j+1]~0+PAID[,j],weights=1/PAID[,j]))> j=2> plot(PAID[,j],PAID[,j+1],pch=19,cex=1.5)> abline(lm(PAID[,j+1]~0+PAID[,j],weights=1/PAID[,j]))> par(mfrow = c(1, 1))
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Arthur CHARPENTIER, Actuarial science with R
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3500 4000 4500 5000
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PAID[, j]
PAID
[, j +
1]
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4500
5000
5500
6000
PAID[, j]
PAID
[, j +
1]
Then, a natural idea is to use weighted residuals), εi,j = Ci,j+1 − λjCi,j√Ci,j
.
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Arthur CHARPENTIER, Actuarial science with R
> j=1> RESIDUALS <- (PAID[,j+1]-LAMBDA[j]*PAID[,j])/sqrt(PAID[,j])
Based on those residuals, it is then possible to estimate the volatility parameter
σ2j = 1
n− j − 1
n−j−1∑i=0
(Ci,j+1 − λjCi,j√
Ci,j
)2
or equivalenlty
σ2j = 1
n− j − 1
n−j−1∑i=0
(Ci,j+1
Ci,j− λj
)2· Ci,j
> lambda <- PAID[,2:nc]/PAID[,1:(nc-1)]> SIGMA <- rep(NA,nc-1)> for(i in 1:(nc-1)){+ D <- PAID[,i]*(lambda[,i]-t(rep(LAMBDA[i],nc)))^2+ SIGMA[i] <- 1/(nc-i-1)*sum(D[,1:(nc-i)])}> SIGMA[nc-1] <- min(SIGMA[(nc-3):(nc-2)])> (SIGMA=sqrt(SIGMA))[1] 0.72485777 0.32036422 0.04587297 0.02570564 0.02570564
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Arthur CHARPENTIER, Actuarial science with R
Tail factor, and closure of claim filesAssume that there exists λ∞ > 1 such that
Ci,∞ = Ci,n × λ∞.
A standard technique to extrapolate λi is to consider an exponentialextrapolation (i.e. linear extrapolation on log(λk − 1)’s), then set
λ∞ =∏k≥n
λk.
> logL <- log(LAMBDA-1)> tps <- 1:(nc-1)> modele <- lm(logL~tps)> plot(tps,logL,xlim=c(1,20),ylim=c(-30,0))> abline(modele)> tpsP <- seq(6,1000)> logP <- predict(modele,newdata=data.frame(tps=tpsP))> points(tpsP,logP ,pch=0)> (facteur <- prod(exp(logP)+1))[1] 1.000707
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Arthur CHARPENTIER, Actuarial science with R
I.e. 0.07% should be added on top of estimated final charge
> chargeultime <- TRIANGLE[,nc]*facteur> paiements <- diag(TRIANGLE[,nc:1])> (RESERVES <- chargeultime-paiements)[1] 3.148948 25.755248 39.639346 70.365538 157.992918 2154.862234> sum(RESERVES)[1] 2451.764
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tps
logL
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Arthur CHARPENTIER, Actuarial science with R
The ChainLadder package
> library(ChainLadder)> MackChainLadder(PAID)MackChainLadder(Triangle = PAID)
Latest Dev.To.Date Ultimate IBNR Mack.S.E CV(IBNR)1 4,456 1.000 4,456 0.0 0.000 NaN2 4,730 0.995 4,752 22.4 0.639 0.02853 5,420 0.993 5,456 35.8 2.503 0.06994 6,020 0.989 6,086 66.1 5.046 0.07645 6,794 0.978 6,947 153.1 31.332 0.20476 5,217 0.708 7,367 2,149.7 68.449 0.0318
In this first part, we have outputs per accident year, namely reserves Ri in theIBNR, column, e.g. 2,149.7, for present year, and msep(Ri) given by Mack S.E.e.g. 68.449 for present year.
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Arthur CHARPENTIER, Actuarial science with R
The ChainLadder package
TotalsLatest: 32,637.00Ultimate: 35,063.99IBNR: 2,426.99Mack S.E.: 79.30CV(IBNR): 0.03
Here, the total amount of reserves R is IBNR, qui vaut 2,426.99, as well asmsep(R) given by Mack S.E. i.e. 79.30. Function plot() can also be used onthe output of that function.
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Arthur CHARPENTIER, Actuarial science with R
The ChainLadder package
1 2 3 4 5 6
Forecast
Latest
Mack Chain Ladder Results
Origin period
Va
lue
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Chain ladder developments by origin period
Development period
Am
ou
nt
1
1 1 1 1 1
2
2 2 2 2
3
3 3 3
4
44
5
5
6
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Arthur CHARPENTIER, Actuarial science with R
The ChainLadder package
4500 5000 5500 6000 6500
−1.5
−1.0
−0.5
0.0
0.5
1.0
1.5
Fitted
Standardised residuals
1 2 3 4 5
−1.5
−1.0
−0.5
0.0
0.5
1.0
1.5
Origin period
Standardised residuals
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Arthur CHARPENTIER, Actuarial science with R
The ChainLadder package
1 2 3 4 5
−1.5
−1.0
−0.5
0.0
0.5
1.0
1.5
Calendar period
Standardised residuals
1.0 1.5 2.0 2.5 3.0 3.5 4.0
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1.5
Development period
Standardised residuals
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Arthur CHARPENTIER, Actuarial science with R
One year uncertaintyMerz & Wüthrich (2008) studied the evolution of CDRi(n) with time (n).They proved that
msepcn−1(CDRi(n)) = C2i,∞
(Γi,n + ∆i,n
)where
∆i,n =σ2
n−i+1
λ2n−i+1S
n+1n−i+1
+n−1∑
j=n−i+2
(Cn−j+1,j
Sn+1j
)2σ2
j
λ2jS
nj
and
Γi,n =(
1 +σ2
n−i+1
λ2n−i+1Ci,n−i+1
)n−1∏
j=n−i+2
(1 +
σ2j
λ2j [Sn+1
j ]2Cn−j+1,j
)− 1
Merz & Wüthrich (2008) mentioned that one can approximate the term aboveas
Γi,n ≈σ2
n−i+1
λ2n−i+1Ci,n−i+1
+n−1∑
j=n−i+2
(Cn−j+1,j
Sn+1j
)2σ2
j
λ2jCn−j+1,j
81
Arthur CHARPENTIER, Actuarial science with R
using∏
(1 + ui) ≈ 1 +∑ui, which is valid if ui is small i.e.
σ2j
λ2j
<< Cn−j+1,j .
It is possible to use function MackMerzWuthrich()
> MackMerzWuthrich(PAID)MSEP Mack MSEP MW app. MSEP MW ex.
1 0.0000000 0.000000 0.0000002 0.6393379 1.424131 1.3152923 2.5025153 2.543508 2.5435084 5.0459004 4.476698 4.4766985 31.3319292 30.915407 30.9154076 68.4489667 60.832875 60.832898tot 79.2954414 72.574735 72.572700
82
Arthur CHARPENTIER, Actuarial science with R
Regression and claims reservingde Vylder (1978) suggested the following model, for incremental payments
Yi,j ∼ N (αi · βj , σ2), for all i, j,
i.e. an accident year factor αi and a development factor βj It is possible to useleast squares techniques to estimate those factors
(α, β) = argmin
∑i,j
[Yi,j − αi · βj ]2 .
Here normal equations are
αi =∑
j Yi,j · βj∑j β
2j
et βj =∑
i Yi,j · αi∑i α
2i
,
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Arthur CHARPENTIER, Actuarial science with R
Regression and claims reservingAn alternative is to consider an additive model for the logarithm of incrementalpayments
log Yi,j ∼ N (ai + bj , σ2), for all i, j.
> ligne <- rep(1:nl, each=nc); colonne <- rep(1:nc, nl)> INC <- PAID> INC[,2:6] <- PAID[,2:6]-PAID[,1:5]> Y <- as.vector(INC)> lig <- as.factor(ligne)> col <- as.factor(colonne)> reg <- lm(log(Y)~col+lig)
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Arthur CHARPENTIER, Actuarial science with R
> summary(reg)Call:lm(formula = log(Y) ~ col + lig)Coefficients:
Estimate Std. Error t value Pr(>|t|)(Intercept) 7.9471 0.1101 72.188 6.35e-15 ***col2 0.1604 0.1109 1.447 0.17849col3 0.2718 0.1208 2.250 0.04819 *col4 0.5904 0.1342 4.399 0.00134 **col5 0.5535 0.1562 3.543 0.00533 **col6 0.6126 0.2070 2.959 0.01431 *lig2 -0.9674 0.1109 -8.726 5.46e-06 ***lig3 -4.2329 0.1208 -35.038 8.50e-12 ***lig4 -5.0571 0.1342 -37.684 4.13e-12 ***lig5 -5.9031 0.1562 -37.783 4.02e-12 ***lig6 -4.9026 0.2070 -23.685 4.08e-10 ***---Signif. codes: 0 â***â 0.001 â**â 0.01 â*â 0.05 â.â 0.1 â â 1
Residual standard error: 0.1753 on 10 degrees of freedom(15 observations deleted due to missingness)
85
Arthur CHARPENTIER, Actuarial science with R
Multiple R-squared: 0.9975, Adjusted R-squared: 0.9949F-statistic: 391.7 on 10 and 10 DF, p-value: 1.338e-11
An unbiaised estimator for Yi,j is then Yi,j = exp[ai + bj + σ2/2], i.e.
> sigma <- summary(reg)$sigma> (INCpred <- matrix(exp(logY+sigma^2/2),nl,nc))
[,1] [,2] [,3] [,4] [,5] [,6][1,] 2871.209 1091.278 41.66208 18.27237 7.84125 21.32511[2,] 3370.826 1281.170 48.91167 21.45193 9.20570 25.03588[3,] 3767.972 1432.116 54.67438 23.97937 10.29030 27.98557[4,] 5181.482 1969.357 75.18483 32.97495 14.15059 38.48403[5,] 4994.082 1898.131 72.46559 31.78233 13.63880 37.09216[6,] 5297.767 2013.554 76.87216 33.71498 14.46816 39.34771> sum(exp(logY[is.na(Y)==TRUE]+sigma^2/2))[1] 2481.857
86
Arthur CHARPENTIER, Actuarial science with R
A Poisson Regression on incremental paymentsHachemeister & Stanard (1975), Kremer (1985) and Mack (1991)observed that a log-Poisson regression yield exactly the same amount of reservesas the Chain Ladder technique
> CL <- glm(Y~lig+col, family=poisson)> summary(CL)
Call:glm(formula = Y ~ lig + col, family = poisson)
Coefficients:Estimate Std. Error z value Pr(>|z|)
(Intercept) 8.05697 0.01551 519.426 < 2e-16 ***lig2 -0.96513 0.01359 -70.994 < 2e-16 ***lig3 -4.14853 0.06613 -62.729 < 2e-16 ***lig4 -5.10499 0.12632 -40.413 < 2e-16 ***lig5 -5.94962 0.24279 -24.505 < 2e-16 ***lig6 -5.01244 0.21877 -22.912 < 2e-16 ***col2 0.06440 0.02090 3.081 0.00206 **
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Arthur CHARPENTIER, Actuarial science with R
col3 0.20242 0.02025 9.995 < 2e-16 ***col4 0.31175 0.01980 15.744 < 2e-16 ***col5 0.44407 0.01933 22.971 < 2e-16 ***col6 0.50271 0.02079 24.179 < 2e-16 ***---Signif. codes: 0 â***â 0.001 â**â 0.01 â*â 0.05 â.â 0.1 â â 1
(Dispersion parameter for poisson family taken to be 1)
Null deviance: 46695.269 on 20 degrees of freedomResidual deviance: 30.214 on 10 degrees of freedom
(15 observations deleted due to missingness)AIC: 209.52
Number of Fisher Scoring iterations: 4
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Arthur CHARPENTIER, Actuarial science with R
Here, the prediction is
> Ypred <- predict(CL,newdata=data.frame(lig,col),type="response")> (INCpred <- matrix(Ypred,nl,nc))
[,1] [,2] [,3] [,4] [,5] [,6][1,] 3155.699 1202.110 49.82071 19.14379 8.226405 21.00000[2,] 3365.605 1282.070 53.13460 20.41717 8.773595 22.39684[3,] 3863.737 1471.825 60.99889 23.43904 10.072147 25.71173[4,] 4310.096 1641.858 68.04580 26.14685 11.235734 28.68208[5,] 4919.862 1874.138 77.67250 29.84594 12.825297 32.73985[6,] 5217.000 1987.327 82.36357 31.64850 13.599887 34.71719
which is the same as Chain-Ladder estimate
> sum(Ypred[is.na(Y)==TRUE])[1] 2426.985
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Arthur CHARPENTIER, Actuarial science with R
Oversdispersion and quasiPoisson regressionNote that usually, the Poisson model might be too conservative (in terms ofvariance) since there might be overdispersion of incremental payments.
Remark : N has an overdispersed Poisson distribution with dispersionparameter φ if X/φ ∼ P(λ/φ), i.e. E(X) = λ while Var(X) = φλ
> CL <- glm(Y~lig+col, family=quasipoisson)> summary(CL)
Call:glm(formula = Y ~ lig + col, family = quasipoisson)
Deviance Residuals:Min 1Q Median 3Q Max
-2.3426 -0.4996 0.0000 0.2770 3.9355
Coefficients:Estimate Std. Error t value Pr(>|t|)
(Intercept) 8.05697 0.02769 290.995 < 2e-16 ***
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Arthur CHARPENTIER, Actuarial science with R
lig2 -0.96513 0.02427 -39.772 2.41e-12 ***lig3 -4.14853 0.11805 -35.142 8.26e-12 ***lig4 -5.10499 0.22548 -22.641 6.36e-10 ***lig5 -5.94962 0.43338 -13.728 8.17e-08 ***lig6 -5.01244 0.39050 -12.836 1.55e-07 ***col2 0.06440 0.03731 1.726 0.115054col3 0.20242 0.03615 5.599 0.000228 ***col4 0.31175 0.03535 8.820 4.96e-06 ***col5 0.44407 0.03451 12.869 1.51e-07 ***col6 0.50271 0.03711 13.546 9.28e-08 ***---Signif. codes: 0 â***â 0.001 â**â 0.01 â*â 0.05 â.â 0.1 â â 1
(Dispersion parameter for quasipoisson family taken to be 3.18623)
Null deviance: 46695.269 on 20 degrees of freedomResidual deviance: 30.214 on 10 degrees of freedom
(15 observations deleted due to missingness)AIC: NA
Number of Fisher Scoring iterations: 4
91
Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertaintyRecall that in this GLM framework
E(Yi,j |Fn) = µi,j = exp[ηi,j ]
i.e.Yi,j = µi,j = exp[ηi,j ].
Using the delta method we can write
Var(Yi,j) ≈∣∣∣∣∂µi,j
∂ηi,j
∣∣∣∣2 ·Var(ηi,j),
which becomes, with a log link function
∂µi,j
∂ηi,j= µi,j
92
Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertaintyIn the case of an overdispersed Poisson model (as in Renshaw (1992)),
E(
[Yi,j − Yi,j ]2)≈ φ · µi,j + µ2
i,j · Var(ηi,j)
for the lower part of the triangle. Further,
Cov(Yi,j , Yk,l) ≈ µi,j · µk,l · Cov(ηi,j , ηk,l).
Since R =∑
i+j>n Yi,j , then
E(
[R− R]2)≈
∑i+j>n
φ · µi,j
+ µ′F · Var(ηF ) · µF ,
where µF and ηF are restrictions of µ and η to indices i+ j > n (i.e. lower partof the triangle).
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Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertaintyRemark : This expression is only asymptotic.
> p <- nl+nc-1;> phi <- sum(residuals(CL,"pearson")^2)/(sum(is.na(Y)==FALSE)-p)> Sig <- vcov(CL)> X <- model.matrix(glm(Ypred~lig+col, family=quasipoisson))> Cov.eta <- X%*%Sig%*%t(X)> Ypred <-predict(CL,newdata=data.frame(lig,col),type="response")*(is.na(Y)==TRUE)> se2 <- phi * sum(Ypred) + t(Ypred) %*% Cov.eta %*% Ypred> sqrt(se2)
[,1][1,] 131.7726
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Arthur CHARPENTIER, Actuarial science with R
Uncertainty and errors in regression modelsIn regression models, there are two sources in regression models• the process error (due to statistical inference) : error on Y• the variance error (due to the model approximation) : error on Y = Y + ε
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Arthur CHARPENTIER, Actuarial science with R
Uncertainty and errors in regression modelsIn regression models, there are two sources in regression models• the process error (due to statistical inference) : error on Y• the variance error (due to the model approximation) : error on Y = Y + ε
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Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertainty using simulationsIn order to estimate those quantities, consider Person’s residuals
εi,j = Yi,j − Yi,j√Yi,j
.
or, in order to have unit variance,
εi,j =√
n
n− k· Yi,j − Yi,j√
Yi,j
,
where k is the number of parameters in the model (i.e. 2n− 1).
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Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertainty using simulations
> (residus=residuals(CL,type="pearson"))1 2 3 4 5 6 7 8
9.49e-01 2.40e-02 1.17e-01 -1.08e+00 1.30e-01 -1.01e-13 -1.13e+00 2.77e-019 10 11 13 14 15 16 19
5.67e-02 8.92e-01 -2.11e-01 -1.53e+00 -2.21e+00 -1.02e+00 4.24e+00 -4.90e-0120 21 25 26 31
7.93e-01 -2.97e-01 -4.28e-01 4.14e-01 -6.20e-15> n=sum(is.na(Y)==FALSE)> k=ncol(PAID)+nrow(PAID)-1> (residus=sqrt(n/(n-k))*residus)
1 2 3 4 5 6 7 81.37e+00 3.49e-02 1.69e-01 -1.57e+00 1.89e-01 -1.46e-13 -1.63e+00 4.02e-01
9 10 11 13 14 15 16 198.22e-02 1.29e+00 -3.06e-01 -2.22e+00 -3.21e+00 -1.48e+00 6.14e+00 -7.10e-01
20 21 25 26 311.15e+00 -4.31e-01 -6.20e-01 6.00e-01 -8.99e-15
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Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertainty using simulations
> epsilon <- rep(NA,nl*nc)> epsilon[is.na(Y)==FALSE]=residus> matrix(epsilon,nl,nc)
[,1] [,2] [,3] [,4] [,5] [,6][1,] 1.37e+00 -1.6346 -2.22 -0.710 -0.62 -8.99e-15[2,] 3.49e-02 0.4019 -3.21 1.149 0.60 NA[3,] 1.69e-01 0.0822 -1.48 -0.431 NA NA[4,] -1.57e+00 1.2926 6.14 NA NA NA[5,] 1.89e-01 -0.3059 NA NA NA NA[6,] -1.46e-13 NA NA NA NA NA
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Arthur CHARPENTIER, Actuarial science with R
Generating a pseudo triangle of paymentsIt is then natural to generate errors εb = (εb
i,j), to generate a pseudo triangle ofpayments
Y bi,j = Yi,j +
√Yi,j · εb
i,j .
> par(mfrow = c(1, 2))> hist(residus,breaks=seq(-3.5,6.5,by=.5),col="grey",proba=TRUE)> u <- seq(-4,5,by=.01)> densite <- density(residus)> lines(densite,lwd=2)> lines(u,dnorm(u,mean(residus),sd(residus)),lty=2)> plot(ecdf(residus),xlab="residus",ylab="Fn(residus)")> lines(u,pnorm(u,mean(residus),sd(residus)),lty=2)> Femp <- cumsum(densite$y)/sum(densite$y)> lines(densite$x,Femp,lwd=2)> par(mfrow = c(1, 1))
Bootstrap or parametric model for ε’s ?
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Arthur CHARPENTIER, Actuarial science with R
Generating a pseudo triangle of payments
Histogram of epsilon
epsilon
Den
sity
−5 0 5 10
0.00
0.05
0.10
0.15
0.20
0.25
−5 0 5 10
0.0
0.2
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ecdf(epsilon)
espilon
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ive
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ribut
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Arthur CHARPENTIER, Actuarial science with R
Generating a pseudo triangle of paymentsOnce triangle Y b = (Y b
i,j) is generate, compute Rb, e.g. using Chain Laddertechnique. Variance of Rb will denote the estimation error.
From triangle Y bi,j , prediction for the lower part of the triangle can be derived
Y bi,j . In order to generate scenarios of future payments, generate Poisson variates
with mean Y bi,j ,
> CLsimul1<-function(triangle){+ rpoisson(length(triangle),lambda=triangle)}
But generating Poisson variates might be too conservative,
> (summary(CL)$dispersion)[1] 3.19
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Arthur CHARPENTIER, Actuarial science with R
Generating quasi Poisson variatesFirst idea : a Gamma approximation. Recall that E(Y ) = λ et Var(Y ) = φλ forY ∼ G(α, β) i.e αβ = λ and αβ2 = φλ.
> rqpoisG <- function(n, lambda, phi, roundvalue = TRUE) {+ b <- phi ; a <- lambda/phi ; r <- rgamma(n, shape = a, scale = b)+ if(roundvalue){r<-round(r)}+ return(r)}
Second idea : a Negative Binomial variate, with mean µ and variance µ+ µ2/k,i.e. µ = λ and k = λ(φλ− 1)−1, i.e.
> rqpoisBN = function(n, lambda, phi) {+ mu <- lambda ; k <- mu/(phi * mu - 1) ; r <- rnbinom(n, mu = mu, size = k)+ return(r)}
Then
> CLsimul2<-function(triangle,surdispersion){+ rqpoissonG(length(triangle),lambda=triangle,phi=surdispersion)}
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Arthur CHARPENTIER, Actuarial science with R
Quantifying uncertainty using simulationsAn alternative to generate future payements is use Mack (1993)’s approach, assuggested in England & Verrall (1998).
From λj and σ2j use the following dynamics
Cbi,j+1|Cb
i,j ∼ N (λjCbi,j , σ
2jC
bi,j).
Thus, from a triangle of cumulated payments triangle a vector of transitionvaluers l and a vector of conditional variances s define
> CLsimul3<-function(triangle,l,s){+ m<-nrow(triangle)+ for(i in 2:m){+ triangle[(m-i+2):m,i]<-rnorm(i-1,+ mean=triangle[(m-i+2):m,i-1]*l[i-1],+ sd=sqrt(triangle[(m-i+2):m,i-1])*s[i-1])+ }+ return(triangle) }
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Arthur CHARPENTIER, Actuarial science with R
Then, we run several simulations to generate best estimates and possiblescenarios of payments
> ns<-20000> set.seed(1)> Yp <- predict(CL,type="response",newdata=base)> Rs <- R <- rep(NA,ns)> for(s in 1:ns){+ serreur <- sample(residus,size=nl*nc,replace=TRUE)+ E <- matrix(serreur,nl,nc)+ sY <- matrix(Yp,6,6)+E*sqrt(matrix(Yp,6,6))+ if(min(sY[is.na(Y)==FALSE])>=0){+ sbase <- data.frame(sY=as.vector(sY),lig,col)+ sbase$sY[is.na(Y)==TRUE]=NA+ sreg <- glm(sY~lig+col,+ data=sbase,family=poisson(link="log"))+ sYp <- predict(sreg,type="response",newdata=sbase)+ R[s] <- sum(sYp[is.na(Y)==TRUE])+ sYpscenario <- rqpoisG(36,sYp,phi=3.18623)+ Rs[s] <- sum(sYpscenario[is.na(Y)==TRUE])+ }}
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Arthur CHARPENTIER, Actuarial science with R
Remark : In those simulations, it might be possible to generate negativeincrements
> sort(residus)[1:2]14 13
-3.21 -2.22> sort(sqrt(Yp[is.na(Y)==FALSE]))[1:4]
25 26 19 202.87 2.96 4.38 4.52
But we might assume that those scenarios while yield low reserves (and thus willnot impact high losses quantiles)
> Rna <- R> Rna[is.na(R)==TRUE]<-0> Rsna <- Rs> Rsna[is.na(Rs)==TRUE]<-0> quantile(Rna,c(.75,.95,.99,.995))
75% 95% 99% 99.5%2470 2602 2700 2729
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Arthur CHARPENTIER, Actuarial science with R
> quantile(Rsna,c(.75,.95,.99,.995))75% 95% 99% 99.5%
2496 2645 2759 2800
0.75 0.80 0.85 0.90 0.95 1.00
2500
2600
2700
2800
2900
probabilty
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Arthur CHARPENTIER, Actuarial science with R
Vector R contains best scenarios, while vector Rs contains scenarios of payments.In order to visualize their distribution, we have to remove NA values
> Rnarm <- R[is.na(R)==FALSE]> Rsnarm <- Rs[is.na(Rs)==FALSE]
Here quantiles are slightly higher
> quantile(Rnarm,c(.75,.95,.99,.995))75% 95% 99% 99.5%
2478 2609 2704 2733> quantile(Rsnarm,c(.75,.95,.99,.995))
75% 95% 99% 99.5%2507 2653 2764 2805
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Arthur CHARPENTIER, Actuarial science with R
● ●●●●● ●●● ●● ● ●●●● ●● ● ●●● ●● ●●●● ●●●● ●●● ●● ●●● ●●●●●●● ●●● ● ●● ● ●●●●●●● ● ● ●● ●● ●●● ● ●● ● ●●● ●●● ●●●● ●●● ●●●● ● ●● ●● ●● ● ●●●● ●● ● ●● ●● ●● ●● ●● ● ●●● ● ●●●● ●●● ● ●● ●●●●●● ●● ●● ● ● ●●● ●● ● ●●●●●●● ●● ●● ●●● ●● ●● ●● ●● ●●●● ●●● ●● ●●●● ●● ●● ●●● ●●●● ●● ●● ●●● ● ● ●●●● ●●● ● ●●● ●● ● ●● ●● ●● ●● ● ● ●●● ●●● ●● ●●● ●● ● ● ●● ●● ●●●● ● ●●● ● ●●● ●● ● ●● ●●● ●●●● ●●●● ● ●●● ●●●● ● ●● ●● ● ●● ●●● ●● ●● ●● ●● ●● ●●● ●●● ●● ●● ●●● ●● ●●● ●●● ●● ●● ●●● ●●●● ●●● ●●● ●●●● ●● ●● ●●● ●● ●●● ●● ●● ●●● ●● ●●●● ● ●●● ●● ●● ●●● ●●●● ● ● ●● ●●●●●●● ● ●● ●● ●●● ●●● ●● ●●● ●●● ●● ●●● ●●● ●● ●●● ●● ●●●●●● ●●●● ● ●●● ●●●● ●● ●●●● ●●● ● ● ●●● ●● ●●●● ● ●●● ●● ● ●● ●● ●● ●● ●● ●●● ●●● ●●● ●● ● ●● ●● ● ●● ●●● ● ● ●●● ●● ●
●● ● ● ●●●● ●●●● ●● ●● ●● ●●● ● ● ●● ●● ●●●● ●● ●●● ●● ●● ●● ● ●●● ●● ● ●●● ●● ●●●●● ● ●●● ●●●● ● ●●●● ●● ●●● ●● ●●● ●● ●●● ●● ●●●● ● ●● ●●● ●● ●●● ●●●●●● ●● ●●● ●●● ● ●● ● ●●●● ●●● ●●● ●● ● ●● ●●● ●● ● ●● ● ● ●●●●● ●● ●●● ●● ●● ●● ● ●●● ●● ● ● ●● ●●●● ● ●● ●● ● ●●●●● ●●● ● ●● ●● ●● ● ●● ● ●●●● ● ●●●● ●●● ● ●●●● ● ●●●● ●●●●
Bes
t Est
imat
e
2000 2200 2400 2600 2800 3000
> plot(density(Rnarm),col="grey",main="")> lines(density(Rsnarm),lwd=2)> boxplot(cbind(Rnarm,Rsnarm),+ col=c("grey","black"),horizontal=TRUE)
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Arthur CHARPENTIER, Actuarial science with R
2200 2400 2600 2800 3000
0.00
00.
001
0.00
20.
003
0.00
4
N = 18079 Bandwidth = 11.07
Den
sity
Those quantities are quite similar to the one obtained using bootChainLadderfrom library(ChainLadder),
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Arthur CHARPENTIER, Actuarial science with R
> BootChainLadder(PAID,20000,"od.pois")BootChainLadder(Triangle = PAID, R = 20000, process.distr = "od.pois")
Latest Mean Ultimate Mean IBNR SD IBNR IBNR 75% IBNR 95%1 4,456 4,456 0.0 0.0 0 02 4,730 4,752 22.1 12.0 28 443 5,420 5,455 35.3 15.3 44 634 6,020 6,085 65.5 19.8 77 1015 6,794 6,946 152.4 28.6 170 2036 5,217 7,363 2,146.2 111.6 2,216 2,337
TotalsLatest: 32,637Mean Ultimate: 35,059Mean IBNR: 2,422SD IBNR: 132Total IBNR 75%: 2,504Total IBNR 95%: 2,651
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Arthur CHARPENTIER, Actuarial science with R
PRACTICALS
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Arthur CHARPENTIER, Actuarial science with R
> OthLiabData=read.csv(+ "http://www.casact.org/research/reserve_data/othliab_pos.csv",+ header=TRUE, sep=",")> library(plyr)> OL=SumData=ddply(OthLiabData,.(AccidentYear,DevelopmentYear,+ DevelopmentLag),summarise,IncurLoss=sum(IncurLoss_H1-BulkLoss_H1),+ CumPaidLoss=sum(CumPaidLoss_H1), EarnedPremDIR=+ sum(EarnedPremDIR_H1))> library(ChainLadder)> LossTri <- as.triangle(OL, origin="AccidentYear",+ dev="DevelopmentLag", value="IncurLoss")> Year=as.triangle(OL, origin="AccidentYear",+ dev="DevelopmentLag", value="DevelopmentYear")> TRIANGLE=LossTri> TRIANGLE[Year>1997]=NA
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Arthur CHARPENTIER, Actuarial science with R
– suggest an estimation for the amount of reserves, all years.– using a (quasi)Poisson regression, propose a VaR with level 99.5% for future
payments, for all claims that already occurred.
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Arthur CHARPENTIER, Actuarial science with R
To go further, some (standard) references
Wüthrich, M. & Merz, M. (2008)Stochastic Claims Reserving Methods in InsuranceWiley Finance Series
Frees, J.E. (2007)Regression Modeling with Actuarialand Financial ApplicationsCambridge University Press
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Arthur CHARPENTIER, Actuarial science with R
To go further, loss distributions and credibility
Krugman, S.A., Panjer, H.H. & Willmot, G.E. (1998)Loss ModelsWiley Series in Probability
Bühlmann, H. & Gisler, A. (2005)A Course in Credibility Theory and its ApplicationsSpringer Verlag
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Arthur CHARPENTIER, Actuarial science with R
To go further, regression & GLMs
Kaas, R., Goovaerts, M, Dhaene, J & Denuit, M. (2009)Modern Actuarial Risk TheorySpringer Verlag
de Jong, P. & Heller, G.Z. (2008)Generalized Linear Models for Insurance DataCambridge University Press
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Arthur CHARPENTIER, Actuarial science with R
To go further, ratemaking
Denuit, M., Marechal, X., Pitrebois, S.& Walhin, J.F. (2007)Actuarial Modelling of Claim Counts :Risk Classification, Credibility & Bonus-Malus SystemsJohn Wiley & Sons
Ohlsson E. & Johansson, B. (2010)Non-Life Insurance Pricing withGeneralized Linear ModelsSpringer Verlag
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Arthur CHARPENTIER, Actuarial science with R
To go further, on demography
Pitacco, E., Denuit, M., Haberman, S.& Olivieri, A. (2008) Modeling LongevityDynamics for Pensions and Annuity BusinessOxford University Press
Schoen, R. (2007)Dynamic Population ModelsSpringer Verlag
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