Modelling repayment patterns in the collections process for unsecured consumer debt: a case study
Modelling repayment patterns in the collections process for unsecured consumer debt: a case study
One approach to modelling Loss Given Default (LGD), the percentage of the defaulted amount of a loan that a lender will eventually lose is to model the collections process. This is particularly relevant for unsecured consumer loans where LGD depends both on a defaulter's ability and willingness to repay and the lender's collection strategy. When repaying such defaulted loans, defaulters tend to oscillate between repayment sequences where the borrower is repaying every period and non-repayment sequences where the borrower is not repaying in any period. This paper develops two models – one a Markov chain approach and the other a hazard rate approach to model such payment patterns of debtors. It also looks at simplifications of the models where one assumes that after a few repayment and non-repayment sequences the parameters of the model are fixed for the remaining payment and non-payment sequences. One advantage of these approaches is that they show the impact of different write-off strategies. The models are applied to a real case study and the LGD for that portfolio is calculated under different write-off strategies and compared with the actual LGD results.
476-486
Thomas, L.C.
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Matuszyk, A.
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So, M.C.
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Mues, C.
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Moore, Angela
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1 March 2016
Thomas, L.C.
a3ce3068-328b-4bce-889f-965b0b9d2362
Matuszyk, A.
609703a0-5c89-40d3-acb2-885e03779c37
So, M.C.
c6922ccf-547b-485e-8b74-a9271e6225a2
Mues, C.
07438e46-bad6-48ba-8f56-f945bc2ff934
Moore, Angela
133b149e-988b-4d50-b5c3-f273e183c8ee
Thomas, L.C., Matuszyk, A., So, M.C., Mues, C. and Moore, Angela
(2016)
Modelling repayment patterns in the collections process for unsecured consumer debt: a case study.
European Journal of Operational Research, 249 (2), .
(doi:10.1016/j.ejor.2015.09.013).
Abstract
One approach to modelling Loss Given Default (LGD), the percentage of the defaulted amount of a loan that a lender will eventually lose is to model the collections process. This is particularly relevant for unsecured consumer loans where LGD depends both on a defaulter's ability and willingness to repay and the lender's collection strategy. When repaying such defaulted loans, defaulters tend to oscillate between repayment sequences where the borrower is repaying every period and non-repayment sequences where the borrower is not repaying in any period. This paper develops two models – one a Markov chain approach and the other a hazard rate approach to model such payment patterns of debtors. It also looks at simplifications of the models where one assumes that after a few repayment and non-repayment sequences the parameters of the model are fixed for the remaining payment and non-payment sequences. One advantage of these approaches is that they show the impact of different write-off strategies. The models are applied to a real case study and the LGD for that portfolio is calculated under different write-off strategies and compared with the actual LGD results.
Text
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- Accepted Manuscript
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Accepted/In Press date: 8 September 2015
e-pub ahead of print date: 26 September 2015
Published date: 1 March 2016
Organisations:
Centre of Excellence in Decision, Analytics & Risk Research
Identifiers
Local EPrints ID: 381635
URI: http://eprints.soton.ac.uk/id/eprint/381635
ISSN: 0377-2217
PURE UUID: 03904dd6-87be-42c1-b172-d07c20ed3eb9
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Date deposited: 09 Oct 2015 11:09
Last modified: 15 Mar 2024 05:21
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Contributors
Author:
L.C. Thomas
Author:
A. Matuszyk
Author:
Angela Moore
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