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ITWG
The LDA-based Advanced Measurement
Approach for Operational Risk
– Current and In Progress Practice
RMG Conference
May 29, 2003
ABN AMRO ING
Banca Intesa JP Morgan Chase
BNP Paribas RBC Financial Group
BMO Financial Group Royal Bank of Scotland
Crédit Lyonnais San Paolo IMI
Citigroup Sumitomo Mitsui BC
Deutsche Bank
ITWG
Objective: Propose solutions for key challenges in
implementing a credible LDA-based AMA
• ITWG is an independent group of operational risk professionals from
leading global financial institutions around the world interested in
sharing ideas on the measurement and management of operational risk
• Ideas shared here are those of the individual participants, and are not
necessarily endorsed by their institutions
• Ideas presented here are supported by a companion paper, which gives
a more complete treatment of the challenges raised here as well as
provides an overview of what participant banks view as “implemented
practice” today
• ITWG members believe that loss data is the foundation of the LDA
based AMA approach, and this premise underlies all our work
• Our objective in this presentation is to present some of the key
challenges in creating a credible loss distribution, incorporating the
four elements of the AMA required by Basel regulators
ITWG Elements of an LDA based AMA approach
Adjust
aggregated
loss
distribution
for scenario
distribution
(#2)
Internal
Loss Data
Sufficient?
Insufficient?
External
Data
Scenario Analysis
# 1
(Data
Supplementation)
Credible historical
Loss Data
internal
external
scenarios
Frequency
and Severity
Distribution
Adjust
Frequency
and Severity
Distribution
for scenario
data (#2)
Adjust
capital
directly for
factors score
(#2)
Calculate
aggregated
loss
distribution
Determine
capital
Calculate
aggregated
loss
distribution
Stress test
results
(scenario
analysis
#3)
Forward Looking Element
The Loss Distribution Approach
•Loss Experience
•Internal
•External
•Scenario Analysis (Generated)
•Business and Control Environment
ITWG Is Internal Data sufficient?
For A Poisson Distribution 1082 individual data points are required to obtain an estimate of the expected loss within a 5% error and with 90%
confidence
Source:An introduction to credibility theory, Longley Cook : Casualty Actuarial Society
Confidence
27138466410%
4816831,1807.5%
1,0821,5372,6565%
4,3266,14710,6232.5%
90%95%99%Error
Number of Losses Required
Frequency
Severity
NA
Don’t Care
Standard curve fitting techniques Many alternative non statistical techniques
ITWG How 7 Banks Have Solved These Issues
• an internal loss driven variation ->
Credit Lyonnais-
• an actuarial driven variation -
>Citigroup-
• an actuarial rating driven variation
->BMO-
• An external loss and Scorecard driven
variation -> ING-
• A scenario driven variation -> Intesa
• A Methodology For Incorporating
Bank-Specific Business Environment
and Internal Control Factors->
ABNAMRO
• A Bootstrapping Methodology ->
Sumitomo Mitsui BC
All are based on the same foundations, however there is variation in
emphasis of the components
ITWG
An Internal Loss Based Approach
ITWG
QUALITY
OF INTERNAL
CONTROL
ECONOMIC
CAPITAL
by business line
INSURANCE
MITIGATION
FACTOR
DIVERSIFICATION
AMA at Crédit Lyonnais - Overview
Gross Economic
Capital
(by event type)
Net Economic
Capital
(by event type)
Quantification (LDA) Business &
Control
Environment (in
progress)
ITWG Quantification 1/2
Severity
Frequency
Gross economic capital by
event type
Monte-Carlo
simulation
Calculation of gross economic capital by event type
Damage to physical assets CaR1
Business disruption and system failures CaR2
Execution, delivery and process management CaR3
Employment practices and workplace safety CaR4
Clients, products and business practices CaR5
Internal fraud CaR6
External fraud CaR7
_____
Total Gross Economic Capital
Severity
External Data
Internal loss
data
4 year history
Inprogress
Adjust severity & frequency
distribution
ITWG
Quantification 2/2
Methodologies available at http://gro.creditlyonnais.fr
• Standard Actuarial-like Model with:
– Frequency of events => Poisson
– Severity => Log-Normal
– Economic Capital is computed from a Monte-Carlo based engine
• Economic capital (EL + UL) computed with a one-year time horizon and
99.9 % percentile
• Data collection threshold = 1 k €
• Treatment of aggregated losses
• Adjustment of frequency and severity distributions
• Diversification with subjective estimates of correlation
• Insurance reduction by event type based on policy coverage and recovery
history
• Supplementation with external data
• Confidence Interval of CAR estimate
• « Worst case » quantification
ImplementedInprogress
ITWG Internal Control Environment
Internal Control
Self Assessment
tool (VIGIE)
Business line /
unit level
 Each unit gets today a rating combining qualitative indicators (e.g action plan follow up)
and “quantitative” indicators (average score of internal control)
 This rating will be used as a key in the economic capital allocation process so that well
rated B.L / units are rewarded with a reduction of economic capital
Unit 1 80
Unit 2 70
Unit 3 85
Unit 4 88
Business
lines
- Units
Quality of self
assessment
Action plan follow
up
Internal control
score
ITWG
An Actuarial Approach
ITWG End State:
Adjusted Loss Distribution Approach
• Simulate an aggregate potential loss distribution for operational risk
using an actuarial method
• Drivers of the simulation model include:
• Probability distribution for N events [Frequency]
• Potential loss distribution given an event [Severity]
• These are obtained by fitting empirical loss data
• Economic Capital requirements are calculated as the difference between
the expected loss level and the potential loss level:
• At the target confidence level [99.XX%]
• Over the defined time horizon [1 year]
• Split by business line and (if possible) by risk category
• Adjust for quality
• Calculate a correlated sum across business lines and risk types
• Full implementation depends on a robust data set, the collection of
which is well underway
ITWG Adjustments to Baseline Capital
• Quality Adjustment Factor (QAF) is a function of Audit information:
– Risk Level
– Number of Business Issues
– Severity of Business Issues
– Number of days resolution is past due
• Control Quality Indicator under development will be a function of:
– Quality Adjustment Factor
– Qualitative data on business risk and control self-assessment
– Key Risk Indicators
– Scorecard methodology
ITWG Interim State: Placeholder Approach
• Implemented interim approach for use during current data collection
phase
• Assessed potential losses due to unexpected operational loss events
using external historical loss data
• Based initial capital figures on largest relevant loss events for each line
of business, with some adjustments
• The simple total was then allocated according to the size of the business
(Revenue) and its risk and control environment (Qualitative Adjustment
Factor)
• Each period, the allocation is adjusted as a function of the square root
of the change in size of the business and the change in the QAF
• Correlated sum is calculated across all business lines and risk types
• End result provides sound simple estimate of the “worst case” loss,
reflects assumptions of relatively low correlation for operational risk,
and moves up or down every period based on factors under the control
of the business
ITWG
An Actuarial Rating Approach
ITWG Op Risk Identification Framework
Implemented
For high frequency low severity losses
• an internal loss data approach ie credit card and other retail fraud
For low frequency high severity losses
• a scenario based approach for estimating expected frequency and
severity
•Estimates of frequency tend to be highly unstable ie dependent on
respondent
Developing
Negotiating with two potential partners to develop an operational
risk rating approach
ITWG Measurement Methodology for Op VaR
LOBLOB
Exposures
Loss experience
Business and Control
Environment (KRD)
Activities
X
X
X
X
X
X
X
Loss Types
RiskClass
Loss Types
RiskClass
PE,LGE, γ
Rating
Classes
Methodology
Calibrating of
op risk classes
PE, lGE
Loss Type
definitions
Reg Lob
definition
Reg
LoB
Analysis
Reporting
CaR
Methodology and CalibrationMeasurement
Lob Mapping
process
Rating
Classes
Process
Parameter
Adjustment
ITWG Calibration for Op VaR
External
Dependencies
Regulatory Metric
Legal Metric
Market Metric
Outsourcing Metric
Property metric
Technology
Complexity Metric
Stability Metric
Concentration Metric
Security Metric
Integration Metric
Backup Site Metric
Process
Complexity Metric
Automated Metric
Concentration Metric
Change Metric
Capacity Metric
People
Experience metric
Availability metric
Concentration metric
Capacity metric
Key Risk Drivers
Industry
Loss
Experience
Industry
Loss
Experience
Industry
Scenario
Industry
Scenario
0%
5%
10%
15%
20%
25%
30%
35%
$0 $200 $600 $1,000 $1,400 $1,800 More
LR
Industry loss Distribution
0%
5%
10%
15%
20%
25%
30%
35%
$0 $200 $600 $1,000$1,400$1,800More
LR10
0%
5%
10%
15%
20%
25%
30%
35%
$0$200 $600 $1,000$1,400$1,800More
LR3
0%
5%
10%
15%
20%
25%
30%
35%
$0$200 $600 $1,000$1,400$1,800More
LR2
0%
5%
10%
15%
20%
25%
30%
35%
$0$200 $600 $1,000$1,400$1,800More
LR1
N Industry loss Distribution
KRD10
KRD3
KRD1
KRD2
Loss Types
RiskClass
PE,LGE, γ
Calibration
KRDs
Rating
Classes
Methodology
Calibrating of
op risk classes
PE, lGE
Loss Type
definitions
Reg Lob
definition
ITWG
A Scenario Based Approach
ITWG The AMA approach in Intesa
Quantitative
Analysis
Qualitative
Analysis
“Hidden”
Risk
Validation
Factor
Gross
CaR
Mitigation Net CaR
Bayesian LDA
LDA based Self Risk Assessment
The Intesa Internal Model approach is designed to take into account all of the main
components and analysis methods, and also to allow for the fact that a method may
complement or substitute another or be used as a supplement. The use of all the
components is key to ensuring a better understanding of the phenomenon
The Model principally relies on two "tracks": quantitative and qualitative analysis
and is designed to use both of them according to relevance and quality
ITWG
StructureInput Output
Subjective estimate of
“average frequency”
Subjective estimate of
“worst case”
Expected Loss
Point Estimate
&
Confidence Interval
Subjective estimate of
“average severity”
Cutoff (GI)
More accurate ranges of average severity & WC
MITIGATIONRM CHECKALERTOK
Rating
A B C D
Capital at Risk (CaR) Map
frequency
severity
CaR
Unexpected Loss
Point Estimate
&
Confidence Interval
Overview of the LDA based SRA approach
ITWG
The goal is to evaluate each BU’s Risk profile:
Risk is the combination of magnitude and
probability of potential total loss over a given
time horizon.
Potential total loss over a given time horizon is
described by the severity of a single loss event
and the frequency of events
The scenario forms are divided into sections
(Risk Factors) We have identified 9 risk
factors (critical resources which could be
exposed to threats)
Execution Phase – Self Risk Assessment
The scenario forms (questionnaires) are
distributed by an Intranet based (Java)
assessment tool (GAS) developed in-
house with on-line help
Each questionnaire refers to a part of the
organisation based on the Intesa organisational
mapping. The Head of each Division or
department executes the assessment annually
O rg a n iz a tio n a l M a p p in g
U n ità d i s u p p o rto
U n ità d i B u is n e s s 1 U n ità d i B u s in e s s 2 U n ità d i B u s in e s s 3 U n ità d i B u s in e s s n
G ru p p o In te s a
ITWG There are a number of ways to
qualitatively validate scenario results
 Results should be reviewed to ensure consistency with other sources of
data e.g. against input data and also against boundary conditions such
as the value of a property for a fire scenario
 Scenarios should also be crosschecked to ensure they are directionally
correct, broadly consistent with each other and that there is no double
counting of risks.
 These validation exercises can be done by an independent op risk
function and/or audit and/or other central functions and/or by peer
review.
ITWG
An External Loss and Scorecard Based Approach
ITWG
The 4 Operational Risk principles
– If the world gets riskier, the business units need more economic capital
– If a business unit’s size increases, so does its capital
– If the business of a business unit is more complex, it needs more capital
– If the level of control of a business unit is lower, it needs more capital
ITWG
External
incidents data
Operational
size
Scorecard 2
Incidents
Data Collection
Scorecard 1
R&CSA
Inherent risk
Scorecard 3
Key Risk
Indicators
Scorecard 5
Audit findings
Action tracking
Scorecard 4
ORM
Governance
Generic OR
Calculation
Specific OR
Calculation
Operational Risk
Capital
Operational Risk Management
will become an investment
instead of a cost
Capital Framework
ITWG
Risk management process: Risk focus: Risk mgt tool:
1. Operational risk oversight: managed risk ORC committee
2. Earlier detection: undetected risk R&CSA process
3. Understanding risk costs: materialized risk Incidents reporting
4. Tight monitoring: monitored risk KRI reporting
5. Action-tracking: mitigated risk AO Scan tracking
6. Risk management incentives: managed risk Scorecards
Key components of operational risk management approach
ITWG
A Methodology For Incorporating Bank-Specific Business Environment
and Internal Control Factors
ITWG How to incorporate expectations?
• Historic loss data is the foundation. However, historic loss data is not
an adequate predictor of future losses, unless there are no changes in
the business and control environment
• Historic internal loss data is enriched using external loss data (through
benchmarking and scenario analysis)
• Parametric distributions are derived via fitting to empirical loss
distribution curves
• Changes in the business and control environment should be captured
as part of the methodology -> Control Environment Assessment
(CEA)
• Management has the best insight in the current and future situation of
its own business -> Statement of Expectations (SoE)
ITWG The Statement of Expectations
• The SoE gathers fair estimates of future operational risk loss events to
determine:
• Frequency of Events
» Severity of Events
• The SoE is used to determine new parameters for the empirical
frequency and severity distributions
• Management makes these estimates based on the CEA; an assessment
of the state and nature of the business and control environment and
expected changes therein
ITWG The Control Environment Assessment
• The CEA consists of:
– an analysis of historic loss data (internal and external)
– an analysis of other operational risk related data (e.g. accounting
data, audit data, output of ORM programmes)
– a trendwatch on the operational risk environment
– a statement on the level of risk control
• The CEAs will provide management with the necessary insight in the
business and control environment to complete
ITWG
Frequency
Severity
Aggregate Loss Distribution
Historic Loss
Data
Events
Parameters
Derived from
SoE; Supported
by CEA
Estimated Future
Loss events
Empirical Loss
Distributions
Convolution to Aggregate Loss Distribution
ITWG
A Bootstrapping Methodology
ITWG
“Smoothed Bootstrap Methodology”
(implemented)
 An intermediate solution between parametric distribution and non-parametric bootstrapping.
 Reflects both
– Internal loss data for calibrating the main body of the severity distribution, and
– External loss data or scenarios for calibrating the tail of the severity distribution.
Description Strength Weakness
Parametric Choosing a distribution and
estimating its parameters
Generates a potentially fat tail. Less powerful when parametric
assumptions are not met.
Non-
parametric
Sampling from the empirical
distribution
No parametric assumption
about the distributions and
parameters.
Does not generate a potentially fat
tail.
Smoothed bootstrap Generates a potentially fat tail without any assumptions about
distributions.
SMFG
ITWG
“Smoothed Bootstrap Methodology”
(implemented)
 Methodology of smoothing and sampling
– Instead of re-sampling directly from the empirical distribution, smooth it
first then the smoothed distribution is used to generate new samples.
(Monte Carlo method)
 The larger the bandwidth, the fatter the tail of the distribution.
Actual loss amount
loss amount
Kernel density function
loss amount
density
Smoothed Bootstrap
loss amount
density
bandwidth X-axis
Log
scale
SMFG
ITWG Smoothed Bootstrap Methodology”
(planned)
 Once the frequency and severity of the tail events are given by internal data,
external data or scenarios, the bandwidth can be determined.
 The frequency and severity of the tail events are described as “Extreme value X
during the N-year return period”
– X is a threshold that is exceeded once per N-year return period on
average.
 We get X and N by applying Gumbel distribution.
051015
0 5 10 15 20
Return period (year)
Extremevalue10^x
SMFG
ITWG Elements of an LDA based AMA approach
Adjust
aggregated
loss
distribution
for scenario
distribution
(#2)
Internal
Loss Data
Sufficient?
Insufficient?
External
Data
Scenario Analysis
# 1
(Data
Supplementation)
Credible historical
Loss Data
internal
external
scenarios
Frequency
and Severity
Distribution
Adjust
Frequency
and Severity
Distribution
for scenario
data (#2)
Adjust
capital
directly for
factors score
(#2)
Calculate
aggregated
loss
distribution
Determine
capital
Calculate
aggregated
loss
distribution
Stress test
results
(scenario
analysis
#3)
Forward Looking Element
The Loss Distribution Approach
•Loss Experience
•Internal
•External
•Scenario Analysis (Generated)
•Business and Control Environment
ITWG Conclusions
1. ITWG banks are using a variety of methods for determining operational risk capital
• The variety is in emphasis of various components not in fundamentals
2. ITWG banks use historical losses as the foundation for their AMA
3. A variety of methods have been developed for incorporating the change in the business and
control environment ie a forward looking element
4. How confident are we in the results? Sufficiently because they meet the ultimate test of
credibility: The results are used by management in running the bank
5. Much progress has been made in the last year and although much more needs to be developed,
it is more in the nature of improving rather than invention.
ITWG
END

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Operation var (ama) con0529e

  • 1. ITWG The LDA-based Advanced Measurement Approach for Operational Risk – Current and In Progress Practice RMG Conference May 29, 2003 ABN AMRO ING Banca Intesa JP Morgan Chase BNP Paribas RBC Financial Group BMO Financial Group Royal Bank of Scotland Crédit Lyonnais San Paolo IMI Citigroup Sumitomo Mitsui BC Deutsche Bank
  • 2. ITWG Objective: Propose solutions for key challenges in implementing a credible LDA-based AMA • ITWG is an independent group of operational risk professionals from leading global financial institutions around the world interested in sharing ideas on the measurement and management of operational risk • Ideas shared here are those of the individual participants, and are not necessarily endorsed by their institutions • Ideas presented here are supported by a companion paper, which gives a more complete treatment of the challenges raised here as well as provides an overview of what participant banks view as “implemented practice” today • ITWG members believe that loss data is the foundation of the LDA based AMA approach, and this premise underlies all our work • Our objective in this presentation is to present some of the key challenges in creating a credible loss distribution, incorporating the four elements of the AMA required by Basel regulators
  • 3. ITWG Elements of an LDA based AMA approach Adjust aggregated loss distribution for scenario distribution (#2) Internal Loss Data Sufficient? Insufficient? External Data Scenario Analysis # 1 (Data Supplementation) Credible historical Loss Data internal external scenarios Frequency and Severity Distribution Adjust Frequency and Severity Distribution for scenario data (#2) Adjust capital directly for factors score (#2) Calculate aggregated loss distribution Determine capital Calculate aggregated loss distribution Stress test results (scenario analysis #3) Forward Looking Element The Loss Distribution Approach •Loss Experience •Internal •External •Scenario Analysis (Generated) •Business and Control Environment
  • 4. ITWG Is Internal Data sufficient? For A Poisson Distribution 1082 individual data points are required to obtain an estimate of the expected loss within a 5% error and with 90% confidence Source:An introduction to credibility theory, Longley Cook : Casualty Actuarial Society Confidence 27138466410% 4816831,1807.5% 1,0821,5372,6565% 4,3266,14710,6232.5% 90%95%99%Error Number of Losses Required Frequency Severity NA Don’t Care Standard curve fitting techniques Many alternative non statistical techniques
  • 5. ITWG How 7 Banks Have Solved These Issues • an internal loss driven variation -> Credit Lyonnais- • an actuarial driven variation - >Citigroup- • an actuarial rating driven variation ->BMO- • An external loss and Scorecard driven variation -> ING- • A scenario driven variation -> Intesa • A Methodology For Incorporating Bank-Specific Business Environment and Internal Control Factors-> ABNAMRO • A Bootstrapping Methodology -> Sumitomo Mitsui BC All are based on the same foundations, however there is variation in emphasis of the components
  • 6. ITWG An Internal Loss Based Approach
  • 7. ITWG QUALITY OF INTERNAL CONTROL ECONOMIC CAPITAL by business line INSURANCE MITIGATION FACTOR DIVERSIFICATION AMA at Crédit Lyonnais - Overview Gross Economic Capital (by event type) Net Economic Capital (by event type) Quantification (LDA) Business & Control Environment (in progress)
  • 8. ITWG Quantification 1/2 Severity Frequency Gross economic capital by event type Monte-Carlo simulation Calculation of gross economic capital by event type Damage to physical assets CaR1 Business disruption and system failures CaR2 Execution, delivery and process management CaR3 Employment practices and workplace safety CaR4 Clients, products and business practices CaR5 Internal fraud CaR6 External fraud CaR7 _____ Total Gross Economic Capital Severity External Data Internal loss data 4 year history Inprogress Adjust severity & frequency distribution
  • 9. ITWG Quantification 2/2 Methodologies available at http://gro.creditlyonnais.fr • Standard Actuarial-like Model with: – Frequency of events => Poisson – Severity => Log-Normal – Economic Capital is computed from a Monte-Carlo based engine • Economic capital (EL + UL) computed with a one-year time horizon and 99.9 % percentile • Data collection threshold = 1 k € • Treatment of aggregated losses • Adjustment of frequency and severity distributions • Diversification with subjective estimates of correlation • Insurance reduction by event type based on policy coverage and recovery history • Supplementation with external data • Confidence Interval of CAR estimate • « Worst case » quantification ImplementedInprogress
  • 10. ITWG Internal Control Environment Internal Control Self Assessment tool (VIGIE) Business line / unit level  Each unit gets today a rating combining qualitative indicators (e.g action plan follow up) and “quantitative” indicators (average score of internal control)  This rating will be used as a key in the economic capital allocation process so that well rated B.L / units are rewarded with a reduction of economic capital Unit 1 80 Unit 2 70 Unit 3 85 Unit 4 88 Business lines - Units Quality of self assessment Action plan follow up Internal control score
  • 12. ITWG End State: Adjusted Loss Distribution Approach • Simulate an aggregate potential loss distribution for operational risk using an actuarial method • Drivers of the simulation model include: • Probability distribution for N events [Frequency] • Potential loss distribution given an event [Severity] • These are obtained by fitting empirical loss data • Economic Capital requirements are calculated as the difference between the expected loss level and the potential loss level: • At the target confidence level [99.XX%] • Over the defined time horizon [1 year] • Split by business line and (if possible) by risk category • Adjust for quality • Calculate a correlated sum across business lines and risk types • Full implementation depends on a robust data set, the collection of which is well underway
  • 13. ITWG Adjustments to Baseline Capital • Quality Adjustment Factor (QAF) is a function of Audit information: – Risk Level – Number of Business Issues – Severity of Business Issues – Number of days resolution is past due • Control Quality Indicator under development will be a function of: – Quality Adjustment Factor – Qualitative data on business risk and control self-assessment – Key Risk Indicators – Scorecard methodology
  • 14. ITWG Interim State: Placeholder Approach • Implemented interim approach for use during current data collection phase • Assessed potential losses due to unexpected operational loss events using external historical loss data • Based initial capital figures on largest relevant loss events for each line of business, with some adjustments • The simple total was then allocated according to the size of the business (Revenue) and its risk and control environment (Qualitative Adjustment Factor) • Each period, the allocation is adjusted as a function of the square root of the change in size of the business and the change in the QAF • Correlated sum is calculated across all business lines and risk types • End result provides sound simple estimate of the “worst case” loss, reflects assumptions of relatively low correlation for operational risk, and moves up or down every period based on factors under the control of the business
  • 16. ITWG Op Risk Identification Framework Implemented For high frequency low severity losses • an internal loss data approach ie credit card and other retail fraud For low frequency high severity losses • a scenario based approach for estimating expected frequency and severity •Estimates of frequency tend to be highly unstable ie dependent on respondent Developing Negotiating with two potential partners to develop an operational risk rating approach
  • 17. ITWG Measurement Methodology for Op VaR LOBLOB Exposures Loss experience Business and Control Environment (KRD) Activities X X X X X X X Loss Types RiskClass Loss Types RiskClass PE,LGE, γ Rating Classes Methodology Calibrating of op risk classes PE, lGE Loss Type definitions Reg Lob definition Reg LoB Analysis Reporting CaR Methodology and CalibrationMeasurement Lob Mapping process Rating Classes Process Parameter Adjustment
  • 18. ITWG Calibration for Op VaR External Dependencies Regulatory Metric Legal Metric Market Metric Outsourcing Metric Property metric Technology Complexity Metric Stability Metric Concentration Metric Security Metric Integration Metric Backup Site Metric Process Complexity Metric Automated Metric Concentration Metric Change Metric Capacity Metric People Experience metric Availability metric Concentration metric Capacity metric Key Risk Drivers Industry Loss Experience Industry Loss Experience Industry Scenario Industry Scenario 0% 5% 10% 15% 20% 25% 30% 35% $0 $200 $600 $1,000 $1,400 $1,800 More LR Industry loss Distribution 0% 5% 10% 15% 20% 25% 30% 35% $0 $200 $600 $1,000$1,400$1,800More LR10 0% 5% 10% 15% 20% 25% 30% 35% $0$200 $600 $1,000$1,400$1,800More LR3 0% 5% 10% 15% 20% 25% 30% 35% $0$200 $600 $1,000$1,400$1,800More LR2 0% 5% 10% 15% 20% 25% 30% 35% $0$200 $600 $1,000$1,400$1,800More LR1 N Industry loss Distribution KRD10 KRD3 KRD1 KRD2 Loss Types RiskClass PE,LGE, γ Calibration KRDs Rating Classes Methodology Calibrating of op risk classes PE, lGE Loss Type definitions Reg Lob definition
  • 20. ITWG The AMA approach in Intesa Quantitative Analysis Qualitative Analysis “Hidden” Risk Validation Factor Gross CaR Mitigation Net CaR Bayesian LDA LDA based Self Risk Assessment The Intesa Internal Model approach is designed to take into account all of the main components and analysis methods, and also to allow for the fact that a method may complement or substitute another or be used as a supplement. The use of all the components is key to ensuring a better understanding of the phenomenon The Model principally relies on two "tracks": quantitative and qualitative analysis and is designed to use both of them according to relevance and quality
  • 21. ITWG StructureInput Output Subjective estimate of “average frequency” Subjective estimate of “worst case” Expected Loss Point Estimate & Confidence Interval Subjective estimate of “average severity” Cutoff (GI) More accurate ranges of average severity & WC MITIGATIONRM CHECKALERTOK Rating A B C D Capital at Risk (CaR) Map frequency severity CaR Unexpected Loss Point Estimate & Confidence Interval Overview of the LDA based SRA approach
  • 22. ITWG The goal is to evaluate each BU’s Risk profile: Risk is the combination of magnitude and probability of potential total loss over a given time horizon. Potential total loss over a given time horizon is described by the severity of a single loss event and the frequency of events The scenario forms are divided into sections (Risk Factors) We have identified 9 risk factors (critical resources which could be exposed to threats) Execution Phase – Self Risk Assessment The scenario forms (questionnaires) are distributed by an Intranet based (Java) assessment tool (GAS) developed in- house with on-line help Each questionnaire refers to a part of the organisation based on the Intesa organisational mapping. The Head of each Division or department executes the assessment annually O rg a n iz a tio n a l M a p p in g U n ità d i s u p p o rto U n ità d i B u is n e s s 1 U n ità d i B u s in e s s 2 U n ità d i B u s in e s s 3 U n ità d i B u s in e s s n G ru p p o In te s a
  • 23. ITWG There are a number of ways to qualitatively validate scenario results  Results should be reviewed to ensure consistency with other sources of data e.g. against input data and also against boundary conditions such as the value of a property for a fire scenario  Scenarios should also be crosschecked to ensure they are directionally correct, broadly consistent with each other and that there is no double counting of risks.  These validation exercises can be done by an independent op risk function and/or audit and/or other central functions and/or by peer review.
  • 24. ITWG An External Loss and Scorecard Based Approach
  • 25. ITWG The 4 Operational Risk principles – If the world gets riskier, the business units need more economic capital – If a business unit’s size increases, so does its capital – If the business of a business unit is more complex, it needs more capital – If the level of control of a business unit is lower, it needs more capital
  • 26. ITWG External incidents data Operational size Scorecard 2 Incidents Data Collection Scorecard 1 R&CSA Inherent risk Scorecard 3 Key Risk Indicators Scorecard 5 Audit findings Action tracking Scorecard 4 ORM Governance Generic OR Calculation Specific OR Calculation Operational Risk Capital Operational Risk Management will become an investment instead of a cost Capital Framework
  • 27. ITWG Risk management process: Risk focus: Risk mgt tool: 1. Operational risk oversight: managed risk ORC committee 2. Earlier detection: undetected risk R&CSA process 3. Understanding risk costs: materialized risk Incidents reporting 4. Tight monitoring: monitored risk KRI reporting 5. Action-tracking: mitigated risk AO Scan tracking 6. Risk management incentives: managed risk Scorecards Key components of operational risk management approach
  • 28. ITWG A Methodology For Incorporating Bank-Specific Business Environment and Internal Control Factors
  • 29. ITWG How to incorporate expectations? • Historic loss data is the foundation. However, historic loss data is not an adequate predictor of future losses, unless there are no changes in the business and control environment • Historic internal loss data is enriched using external loss data (through benchmarking and scenario analysis) • Parametric distributions are derived via fitting to empirical loss distribution curves • Changes in the business and control environment should be captured as part of the methodology -> Control Environment Assessment (CEA) • Management has the best insight in the current and future situation of its own business -> Statement of Expectations (SoE)
  • 30. ITWG The Statement of Expectations • The SoE gathers fair estimates of future operational risk loss events to determine: • Frequency of Events » Severity of Events • The SoE is used to determine new parameters for the empirical frequency and severity distributions • Management makes these estimates based on the CEA; an assessment of the state and nature of the business and control environment and expected changes therein
  • 31. ITWG The Control Environment Assessment • The CEA consists of: – an analysis of historic loss data (internal and external) – an analysis of other operational risk related data (e.g. accounting data, audit data, output of ORM programmes) – a trendwatch on the operational risk environment – a statement on the level of risk control • The CEAs will provide management with the necessary insight in the business and control environment to complete
  • 32. ITWG Frequency Severity Aggregate Loss Distribution Historic Loss Data Events Parameters Derived from SoE; Supported by CEA Estimated Future Loss events Empirical Loss Distributions Convolution to Aggregate Loss Distribution
  • 34. ITWG “Smoothed Bootstrap Methodology” (implemented)  An intermediate solution between parametric distribution and non-parametric bootstrapping.  Reflects both – Internal loss data for calibrating the main body of the severity distribution, and – External loss data or scenarios for calibrating the tail of the severity distribution. Description Strength Weakness Parametric Choosing a distribution and estimating its parameters Generates a potentially fat tail. Less powerful when parametric assumptions are not met. Non- parametric Sampling from the empirical distribution No parametric assumption about the distributions and parameters. Does not generate a potentially fat tail. Smoothed bootstrap Generates a potentially fat tail without any assumptions about distributions. SMFG
  • 35. ITWG “Smoothed Bootstrap Methodology” (implemented)  Methodology of smoothing and sampling – Instead of re-sampling directly from the empirical distribution, smooth it first then the smoothed distribution is used to generate new samples. (Monte Carlo method)  The larger the bandwidth, the fatter the tail of the distribution. Actual loss amount loss amount Kernel density function loss amount density Smoothed Bootstrap loss amount density bandwidth X-axis Log scale SMFG
  • 36. ITWG Smoothed Bootstrap Methodology” (planned)  Once the frequency and severity of the tail events are given by internal data, external data or scenarios, the bandwidth can be determined.  The frequency and severity of the tail events are described as “Extreme value X during the N-year return period” – X is a threshold that is exceeded once per N-year return period on average.  We get X and N by applying Gumbel distribution. 051015 0 5 10 15 20 Return period (year) Extremevalue10^x SMFG
  • 37. ITWG Elements of an LDA based AMA approach Adjust aggregated loss distribution for scenario distribution (#2) Internal Loss Data Sufficient? Insufficient? External Data Scenario Analysis # 1 (Data Supplementation) Credible historical Loss Data internal external scenarios Frequency and Severity Distribution Adjust Frequency and Severity Distribution for scenario data (#2) Adjust capital directly for factors score (#2) Calculate aggregated loss distribution Determine capital Calculate aggregated loss distribution Stress test results (scenario analysis #3) Forward Looking Element The Loss Distribution Approach •Loss Experience •Internal •External •Scenario Analysis (Generated) •Business and Control Environment
  • 38. ITWG Conclusions 1. ITWG banks are using a variety of methods for determining operational risk capital • The variety is in emphasis of various components not in fundamentals 2. ITWG banks use historical losses as the foundation for their AMA 3. A variety of methods have been developed for incorporating the change in the business and control environment ie a forward looking element 4. How confident are we in the results? Sufficiently because they meet the ultimate test of credibility: The results are used by management in running the bank 5. Much progress has been made in the last year and although much more needs to be developed, it is more in the nature of improving rather than invention.

Editor's Notes

  1. This is very much a work-in-progress
  2. <number> WE DECIDED TO AIM FOR LDA Credit: PD EAD * LGD Market:  F.S. External Internal NO CONTROL CONTROL
  3. <number> DETAILS LATER
  4. <number> Simulation was a reasonability check Scaling initially by REVENUE All this done by BUSINESS UNIT
  5. note that capital cannot be a boundary condition – in other words you can’t start with the max. capital you think you should hold and work backwards to see if the scenario results are reasonable
  6. Knowledge of BU interdependencies can facilitate more cost-effective risk management initiatives.
  7. <number>
  8. <number>