Credit Metrics

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Credit Metrics

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Title: Credit Metrics


1
Credit Metrics
  • Lecture Notes for FIN 653
  • Yea-Mow Chen
  • Department of Finance
  • San Francisco State University

2
I. Introduction
  • Introduced in 1997 by J P Morgan and its
    co-sponsors (Bank of America, Union Bank of
    Switzerland, etc.) as a value at risk (VAR)
    framework to apply to the valuation and risk of
    nontradable assets such as loans and privately
    placed bonds.
  • Credit-Metrics asks If next year is a bad year,
    how much will I lost on my loans and loan
    portfolio?

3
I. Introduction
  • With RiskMetrics we look at the market value or
    price of an asset and the volatility of that
    asset's price or return in order to calculate a
    probability (e.g., 5 percent) that the value of
    that asset will fall below some given value
    tomorrow.
  • In the case of RiskMetrics, this involves
    multiplying the estimated standard deviation of
    returns ? on that asset by 1.65 and then
    revaluing the current market value of the
    position (P) downward by 1.65?. That is, VAR for
    one day (or DEAR) is
  • VAR P 1.65 ?

4
I. Introduction
  • For loans, we observe neither P (the loan's
    market value) nor ? (the volatility of loan value
    over the horizon of interestassumed to be 1 year
    for loans and bonds under CreditMetrics).

5
I. Introduction
  • However, using
  • (l) available data on a borrower's credit rating,

  • (2) the probability of that rating changing over
    the next year (the rating transition matrix),
  • (3) recovery rates on defaulted loans, and
  • (4) yield spreads in the bond market
  • It is possible to calculate a hypothetical P and
    ? for any nontraded loan or bond and thus a VAR
    figure for individual loans and the loan
    portfolio.

6
I. Introduction
  • Rather than defining comparable firms using an
    equity-driven distance to default, CreditMetrics
    utilizes external credit rating. That is, the
    CreditMetrics model is built around a credit
    migration or transition matrix that measures the
    probability that the credit rating of any given
    debt security will change over the course of the
    credit horizon.

7
Three Steps in CreditMetrics Modeling of Credit
Risk
  • Step 1 estimate the credit exposure amount of
    each obligator in the portfolio
  • Step 2 calculate the volatility of value due to
    credit quality changes
  • Step 3 Calculate credit quality correlations and
    portfolio risk

8
Three Steps in CreditMetrics Modeling of Credit
Risk
9
Three Steps in CreditMetrics Modeling of Credit
Risk
10
Step 1 Estimating Credit Risk Exposure Amounts
  • Future cash flows at risk beyond the time horizon
    for products such as
  • Bonds ? face value
  • Loans ? face value
  • Receivables ?face amount
  • Letters of credit ?full nominal amount

11
Step 1 Estimating Credit Risk Exposure Amounts
  • Market-driven instruments
  • Swaps
  • Forwards

12
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • There are three steps
  • A/ Estimate the credit quality migrations
  • B/ Calculate the changes in value upon credit
    quality migration
  • C/ Construct the distribution of bond value

13
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Estimate credit quality migrations
  • Risk is due to default but also to changes in
    value
  • Upgrades
  • Downgrades
  • Transition matrices
  • Chance of default
  • Chance of migrating to other credit quality state

14
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Estimate credit quality migrations

15
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Calculate the changes in value upon credit
    quality migration
  • Two different types of revaluation
  • Revaluation in default
  • ? based on recovery rates
  • Revaluation upon upgrade / downgrade
  • ? driven by credit spread changes

16
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Based on recovery rates which depend on the
    seniority class of debt

17
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Straightforward present value revaluation

One year forward zero curves for each credit
rating ()
18
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Construct the distribution of bond value

19
Step 2 Compute the Volatility in Value Caused by
Credit Quality Changes
  • Construct the distribution of bond value

20
Step 3 Correlations
  • Estimating Credit Quality Correlations
  • Calculating Portfolio Risk

21
Step 3 Correlations
22
Step 3 Correlations
  • Rating outcomes of various obligors are
  • not independent
  • affected by same economic factors
  • Thus, measure of correlation is needed in
    addition to individual likelihoods

23
Step 3 Correlations
  • Approaches to Estimating Credit Quality
    Correlations
  • Actual Rating and Default Correlations
  • Bond Spread Correlations
  • Uniform Constant Correlation
  • Equity Price Correlation

24
Step 3 Correlations
  • Actual Rating and Default Correlations
  • Pro Derived from rating agencies data
  • Pro Provides an objective measure of actual
    experience
  • Con Suffers from sparse sample sets
  • Con Requires that identical treatment for
    obligors with given credit ratings

25
Step 3 Correlations
  • Bond Spread Correlations
  • Pro Provides most objective measure of actual
    correlation
  • Con Data quality problems, specifically for low
    credit quality users
  • Con Impossible in practice

26
Step 3 Correlations
  • Equity Price Correlations
  • Uses fluctuations in value of underlying firms
    assets as a prediction of firms ability to meet
    its obligations
  • Pro Provides forward-looking, efficient market
    information
  • Pro Offers advantage of time series
  • Con Require heavy processing to yield info
    about likely credit quality correlation

27
Step 3 Correlations
  • Equity Price Correlations

28
Step 3 Correlations
  • Equity Price Correlations
  • Volatility of asset values should directly
    predict chance of default by a firm
  • Positive correlation between asset returns of two
    firms directly implies positive correlation in
    default expectations

29
Step 3 Correlations
  • Equity Price Correlations
  • Creates a link between underlying firm value and
    firms credit rating

30
Step 3 Correlations
  • Firms can be related to one another via there
    common sensitivity to industry/country sectors

31
Step 3 Correlations
  • Obtaining a distribution of values for a
    portfolio of many bonds
  • A random sample of possible portfolio states is
    used to obtain the value distribution for a
    portfolio of many bonds

32
Step 3 Correlations
  • Obtaining a distribution of values for a
    portfolio of many bonds

33
Step 3 Correlations
  • Credit Risk Measures Output at the Portfolio
    Level
  • Standard Deviation
  • Percentile Levels
  • Marginal Risk Statistics

34
Example
  • Consider the example of a five-year fixed-rate
    loan of 100 million made at 6 percent annual
    interest. The borrower is rated BBB. What is
    the credit risk of this loan?

35
The Distribution of an Individual Loans Value
  • CreditMetrics evaluates each loans cash flows
    under eight possible credit migration
    assumptions, corresponding to each of eight
    credit ratings AAA, AA, . CCC, and default.
  • The loans value over the upcoming year is
    calculated under different possible scenarios
    over the succeeding year, e.g., the rating
    improves to AAA, AA, etc.
  • Historical data on publicly traded bonds are used
    to estimate the probability of each of these
    credit migration scenarios.
  • Putting together the loan valuations under each
    possible credit migration and their likelihood of
    occurrence, we obtain the distribution of the
    loans value. At this point, standard VaR
    technology may be utilized.

36
The Distribution of an Individual Loans Value
  • Based on historical data, it is estimated that
    the probability of a BBB borrower staying at BBB
    over the next year is 96.93 percent. There is
    also some probability that the borrower of the
    loan will be upgraded, and some probability that
    it will be downgraded or even default.

37
The Distribution of an Individual Loans Value
  • Table One-Year Transition Probability for
    BBB-Rated Borrower
  • Rating Transition Rating Transition
  • Probability Probability
  • ________________________________________
  • AAA 0.02 BB 5.30
  • AA 0.33 B 1.17
  • A 5.95 CCC 0.12
  • BBB 86.93 Default 0.18
  • ________________________________________

38
The Distribution of an Individual Loans Value
  • The migration process is modeled as a finite
    Markov chain, which assumes that the credit
    rating changes from one rating to another with a
    certain constant probability at each time
    interval.
  • The credit migration matrix can be estimated from
    historical experience as tabulated by rating
    agencies, from Merton options-theoretical default
    probabilities, from bank internal rating systems,
    or even from intensity-based models.

39
Valuation
  • Valuation
  • The effect of rating upgrades and downgrades is
    to impact the required credit risk spreads or
    premiums on loans and thus the implied market
    value (or present value) of the loan. If a loan
    is downgraded, the required credit spread premium
    should rise so that the present value of the loan
    to the FI should fall the reverse is true for a
    credit rating upgrade.

40
Valuation
  • Since we are revaluing the five-year 100
    million, 6 percent loan at the end of the first
    year after a credit event has occurred during
    that year, then
  • 6 6 6
    106
  • P 6 -------------- -----------------
    --------------- --------------
  • (1r1 s1) (1r2 s2)2 (1r3
    s3)3 (1r4 s4)4
  •   
  • where
  • ri the risk-free rates on T-bonds expected to
    exist one year, two years. and so on, into the
    future (i.e., they reflect forward rates from the
    current Treasury yield curve) and
  • si annual credit spreads for loans of a
    particular rating class of one year, two years,
    three years, and four years maturity (the latter
    are derived from observed spreads in the
    corporate bond market over Treasuries).

41
Valuation
  • In CreditMetrics, interest rates are assumed to
    be deterministic. Thus, the risk-free rates, ri,
    are obtained by decomposing the current spot
    yield curve in order to obtain the one-year
    forward zero coupon Treasury yield curve.
  • For example, if todays risk free spot rate were
    3.01 p.a. for 1 year maturity pure discount US
    Treasury securities, and 3.25 for 2 year
    maturities, then the forward risk-free rate
    expected one yr from now on 1-year US Treasury
    is
  • (1 0.0325)2 (1 0.0301) (1 r1)
  • which gives r1 3.5

42
Valuation
  • CreditMetrics obtains fixed credit spread si for
    different credit ratings from commercial firms
    such as Bridge Information Systems.
  • Using different credit spreads si for each loan
    payment date and the forward rates, we can solve
    for the end of year value of the loan that is
    upgraded from a BBB to an A rating within the
    next year
  • 6 6 6
    106
  • P 6 ----------- ---------------
    -------------- -------------
  • (1.0372) (1.0432)2 (1.0493)3
    (1.0532)4
  • 108.66

43
Valuation
  • Table 2 Value of the Loan at the End of 1 Year
    under Different Ratings
  • __________________________________________________
    ______Year-End Loan Value () Year-End Loan
    Value ()
  • Rating Including first Rating Including
    first
  • year coupon year coupon
  • __________________________________________________
    ______
  • AAA 109.37 BB 102.22
  • AA 109.19 B 98.10
  • A 108.66 CCC 83.64
  • BBB 107.55 Default 51.13
  • __________________________________________________
    ______

44
Valuation
  • Table 2 shows the value of the loan if other
    credit events occur. Note that the loan has a
    maximum market value of 109.37 (if the borrower
    is upgraded to AAA) and a minimum value of 51.13
    if the borrower defaults.
  • The distribution of loan values on the one-year
    credit horizon data can be drawn using the
    transition probabilities and the loan valuations.

45
Valuation
  • It is clear that the value of the loan is not
    symmetrically (or normally) distributed.
  • Thus CreditMetrics produces two VAR measures
  • 1. Based on the normal distribution of loan
    values
  • 2. Based on the actual distribution of loan
    values

46
Calculation of VaR
  • Assumed scenarios the 5 percent worst-case and
    the 1 percent worst-case scenarios.
  • The first step in calculating VAR is to calculate
    the mean of the loan's value, or its expected
    value, at year 1, which is 107.09. If next year
    is a bad year, how much can it expect to lose?
    We could define a bad year as occurring once
    every 20 years (the 5 percent VAR) or once every
    100 years (the 1 percent VAR).
  • Assuming that loan values are normally
    distributed, the variance of loan value around
    its mean is 8.9477 (squared) and its standard
    deviation or volatility is the square root of the
    variance equal to 2.99. Thus the 5 percent VAR
    for the loan is 1.65 2.99 4.93 million,
    while the 1 percent VAR is 2.33 2.99 6.97
    million.

47
Calculation of VaR
  • However, this is likely to underestimate the
    actual or true VAR of the loan because the
    distribution of the loan's value is clearly
    nonnormal. In particular, it demonstrates a
    negative skew or a long-tail downside risk.
    Using the actual distribution of loan values and
    probabilities, we can see from Table 11A3 that
    there is a 6.77 percent probability that the loan
    value will fall below 102.02, implying an
    "approximate" 5 percent actual VAR of over
    107.09 - 102.02 5.07 million, and that there
    is a 1.47 percent probability that the loan value
    will fall below 98.10, implying an "approximate"
    1 percent actual VAR of over 107.09 - 98.10
    8.99.

48
Calculation of VaR
  • Table 3 VaR Calculations for the BBB Loan

49
Calculation of VaR
  • Assuming Normal Distribution
  • 5 VAR 1.65 ? 4.93
  • 1 VAR 2.33 ? 6.97
  • Assuming Actual Distribution
  • 5 VAR 95 of actual distribution 107.09-
    102.02 5.07
  • 1 VAR 99 of actual distribution 107.09-
    98.10 8.99

50
Capital Requirements
  • For the example of a 10 million face value BBB
    loan, the capital requirements by the Federal
    Reserve and the BIS would be 8 million.
  • Using the 1 percent VAR based on the normal
    distribution, a capital requirement of 6.97
    million would be required, while using the 1
    percent VAR based on the iterated value from the
    actual distribution, a 14.80 million capital
    requirement would be required.

51
Capital Requirements
  • It should be noted that under the CreditMetrics
    approach every loan is likely to have a different
    VAR and thus a different implied capital
    requirement. This contrasts to the current BIS
    regulations, where all private sector loans of
    different ratings and different maturities are
    subject to the same 8 percent capital
    requirement. Thus, an important objective of the
    CrecitMetrics sponsors is to get regulators to
    move toward accepting "internal model" - based
    measures of capital requirements for credit risk
    similar to the way in which they have accepted
    internal model - based measures for market risk
    capital requirements.

52
The Value Distribution for a Portfolio of Loans
  • The major distinction between the single loan
    case and the portfolio case is the introduction
    of correlations across loans.
  • CreditMetrics solves for correlations by first
    regressing equity returns on industry indices.
  • The correlation between any pair of equity
    returns is calculated using the correlations
    across the industry indices.
  • Once we obtain equity correlations, we can solve
    for joint migration probabilities to estimate the
    likelihood that the joint credit quality of the
    loans in the portfolio will be wither upgraded or
    downgraded.
  • Finally, each loans value is obtained for each
    credit migration possibility.
  • The first two moments (mean and standard
    deviation) of the portfolio value distribution
    are derived from the probability-weighted loan
    values to obtain the normally distributed
    portfolio value distribution.
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