Download presentation
Presentation is loading. Please wait.
Published byMyron Lewis Modified over 9 years ago
1
Evaluating Credit Risk Models Using Loss Density Forecasts: A Synopsis Amanda K. Geck Undergraduate Student Department of Computational and Applied Mathematics Rice University November 12, 2003
2
Outline Background information/motivation Frerichs-Löffler evaluation framework, Berkowitz procedure Two-state model, Multi-state model Applications Conclusions
3
Background information/motivation Frerichs-Löffler evaluation framework, Berkowitz procedure Two-state model, Multi-state model Applications Conclusions
4
What is credit risk? Credit risk is the chance that a borrower will default on a loan Firm defaults when asset value drops below critical value determined by liabilities (Merton 1974)
5
Who uses credit risk models? Banks Bank regulators Risk managers
6
What is a portfolio credit risk model? Quantifies potential losses/gains from holding portfolio of risky debt Produces probability distribution for value effects of credit-related events
7
Characteristics of portfolio credit risk models Some restrict analysis to losses from defaults Some include effects of credit quality changes Many capture credit event correlations through correlated latent variables
8
Limitations Scarcity of credit events Long forecast horizons Data limitations Evaluation procedure concerns
9
Research Scarce Only empirical paper: Nickell, Perraudin, Varotto (2001) Only theoretical paper: Lopez, Saidenberg (2001)
10
Background information/motivation Frerichs-Löffler evaluation framework, Berkowitz procedure Two-state model, Multi-state model Applications Conclusions
11
Frerichs-Löffler Framework Monte Carlo study H 0 is correct, rejection frequency should be equal to chosen significance level H 0 wrong, rejection frequency (power of test) should be as high as possible
12
Berkowitz Test Procedure Observed credit losses transformed into iid standard normal random variables H 0 = model is correct Standard likelihood ratio tests
13
Background information/motivation Frerichs-Löffler evaluation framework, Berkowitz procedure Two-state model, Multi-state model Applications Conclusions
14
Two-state model Neglects migration risk and recovery rate Describes full loss distribution by distribution of number of defaults in portfolio
15
Why a two-state model? Little data requirements Consistent data not available for recovery rates Data available for number of recent defaults
16
Base Case Setup No recovery in case of default 10,000 borrowers in portfolio 1% unconditional default probability Uniform asset correlation in true data- generating model = w 2 = 5% Asset value distribution N(0,1) 10 year credit loss history
17
Base Case
18
Different Sample Sizes
19
Different Histories
20
Issues with two-state model Choosing an appropriate asset correlation value Detecting misspecifications in asset correlation when default probability estimates noisy
21
Heterogeneous portfolio Split portfolio into seven rating classes Add noise: Overestimate by 50% default probabilities for half of borrowers in each rating class Underestimate by 50% for other half
22
Heterogeneous Portfolio (cont’d) w 2 = 20% With properly specified heterogeneous default probabilities, power = 93% With noise, power = 90% Results of evaluation robust to noise
23
Heterogeneous Default Probabilities
24
Multi-state Model Accounts for: Risk of default Risk of migration Systematic/unsystematic recovery risk Neglects: General interest rate risk Specific spread risk
25
Two-state vs. Multi-state H 0 when w 2 = 0% : multi-state power ≈ 100% two-state power ≈ 100% H 0 when w 2 = 20% multi-state power = 68% two-state power = 97.1%
26
Why is two-state power higher? Compare unexpected losses Multi-state: w 2 = 20% leads to unexpected loss 1.7 times higher than with w 2 = 5% Two-state: same ratio is 3 times higher
27
Background information/motivation Frerichs-Löffler evaluation framework, Berkowitz procedure Two-state model, Multi-state model Applications Conclusions
28
Applications for Banks Use evaluation method to: Confirm or improve chosen model specifications Assess powers of models applied to bank’s data Decide weight given to results in specification process
29
Applications for Regulators Validate underlying assumptions of new capital adequacy framework (Basel Committee, 2001) Encourage banks with enough records of past losses to check consistency with Basel assumptions Check if assumptions sufficient on average
30
Background information/motivation Frerichs-Löffler evaluation framework, Berkowitz procedure Two-state model, Multi-state model Applications Conclusions
31
Tests good for identifying misspecifications of asset value distribution Results robust to variations in portfolio size and composition Power significantly better for two-state model than for multi-state
32
Reference Frerichs and Löffler, “Evaluating Credit Risk Models Using Loss Density Forecasts”, Journal of Risk, Summer 2003
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.