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2. Rabobank Nederland. . Topics. Agenda. IntroductionCurrent back-testing frameworkImpact economic cycle Example of the issueCurrent situation of the approach, results
                
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1. Rabobank Nederland Back-testing during times of crisis  Rabobank: Group Risk Management 
2. 2 Rabobank Nederland Agenda Introduction
Current back-testing framework
Impact economic cycle 
Example of the issue
Current situation of the approach, results & findings 
Future steps 
Conclusions
 
3. Introduction Many defaults have been observed lately:
(averaged as defaults declared depend on meeting days at court)
Defaults fluctuate over time. Back-testing gets more attention
Hypothesis:  back-testing will be influenced by the economic cycle 
 3 Rabobank Nederland 
4. Current back-testing framework Rating philosophy:  
Strive for TTC PD estimated throughout economic Cycle
Rabobank has TTC with point in time aspects
Rating bucket characteristics:
Predefined buckets are filled with comparable facilities
A constant PD is assigned to each homogenous bucket
 
5. Current back-testing framework 
6. Impact of the economic cycle Due to the economic cycle, credit risk is cyclical: more defaults at 
      downturns while less defaults at upturns
We focus on cyclicality in the default risk: PD (and not in severity of the loss: LGD)
Cyclicality has a systematic component, i.e., it affects many counterparties at the same time: the default behaviour of all clients will be affected 
 
7. Impact of the economic cycle 
	- What is the influence of the economic cycle   on the back-testing of PD models? 
	- How should the economic cycle be taken into account when back-testing a PD model?
 
8. Impact of the economic cycle 	
 
9. Impact of the economic cycle The point-in-time (PIT) PD is the likelihood that a loan will not be repaid and, thus, will fall into default within the coming year. (unobservable) This is also called expected annual default frequency 
The through-the-cycle (TTC) DF is the annual default frequency estimated on the long run. The estimates take into consideration upturns and downturns in the economy (unobservable)
The number of defaults is the realized number of clients who default within one year (observable)
 
10. Impact of the economic cycle 
     Assume: 1000 clients; The PIT PD is 4% (expectation of number of defaults is 40), while the realized number of defaults can vary.  
11. Impact of the economic cycle 	
 
12. Current status solution Main objective is testing the (TTC-) PDs (model)  
 Derive true TTC DF from annual number of defaults and Macro economic factor (e.g. unemployment rate, ? GDP)
 Compare with TTC PD model estimation
Assumption: PD from model is pure TTC PD 
 
13. Current status solution 
14. Current status solution  Back-testing  
                             unobservable PIT PDs
          
                       
                           
                               number of defaults
				(from real data)  
 
15. Current status solution - Logistic Model 
 
16. Current status solution  Methodology 
Score card                     	   TTC PD estimate
Macro  variable
Number of defaults	                                     
unobserved PIT PDs & true TTC DF	          misspecification                                                       						           0
	                                              
				 
17. Current status solution  Maximum Likelihood 
 
18. Current status solution misspecification   
 
 
19. Current status solution - testing 
          represents the difference between the true TTC DF and the TTC PD estimate from Rabobanks internal model. Confidence intervals are created: 
                                                     
                                                                                
TTC PD estimate 
20. Current status solution - Power of Back-testing 
21. Current status solution  Simulation (I) 
Score card                     	   TTC PD estimate
Macro  variable
                                     
			            create PIT PDs	        # of defaults        
						        
						          misspecification 
Derive with ML PIT PDs & true TTC DF                       0
	                                              
				 
22. Current status solution  Simulation (II) 
 
23. Current status solution  Simulation (III) 
                                                                               Macro  variable
Length of time series                              unobservable PIT PDs
                                                                            number of defaults 
Portfolio size (number of clients)             number of defaults 
24. Current status solution  Simulation (IV) 
                             unobservable PIT PDs
          
                       
                           
                               number of defaults  
25. Current status solution  Simulation (V) 
Repeat the process of power simulation 10,000 times
Under 95% confidence interval
One simulation gives a                   or an
10,000 simulations give a Rejection Rate:
 Rejection Rate of lower than 5% indicates  
26. Current status solution: Result Simulation (I) 
27. Current status solution: Result Simulation (II) 
28. Current status solution: findings Simulation (I) 
 
29. Current status solution: findings Simulation (II) 
 
30. Current status solution: Result Simulation (III) 
31. Current status solution: Result Simulation (IV) 
32. Current status solution: findings Simulation (III) 
33. Current status solution: Macro factor real world 
34. Current status solution: When to use new method? (I) 
 
35. Current status solution: When to use new method? (II) 
 
36. Future steps 
37. Conclusions 
38. Questions