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GLOBAL ASSOCIATION OF RISK PROFESSIONALS
The GARP Risk Series
CREDIT RISK
MANAGEMENT
Chapter 1 | Credit Risk Assessment
• Distinguishing credit risk from market risk
• Credit policy and credit risk
• Credit risk assessment framework
• Inputs to credit models
Chapter Focus
2 of 30
Credit risk definition
• The potential for loss due to failure of a borrower to meet its contractual obligation to repay a
debt in accordance with the agreed terms
• Example: A homeowner stops making mortgage payments
• Commonly also referred to as default risk
• Credit events include bankruptcy, failure to pay, loan restructuring, loan moratorium,
accelerated loan payments
• For banks, credit risk typically resides in the assets in its banking book (loans and bonds held
to maturity)
• Credit risk can arise in the trading book as counterparty credit risk
• Market risk is the potential loss due to changes in market prices or values
• Assessment time horizon: typically one day
• Credit risk is the potential loss due to the nonperformance of a financial contract, or
financial aspects of nonperformance in any contract
• Assessment time horizon: typically one year
• Credit risk is generally more important than market risk for banks
• Many credit risk drivers relate to market risk drivers, such as the impact of market
conditions on default probabilities.
• Differs from market risk due to obligor behavior considerations
• The five “C’s” of Credit — Capital, Capacity, Conditions, Collateral, and Character
• Both credit and market risk models use historical data, forward looking models and
behavioral models to assess risks
Credit Risk vs. Market Risk
3 of 30
• Loans
• A contractual agreement that outlines the payment obligation from the borrower
to the bank
• May be secured with either collateral or payment guarantees to ensure a reliable
source of secondary repayment in case the borrower defaults
• Often written with covenants that require the loan to be repaid immediately if certain
adverse conditions exist, such as a drop in income or capital
• Generally reside in the bank’s banking book or credit portfolio
• Although banks may sell loans another bank or entity investing in loans
• Bonds
• A publicly traded loan — an agreement between the issuer and the purchasers
• Collateral support, payment guarantees, or secondary sources of repayment may all
support certain types of bonds
• Structuring characteristics that determine a bond investor’s potential recovery in
default
• Generally reside in the bank’s trading book
Credit Products — Loans vs. Bonds
4 of 30
1. Bank loans borrower $V
Understanding Credit Risk — A Simple Loan
5 of 30
Bank Borrower
2. Borrow repays loan across
time with periodic
payments
Contractually, how a loan should work:
1. Bank loans borrower $V
Understanding Credit Risk — A Simple Loan
6 of 30
Bank Borrower
2. Borrow fails to repay loan across time with
periodic payments
Credit risk arises because there is the possibility that the borrower will not repay the loan
as obligated
• Most familiar risk metric is often the adequacy of general and specific loan loss
provisions and the size of the general and specific loan loss reserve in relationship to
the total exposures of the bank
• Allowance for loan losses creates a cushion of credit losses in the bank’s credit portfolio
• Primarily intended to absorb the bank’s expected loan losses
• Historically credit decisions were made in a case by case basis
• Growing sophistication and automation of lending and the increasing complexity of
credit products have spawned the development of computational approaches to credit
assessment and evaluation of individual retail and commercial borrowers
• Introduction of bank-wide credit risk software has accelerated
• In part driven by regulatory pressures, as regulators demanded improved analysis
and oversight of the risk assessment process
Estimating Credit Losses
7 of 30
• Probability of Default (PD)
• The likelihood that the borrower will fail
to make full and timely repayment of
its financial obligations
• Exposure At Default (EAD)
• The expected value of the loan at the
time of default
• Loss Given Default (LGD)
• The amount of the loss if there is a
default, expressed as a percentage of
the EAD
• Recovery Rate (RR)
• The proportion of the EAD the bank
recovers
Estimating Credit Losses — Common Measures
8 of 30
Bank Borrower
• Banks are expected to hold reserves against expected credit losses which
are considered a cost of doing business
• The most basic model of expected loss considers two outcomes: default and
non-default.
• In the event of non-default, the credit loss is 0.
• In the event of default, the loss is loss given default (LGD) times the current
exposure (EAD)
Estimating Credit Losses — Expected Loss
9 of 30
Event
No default
Default
Loss Probability
1 - PD0
PDLGD x EAD
Expected Loss = (1-PD) x 0 + PD x LGD x EAD = PD x LGD x EAD
• Statistical approaches are used to estimate the distribution of possible loss values
• For individual products in default, loss amounts are not deterministic due to uncertainty
about LGD and collateral value
• For a portfolio of credit products with defaults, loss amounts are also uncertain due to
correlation of defaults between products
• Credit loss distributions tend to be largely skewed as the likelihood of significant losses is
lower than the likelihood of average losses or no losses
• Active loan portfolio management embracing diversification of exposures across
industries and geographic areas can reduce the variability of losses around the mean
• Unexpected loss represents the minimum loss level for a given confidence level a 
UL(a) is the maximum loss a bank will suffer a% of the time.
Estimating Credit Losses — Unexpected Loss
10 of 30

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Credit risk management

  • 1. GLOBAL ASSOCIATION OF RISK PROFESSIONALS The GARP Risk Series CREDIT RISK MANAGEMENT Chapter 1 | Credit Risk Assessment
  • 2. • Distinguishing credit risk from market risk • Credit policy and credit risk • Credit risk assessment framework • Inputs to credit models Chapter Focus 2 of 30 Credit risk definition • The potential for loss due to failure of a borrower to meet its contractual obligation to repay a debt in accordance with the agreed terms • Example: A homeowner stops making mortgage payments • Commonly also referred to as default risk • Credit events include bankruptcy, failure to pay, loan restructuring, loan moratorium, accelerated loan payments • For banks, credit risk typically resides in the assets in its banking book (loans and bonds held to maturity) • Credit risk can arise in the trading book as counterparty credit risk
  • 3. • Market risk is the potential loss due to changes in market prices or values • Assessment time horizon: typically one day • Credit risk is the potential loss due to the nonperformance of a financial contract, or financial aspects of nonperformance in any contract • Assessment time horizon: typically one year • Credit risk is generally more important than market risk for banks • Many credit risk drivers relate to market risk drivers, such as the impact of market conditions on default probabilities. • Differs from market risk due to obligor behavior considerations • The five “C’s” of Credit — Capital, Capacity, Conditions, Collateral, and Character • Both credit and market risk models use historical data, forward looking models and behavioral models to assess risks Credit Risk vs. Market Risk 3 of 30
  • 4. • Loans • A contractual agreement that outlines the payment obligation from the borrower to the bank • May be secured with either collateral or payment guarantees to ensure a reliable source of secondary repayment in case the borrower defaults • Often written with covenants that require the loan to be repaid immediately if certain adverse conditions exist, such as a drop in income or capital • Generally reside in the bank’s banking book or credit portfolio • Although banks may sell loans another bank or entity investing in loans • Bonds • A publicly traded loan — an agreement between the issuer and the purchasers • Collateral support, payment guarantees, or secondary sources of repayment may all support certain types of bonds • Structuring characteristics that determine a bond investor’s potential recovery in default • Generally reside in the bank’s trading book Credit Products — Loans vs. Bonds 4 of 30
  • 5. 1. Bank loans borrower $V Understanding Credit Risk — A Simple Loan 5 of 30 Bank Borrower 2. Borrow repays loan across time with periodic payments Contractually, how a loan should work:
  • 6. 1. Bank loans borrower $V Understanding Credit Risk — A Simple Loan 6 of 30 Bank Borrower 2. Borrow fails to repay loan across time with periodic payments Credit risk arises because there is the possibility that the borrower will not repay the loan as obligated
  • 7. • Most familiar risk metric is often the adequacy of general and specific loan loss provisions and the size of the general and specific loan loss reserve in relationship to the total exposures of the bank • Allowance for loan losses creates a cushion of credit losses in the bank’s credit portfolio • Primarily intended to absorb the bank’s expected loan losses • Historically credit decisions were made in a case by case basis • Growing sophistication and automation of lending and the increasing complexity of credit products have spawned the development of computational approaches to credit assessment and evaluation of individual retail and commercial borrowers • Introduction of bank-wide credit risk software has accelerated • In part driven by regulatory pressures, as regulators demanded improved analysis and oversight of the risk assessment process Estimating Credit Losses 7 of 30
  • 8. • Probability of Default (PD) • The likelihood that the borrower will fail to make full and timely repayment of its financial obligations • Exposure At Default (EAD) • The expected value of the loan at the time of default • Loss Given Default (LGD) • The amount of the loss if there is a default, expressed as a percentage of the EAD • Recovery Rate (RR) • The proportion of the EAD the bank recovers Estimating Credit Losses — Common Measures 8 of 30 Bank Borrower
  • 9. • Banks are expected to hold reserves against expected credit losses which are considered a cost of doing business • The most basic model of expected loss considers two outcomes: default and non-default. • In the event of non-default, the credit loss is 0. • In the event of default, the loss is loss given default (LGD) times the current exposure (EAD) Estimating Credit Losses — Expected Loss 9 of 30 Event No default Default Loss Probability 1 - PD0 PDLGD x EAD Expected Loss = (1-PD) x 0 + PD x LGD x EAD = PD x LGD x EAD
  • 10. • Statistical approaches are used to estimate the distribution of possible loss values • For individual products in default, loss amounts are not deterministic due to uncertainty about LGD and collateral value • For a portfolio of credit products with defaults, loss amounts are also uncertain due to correlation of defaults between products • Credit loss distributions tend to be largely skewed as the likelihood of significant losses is lower than the likelihood of average losses or no losses • Active loan portfolio management embracing diversification of exposures across industries and geographic areas can reduce the variability of losses around the mean • Unexpected loss represents the minimum loss level for a given confidence level a  UL(a) is the maximum loss a bank will suffer a% of the time. Estimating Credit Losses — Unexpected Loss 10 of 30