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Credit Risk: Individual Loan Risk Chapter 11

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Title: Credit Risk: Individual Loan Risk Chapter 11


1
Credit Risk Individual Loan Risk Chapter 11
  • Financial Institutions Management, 3/e
  • By Anthony Saunders

2
Evaluation of Credit Risk
  • Popular press attention to junk bonds and LDC
    loans. More recently, credit card loans and auto
    loans.
  • In mid-90s, improvements in NPLs for large banks.
  • New types of credit risk related to loan
    guarantees and off-balance-sheet activities.
  • Increased emphasis on credit risk evaluation.

3
Types of Loans
  • CI loans secured and unsecured
  • Spot loans, Loan commitments
  • Decline in CI loans originated by commercial
    banks.
  • RE loans primarily mortgages
  • mortgages can be subject to default risk when
    loan-to-value declines.
  • Individual (consumer) loans personal, auto,
    credit card.

4
Return on a Loan
  • Factors interest payments, fees, credit risk
    premium, collateral, other requirements such as
    compensating balances and reserve requirements.
  • Return inflow/outflow
  • k (f (L M ))/(1-b(1-R))
  • Expected return E(r) p(1k)

5
Lending Rates and Rationing
  • At retail Usually a simple accept/reject
    decision rather than adjustments to the rate.
  • Credit rationing.
  • If accepted, customers sorted by loan quantity.
  • At wholesale
  • Use both quantity and pricing adjustments.

6
Measuring Credit Risk
  • Qualitative models borrower specific factors are
    considered as well as market or systematic
    factors.
  • Specific factors include reputation, leverage,
    volatility of earnings, covenants and collateral.
  • Market specific factors include business cycle
    and interest rate levels.

7
Credit Scoring Models
  • Linear probability models Z XB residuals.
    Statistically unsound since the Zs obtained are
    not probabilities at all.
  • Since superior statistical techniques are
    readily available, little justification for
    employing linear probability models.
  • Logit models overcome this weakness using a
    transformation (logistic function).
  • Other alternatives include Probit and other
    variants with nonlinear indicator functions.

8
Altmans Linear Discriminant Model
  • Z1.2X1 1.4X2 3.3X3 0.6X4 1.0X5
  • Critical value of Z 1.81.
  • X1 Working capital/total assets.
  • X2 Retained earnings/total assets.
  • X3 EBIT/total assets.
  • X4 Market value equity/ book value LT debt.
  • X5 Sales/total assets.

9
Linear Discriminant Model
  • Problems
  • Only considers two extreme cases (default/no
    default).
  • Weights need not be stationary over time.
  • Ignores hard to quantify factors including
    business cycle effects.
  • Database of defaulted loans is not available to
    benchmark the model.

10
Term Structure Based Methods
  • If we know the risk premium we can infer the
    probability of default. Expected return equals
    risk free rate after accounting for probability
    of default.
  • p (1 k) 1 i
  • May be generalized to loans with any maturity or
    to adjust for varying default recovery rates.
  • The loan can be assessed using the inferred
    probabilities from comparable quality bonds.

11
Mortality Rate Models
  • Similar to the process employed by insurance
    companies to price policies. The probability of
    default is estimated from past data on defaults.
  • Marginal Mortality Rates
  • MMR1 (Value Grade B default in year 1)
    (Value Grade B outstanding yr.1)
  • MMR2 (Value Grade B default in year 2)
    (Value Grade B outstanding yr.2)

12
RAROC Models
  • Risk adjusted return on capital. This is one of
    the more widely used models.
  • Incorporates duration approach to estimate worst
    case loss in value of the loan
  • DL -DL x L x (DR/(1R)) where DR is an
    estimate of the worst change in credit risk
    premiums for the loan class over the past year.
  • RAROC one-year income on loan/DL

13
Option Models
  • Employ option pricing methods to evaluate the
    option to default.
  • Used by many of the largest banks to monitor
    credit risk.
  • KMV Corporation markets this model quite widely.

14
Applying Option Valuation Model
  • Merton showed value of a risky loan
  • F(t) Be-it(1/d)N(h1) N(h2)
  • Written as a yield spread
  • k(t) - i (-1/t)lnN(h2) (1/d)N(h1)
  • where k(t) Required yield on risky debt
  • ln Natural logarithm
  • i Risk-free rate on debt of equivalent maturity.

15
CreditMetrics
  • If next year is a bad year, how much will I lose
    on my loans and loan portfolio?
  • VAR P 1.65 s
  • Neither P, nor s observed.
  • Calculated using
  • (i)Data on borrowers credit rating (ii) Rating
    transition matrix (iii) Recovery rates on
    defaulted loans (iv) Yield spreads.

16
Credit Risk
  • Developed by Credit Suisse Financial Products.
  • Based on insurance literature
  • Losses reflect frequency of event and severity of
    loss.
  • Loan default is random.
  • Loan default probabilities are independent.
  • Appropriate for large portfolios of small loans.
  • Modeled by a Poisson distribution.
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