event history analysis for debt collection portfolios · event history analysis for debt collection...

30
Introduction State Structure Regression Techniques Summary Event History Analysis for Debt Collection Portfolios Fanyin Zhou 1 Nick Heard 2 David Hand 1,2 1. Institute for Mathematical Sciences, 2. Department of Mathematics Imperial College London Credit Scoring and Credit Control XI Conference August 2009

Upload: others

Post on 24-Jul-2020

0 views

Category:

Documents


0 download

TRANSCRIPT

Page 1: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Event History Analysis for DebtCollection Portfolios

Fanyin Zhou1 Nick Heard 2 David Hand1,2

1. Institute for Mathematical Sciences, 2. Department of MathematicsImperial College London

Credit Scoring and Credit Control XI Conference

August 2009

Page 2: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Consumer debt sales

• Debt type: e.g. delinquent credit card payments and personalloans

• Major players:• Debt sellers: major banks and credit lenders• Debt buyers: debt purchase and collection companies

• Transaction method: closed tenders / public auctions

• Contract types: one-off inventory sales and forward-flowagreements

• Portfolio composition: arrangement and general

• Portfolio price: a fraction of debt face value

Page 3: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Data sample

• 6,000+ credit card accounts from 24 sequentially enrolledarrangement portfolios in the years 2002 and 2003.

• each account having• details of the customer (account information)

• dates and amounts of payments made to the debt recoverycompany (transaction details)

• records of all contacts made between account customer andthe debt recovery company (action records)

all up until Dec 2006.

Page 4: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Page 5: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Page 6: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Page 7: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Paying

Page 8: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Paying

Page 9: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Paying

Page 10: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Paying Late PaymentCollection

Page 11: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Paying Late PaymentCollection

Page 12: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

A typical debt portfolio collection process

AddressMatching

ACCOUNTSENROLMENT

Tracing & Management

Structuring

Settled

Paying Late PaymentCollection

Page 13: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Multi-state models : Formulation

State structure specifies the states and the possible transitionsbetween states.

For a given data set,• The state structure is NOT unique;

• Selecting a good state structure makes the data analysis moreapproachable.

Page 14: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Multi-state models : Formulation

State structure specifies the states and the possible transitionsbetween states.

For a given data set,• The state structure is NOT unique;

• Selecting a good state structure makes the data analysis moreapproachable.

Page 15: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

The initial formulation

Structuring

Settled

Paying Late PaymentCollection

Page 16: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

The unfolded formulation

Structuring

Settled

L(1)

P(1)

L(2)

P(2)

L(3)

P(3)

L(N)

P(N)

Page 17: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Possible factors

For each Paying state P (i) or Late-payment-collection state L(i)(i = 1, . . . , N), we have a list of possible factors to be tested in theregression models:

• Background variables: Age, Gender, Balance, Debt grade,Type of credit card, etc.

• Performance variables: Times of earlier transitions, Numberof contacts made in earlier states, etc.

Page 18: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Regression models

For each P (i) or L(i) (i = 1, . . . , N) state , we have a competingrisks model:

The risk of proceeding to next P or L stateVS.

The risk of settlement.

Page 19: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Regression models

Regression models for the sub-distribution hazard:

• Cox regression model:

hk(t|X) = hk,0(t) exp(βTk X) k = 1, 2

• Cox regression model with time-dependent covariates:

hk(t|X(t)) = hk,0(t) exp(βTk X(t))

• Aalen Additive regression model:

hk(t|X(t)) = Y (t)(αk(t)TX(t))

Page 20: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Regression models

Regression models for the sub-distribution hazard:

• Cox regression model:

hk(t|X) = hk,0(t) exp(βTk X) k = 1, 2

• Cox regression model with time-dependent covariates:

hk(t|X(t)) = hk,0(t) exp(βTk X(t))

• Aalen Additive regression model:

hk(t|X(t)) = Y (t)(αk(t)TX(t))

Page 21: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

The unfolded model

Structuring[St]

Settled [S]

L(1)

P(1)

L(2)

P(2)

L(3)

P(3)

L(N)

P(N)

Page 22: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Results: Stepwise variable selectionP1L1 P2L2 P3L3 P4L4 P5L5 P6L6

StP1 time 0.09 0.10

P1L1 time -0.24 -0.11

L1P2 time 0.38

P2L2 time -0.34 -0.16 -0.38

L2P3 time

P3L3 time -0.31

L3P4 time

P4L4 time -0.24

L4P5 time

P5L5 time -0.004

L5P6 time

L1P2 L2P3 L3P4 L4P5 L5P6 L6P7

StP1 time -0.19 -1.47

P1L1 time 0.05 0.10

L1P2 time -0.30 -0.40

P2L2 time 0.17

L2P3 time -0.32

P3L3 time 0.12 0.33 1.00

L3P4 time -0.80 3.43

P4L4 time 0.21

L4P5 time

P5L5 time 1.00

L5P6 time

P6L6 time

P1L1 P2L2 P3L3 P4L4 P5L5 P6L6

# actions in St 0.11 0.06 -0.16

# actions in P1 0.09

# actions in L1 -0.26 -0.21 -0.59

# actions in P2 0.11

# actions in L2

# actions in P3

# actions in L3

# actions in P4

# actions in L4

# actions in P5

# actions in L5

L1P2 L2P3 L3P4 L4P5 L5P6 L6P7

£ leaving-St payment -0.08

£ leaving-L1 payment -0.22 -1.09

£ leaving-L2 payment -0.29 1.70

£ leaving-L3 payment -0.25

£ leaving-L4 payment

£ leaving-L5 payment

Page 23: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

P1L1 P2L2 P3L3 P4L4 P5L5 P6L6

StP1 time 0.09 0.10

P1L1 time -0.24 -0.11

L1P2 time 0.38

P2L2 time -0.34 -0.16 -0.38

L2P3 time

P3L3 time -0.31

L3P4 time

P4L4 time -0.24

L4P5 time

P5L5 time -0.004

L5P6 time

Structuring

Settled

L(1)

P(1)

L(2)

P(2)

L(3)

P(3)

L(4)

P(4)

L(5)

P(5)

L(6)

P(6)

L(7)

P(7)

Page 24: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

L1P2 L2P3 L3P4 L4P5 L5P6 L6P7

StP1 time -0.19 -1.47

P1L1 time 0.05 0.10

L1P2 time -0.30 -0.40

P2L2 time 0.17

L2P3 time -0.32

P3L3 time 0.12 0.33 1.00

L3P4 time -0.80 3.43

P4L4 time 0.21

L4P5 time

P5L5 time 1.00

L5P6 time

P6L6 time

Structuring

Settled

L(1)

P(1)

L(2)

P(2)

L(3)

P(3)

L(4)

P(4)

L(5)

P(5)

L(6)

P(6)

L(7)

P(7)

Page 25: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Tailored stepwise variable selection

To facilitate the interpretation of covariate effects, we

• only allow the pth lag of covariate x to be considered in theselection procedure when lags 1, 2, . . . , p− 1 are also includedin the model.

Structuring

Settled

L(1)

P(1)

L(2)

P(2)

L(3)

P(3)

L(4)

P(4)

L(5)

P(5)

L(6)

P(6)

Page 26: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Tailored stepwise variable selection

To facilitate the interpretation of covariate effects, we

• only allow the pth lag of covariate x to be considered in theselection procedure when lags 1, 2, . . . , p− 1 are also includedin the model.

Structuring

Settled

L(1)

P(1)

L(2)

P(2)

L(3)

P(3)

L(4)

P(4)

L(5)

P(5)

L(6)

P(6)

Page 27: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Results:Tailored stepwise variable selectionP1L1 P2L2 P3L3 P4L4 P5L5 P6L6

StP1 time 0.09 0.10

P1L1 time -0.24 -0.16

L1P2 time 0.38

P2L2 time -0.42 -0.15

L2P3 time

P3L3 time -0.34

L3P4 time

P4L4 time -0.27

L4P5 time

P5L5 time -0.003

L5P6 time

L1P2 L2P3 L3P4 L4P5 L5P6 L6P7

StP1 time -0.19 -0.12

P1L1 time 0.05

L1P2 time -0.30 -0.42

P2L2 time 0.17

L2P3 time -0.35

P3L3 time 0.11

L3P4 time -0.52

P4L4 time

L4P5 time

P5L5 time 0.002

L5P6 time

P6L6 time

P1L1 P2L2 P3L3 P4L4 P5L5 P6L6

# actions in St 0.11 0.06

# actions in P1 0.09

# actions in L1 -0.26

# actions in P2 0.12

# actions in L2

# actions in P3

# actions in L3

# actions in P4

# actions in L4

# actions in P5

# actions in L5

L1P2 L2P3 L3P4 L4P5 L5P6 L6P7

£ leaving-St payment -0.08

£ leaving-L1 payment -0.22

£ leaving-L2 payment -0.29

£ leaving-L3 payment -0.40

£ leaving-L4 payment

£ leaving-L5 payment

Page 28: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Baseline hazards

0 500 1000 1500

01

23

4

Time in days

Bas

elin

e H

azar

d(ce

nter

ed)

P1L1P2L2P3L3P4L4P5L5P6L6

0 500 1000 1500

01

23

4

Time in days

Bas

elin

e H

azar

d(ce

nter

ed)

L1P2L2P3L3P4L4P5L5P6

Page 29: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Summary

In conclusion, we

• proposed a multi-state framework for the debt collectionprocess,

• explored a state structure which allows us to add performancevariables into regression models, and

• implemented a tailored variable selection algorithm to achieveimproved interpretability of regression results.

Page 30: Event History Analysis for Debt Collection Portfolios · Event History Analysis for Debt Collection Portfolios FanyinZhou1 NickHeard2 DavidHand1;2 1. Institute for Mathematical Sciences,

Introduction State Structure Regression Techniques Summary

Thank you!