Title: Slide_template_blank.ppt
1 Insurance Guarantee Schemes A credit portfolio
approach to estimate potential exposures and
funding needs in Europe Joossens E., Marchesi
M., Rezessy A. and Petracco M. EC Joint Research
Centre Unit for Econometrics and Applied
Statistics The views expressed in this paper are
those of the authors and should not be attributed
to the European Commission or Member States.
2Background
- Recent financial crisis and insurance crisis in
Greece created new interest on consumer
protection mechanisms in insurance market - Mechanism on which we concentrate is an Insurance
Guarantee Scheme. i.e. provider last resort
protection to policyholder in case insurance
company becomes insolvent - Within Europe currently
- 9 MS with coverage for life assurance
- 8 MS with coverage for non life insurance
3Aim of paper
Propose a methodology to estimate the
distribution of losses of an IGS
- With
- only minimal data requirements
- taking into account Solvency II capital
requirements - the possibility to offer applications for EU
countries - What has been done in the past
- a simple point estimation of the expected value
has been provided without a more complete loss
distribution
4The model
- IGS protect policyholders/claimants from credit
risk of insurers - Employ a default risk model ? Merton model
- Default process of a firm as the exercise of an
option - Using a diffusion process with Gaussian underlying
BUT does not capture sensitivity to common
factors and correlation
- Portfolio credit risk ? Vasicek (1991) model
- Incorporates single common factor and
idiosyncratic factorsso the value of the asset
can be written as
5The model II
- Limiting distribution of losses within a
homogeneous portfolio of exposures leads to - Where X stands for the share of portfolio which
defaults. - This distribution only depends on
- the average unconditional default probability,
PD , of each exposure and - the correlation between the exposures and a
common factor, ?.
6Extension of the model
- Model assumption is infinite and homogeneous
market - BUT
- only a finite number of exposures
- not all insurance companies are equally large
- Inclusion of additional correction term
granularity factor d - is a measure of concentration
- obtained as , where are
the shares of the individual exposures in the
portfolio, and - is then used to adjust the correlation
coefficient by setting -
7Maximum expected loss
- Inverting the equation it is possible to obtain
the maximum loss (as a share of the total
portfolio) which should not be exceeded in one
year under any given confidence level a - To obtain the amount in monetary losses include
- Loss given default or LGD
- Total exposure at default or EAD
- Leading to the maximum expected losses under
confidence level a -
8Application
IGS for the Life insurance sector in each EU
member states
- Assumptions made
- Type of coverage full coverage without
exclusions - Geographic scope home state principle (i.e.
scheme covers policies issued by domestic
companies that participate in the scheme,
including policies issued by the companies
braches established in other EU MS) - Eligible claimants natural persons and legal
entity - Type of intervention continuation of contracts
9Current EU position
Used in this paper Life Life Life Life Life Life Life Life Total
Used in this paper LV BG UK MT FR DE RO PL ES
Nature of intervention
Pure compensation to claimants X X x x X X X X X
Continuation of contracts X X(1) X X X
Eligible claimants
Natural persons only X X
Natural persons SMEs x x
Natural and legal persons except financial institutions X
Natural and legal entity X X X X X
Compensation limits and reductions
Capping payouts X X X X n/a
Capping payouts for non-compulsory insurance X X
Level of coverage in percentage terms 100 100 70 90 75 100 100 50 n/a
Level of coverage in percentage terms (compulsory ins.) 100 100
Fixed deductible
Other reduction in benefits X X
Geographic scope
An IGS in each MS with home state principle X X X X X X X X
An IGS in each MS with host state principle X x X X
Other X
Types of policies covered
Without exclusions X X X X X X X
With exclusion X X X
10Calibration of parameters
- Calibration of the VaR parameters
- For the probability of default PD 0.1
- Standard and Poors one-year corporate default
rates by rating - Credit ratings distribution (Year-end) of the
leading European insurance groups as provided by
CEIOPS (Committee of European Insurance and
Occupational Pensions Supervisors) - For the correlation coefficient ? 20
- In line with Basel II IRB risk model
recommendations - For the granularity adjustment d country
specific based on - Number of companies per insurance sector and
country - Total premium income of the insurance sector and
top 5 companies - Additional available market shares of top 5, 10
and 15 - All from CEA (the European insurance and
reinsurance federation)
11Calibration of parameters results for d
For LU, RO and HU the value is only based on the
number of companies available as all other
information is missing
12Calibration of parameters LGD and EAD
- For the loss given default LGD 15
- the 30-days and emergence recovery rates on loans
to insurance companies are, respectively, 65 and
100 (Fitch Ratings 2009) - also in line with the choice made in the Oxera
report (Oxera 2007) - Extension can be considered to depend on a or
even to be stochastic - The total exposure at default EAD
- Can be considered to be the best available
estimate of liabilities towards policyholders,
claimants and beneficiaries - This can be put equal to the Technical
Provisions (TP) - BUT we should include the fact that, in case of
default this could be due to a miscalculation of
the risk margins - Include additional terms proportional to the
Solvency capital requirements
13Calibration of EAD
- Result
- Where
- are the adjusted technical provisions
at the current date - is the solvency capital requirement
at the current date - is the ratio of the solvency capital
requirement for market risk to the total of all
components (Operational risk, Counterparty risk,
Market risk, and underwriting risk in the
non-life, life and health sector) of the SCR - Data used is obtained from CEIOPS and CEA
- Note adjusted TP refers to correction from
Solvency I to Solvency II
14EAD- home state principle, full coverage
Country EAD Total gross premiums written Country EAD Total gross premiums written
Country (m) (m) Country (m) (m)
Austria 58,188 7,141 Latvia 83 53
Belgium 168,163 22,179 Lithuania 525 204
Bulgaria 203 120 Luxembourg 76,571 10,093
Cyprus 2,717 358 Malta 1,293 214
Czech Republic 6,544 2,034 Netherlands 266,317 26,437
Denmark 118,090 13,190 Poland 17,059 6,743
Estonia 509 118 Portugal 40,297 9,205
Finland 37,099 2,784 Romania 781 415
France 1,189,627 136,528 Slovakia 2,299 848
Germany 765,180 75,170 Slovenia 2,041 443
Greece 7,630 2,504 Spain 164,938 23,455
Hungary 5,282 2,017 Sweden 191,510 12,985
Ireland 147,444 37,563 United Kingdom 2,034,005 305,184
Italy 389,126 61,438
The results depends heavily the market covered,
types of contracts covered and size of coverage
15Results I Share of portfolio lost
Expected 75.0 95.0 99.0 99.5 99.9
Min 0.1 0.02 0.36 1.16 1.61 3.05
Median 0.1 0.06 0.44 1.49 2.22 4.71
Max 0.1 0.09 0.44 1.98 3.39 8.85
16Results II Losses as share of total premium
Expected 75 95 99 99.50 99.90
Min 0.02 0.01 0.09 0.35 0.50 0.99
Median 0.09 0.04 0.39 1.31 1.91 3.77
Max 0.22 0.14 0.98 3.49 5.52 12.80
Weighted average 0.10 0.08 0.50 1.52 2.21 4.47
17Position of an historical loss
Insolvency of Mannheimer Lebenversicherung 2003,
Germany amounted to 100m or 0.13 of the total
premiums
18Comparison with existing funds
Life Life Life Life Life Life
Latvia Malta() France Germany Germany Romania
Actual fund size (OXERA, latest available figures) (in m) Actual fund size (OXERA, latest available figures) (in m) 0.8 (1) 2.33 (2) 569 (4) 640 (2) 136 (3) 17.1 (3)
The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters The model used in this study would produce results identical to the actual fund size with the following parameters
?0.2, LGD15, PD 0.1 then a 99.85 98.36 92.80 96.33 81.64 100.00
?0.2, LGD15, PD0.5 then a 98.55 89.93 67.99 77.15 44.24 99.97
?0.2, LGD45, PD 0.1 then a 99.15 94.62 81.38 63.32 63.32 99.96
?0.2, LGD45, PD 0.5 then a 94.49 77.39 45.94 53.99 24.00 98.96
?0.2, a 90, LGD15 then PD 2.35 0.50 0.14 0.05 0.05 6.11
?0.2, a 90, LGD45 then PD 0.89 0.19 0.05 0.02 0.02 1.91
?0.2, a 90, PD0.1 then LGD 662.41 95.84 20.97 7.52 7.52 922.67
?0.2, a 90, PD0.5 then LGD 89.32 14.88 3.77 1.40 1.40 172.03
Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data Notes ()IGS funding needs for Malta are estimated based on the host state principle, as Malta employs a pure-host IGS, (1) 2006 data (2) target fund size as given for 2008 (3) actual funds 2008 data (4) 2007 data
19Conclusions
- Simple single factor model to assess loss
distribution of IGS is presented - Propose calibration of parameters using public
data - Take into account Solvency II capital
requirements - Apply it to EU life insurance sector
- Average fund size of respectively 0.50 and 1.52
of gross premiums written would be sufficient to
assure adequate coverage in 95 and 99 of all
years - Current IGS in place keep funds which are
consistent with our results