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Results of BBA/ISDA/RMA IRB Validation Study

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Title: Results of BBA/ISDA/RMA IRB Validation Study


1
Results of BBA/ISDA/RMA IRB Validation Study
  • BBA/ISDA/RMA
  • Advanced IRB Forum
  • Monika Mars
  • London - June 23, 2003

2
Agenda
  • Survey Approach Participants
  • Background Use of Ratings
  • Survey Findings
  • Conclusions and Implications

3
Survey Approach
Survey research and design
4th Quarter 2002
Data collection,and analysis
Jan Feb 2003
Interviews
Feb Mar 2003
1st Draft Mid March 2003 Final Report Draft
early May
Reportpreparation
Reportpresentation
June 19/23
4
Survey responses covered all asset classes
representing a diverse group of institutions
5
Agenda
  • Survey Methodology Participants
  • Background Use of Ratings
  • Survey Findings
  • Conclusions and Implications

6
Internal ratings are key to managing the business
at most firms
7
Most banks use Master Scales to compare ratings
information across portfolios
8
Default definitions, time horizons and alignment
to external sources vary among institutions
  • The definition of default is not in all cases in
    line with the BASEL II definition this is
    particularly the case for retail portfolios
  • Time horizons of one year are most common,
    however the estimate of a 1-year PD might be
    based on a multiyear sample
  • Some banks use more than one year as a time
    horizon while a few use less than a one year time
    horizon to estimate PD
  • A small number of banks estimate PDs over the
    life of the loan
  • Most participants align a majority of their
    ratings in the corporate asset class to an
    external source, while the majority dont do this
    in the retail asset class

9
Agenda
  • Survey Methodology Participants
  • Background Use of Ratings
  • Survey Findings
  • Conclusions and Implications

10
Key Findings
  • Banks employ a wide range of techniques for
    internal ratings validation
  • Ratings validation is not an exact science
  • Expert judgment is of critical importance in the
    process
  • Data issues are centred around quantity not
    quality
  • Regional differences exist with respect to the
    validation of internal ratings
  • Defining standards for stress testing requires
    additional work

11
Banks employ a wide range of techniques to
validate internal ratings - key differences exist
between corporate and retail ratings
  • Corporate Asset Class
  • Statistical models where the quantity of default
    data allows for strong estimation (particularly
    in middle market)
  • Expert judgment models for portfolios where
    default data is limited
  • Hybrid and/or Vendor models to complete the
    picture
  • Retail Asset Class
  • Statistical models are heavily relied upon due to
    the greater availability of internal data history

12
A variety of model types are employed within each
asset class
Model Type Corporate Middle Market Retail
Statistical 7 4 23
Expert Judgement 15 11 8
External Vendor 7 2 17
Hybrid 10 7 5
13
Models for bank and sovereign exposures
extensively use external information and expert
judgement
  • Ratings for bank exposure are mostly derived by
    benchmarking against external ratings as well as
    using expert judgment or hybrid models
  • Ratings for sovereign exposures are similarly
    derived by benchmarking against external ratings
    as well as using expert judgment
  • Published default statistics are used for PD
    estimation for both bank and sovereign exposures

14
Most banks surveyed have a rating system for
specialised lending in place but face major
issues in its validation
  • A common theme is the lack of default data
  • Validation issues specific to specialised
    lending include
  • differentiation of borrower and transaction,
  • definition of default (particularly the
    restructuring clause),
  • inconsistent data history,
  • and the time horizon of the model

15
Rating validation is not an exact science
  • Even with the use of statistical techniques to
    assess model performance absolute triggers and
    thresholds are not used
  • There is no absolute KS statistic, GINI
    coefficient, COC or ROC measure that models need
    to reach to be considered adequate
  • Default statistics published by the major rating
    agencies are used differently from bank to bank
    depending on each banks assessment of the most
    appropriate use of the external data
  • Benchmarking against external ratings raises many
    issues including the unknown quality of
    external ratings, methodology differences, and
    the like

16
The performance of statistical rating models is
achieved through a number of different techniques
17
Different triggers are used to evaluate the
overall performance of expert judgement rating
models
18
A variety of techniques are employed for
evaluating vendor models
19
Expert judgement is essential in the validation
process
  • Data scarcity prevents the use of statistical
    models for some asset classes corporate, bank,
    sovereign, and specialised lending
  • Most respondents use judgemental overlay by
    rating experts (account officer, credit analyst)
    to confirm or modify the risk rating output of
    their assessment model (statistical, hybrid,
    vendor)
  • Large proportions of banks exposures are covered
    by expert-judgment type rating systems

20
Most data issues centre around quantity of data
available not the quality of the data
  • Most banks surveyed have initiated projects to
    collect the necessary data in a consistent manner
    across the institution to allow for statistical
    modelling in the future
  • The quantity of default data around large
    corporate, bank, sovereign, and specialised
    lending exposure classes is a real problem for
    most institutions
  • Institutions have begun data pooling initiatives
    for PD and LGD data, however there is scepticism
    as to whether these measures will solve the data
    quantity problem

21
Clear regional differences exist with regard to
internal ratings for corporate assets and their
validation
  • Expert judgment models are used for large
    corporate portfolios, however the structure of
    the ratings differ significantly
  • In North America fixed weightings are not
    assigned for the factors to be assessed by the
    experts
  • In Europe specific weights for each factor are
    often set
  • Models based on equity market information (KMV)
    or balance sheet information (Moodys RiskCalc)
    are used for corporate and middle market
    portfolios
  • In North America, these models tend to be an
    integral part of the rating and are used in
    conjunction with expert judgment in a hybrid
    approach
  • In Europe, these models are more likely to be
    used as a benchmark or a validation of the
    internal rating model

22
Similar differences can be observed for the
retail asset class
  • Statistical (scorecard) techniques for retail
    exposures tend to be product specific in the US
    and UK, while in Continental Europe the focus is
    on customer scores/ratings
  • US and UK scorecards are redeveloped more often
    than those on Continental Europe, where
    robustness of ratings and long-term stability
    factors are of higher priority
  • This often has direct implications for
    validation, as longer term more stable models
    tend to show for example - lower GINIs than
    models using the latest available data

23
More work needs to be done in defining standards
for stress testing
  • There is currently no uniform approach regarding
    the type of stress testing undertaken, its
    frequency, or actions taken in response to stress
    testing results
  • At the moment, stress testing is performed on the
    portfolio level with risk ratings being a key
    input in stress testing scenarios for economic
    capital requirements
  • There is uncertainty around BASEL II requirements
    with respect to stress testing of rating model
    inputs and also considerable debate as to its
    usefulness

24
Agenda
  • Survey Methodology Participants
  • Background Use of Ratings
  • Survey Findings
  • Conclusions and Implications

25
The industry, regulators and other stakeholders
must continue a dialogue to address Basel II
implementation issues
  • Recognition of different techniques for
    validating internal rating systems no one
    right method
  • Increased debate and guidance with respect to
    validation of expert judgement based rating
    systems
  • Recognition of regional / cultural differences as
    they impact internal ratings and the consequences
    for validation
  • Guidance on requirements for the use of pooled
    data
  • Additional discussion and clarification with
    respect to stress testing requirements

26
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