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Forecasting Loss Given Default models: impact of account characteristics and the macroeconomic state

On the basis of two data sets containing Loss Given Default (LGD) observations of home equity and corporate loans, we consider non-linear and non-parametric techniques to model and forecast LGD. These techniques include non-linear Support Vector Regression (SVR), a regression tree, a transformed lin...

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Published in:The Journal of the Operational Research Society 2014-03, Vol.65 (3), p.376-392
Main Authors: Tobback, Ellen, Martens, David, Van Gestel, Tony, Baesens, Bart
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description On the basis of two data sets containing Loss Given Default (LGD) observations of home equity and corporate loans, we consider non-linear and non-parametric techniques to model and forecast LGD. These techniques include non-linear Support Vector Regression (SVR), a regression tree, a transformed linear model and a two-stage model combining a linear regression with SVR. We compare these models with an ordinary least squares linear regression. In addition, we incorporate several variants of 11 macroeconomic indicators to estimate the influence of the economic state on loan losses. The out-of-time set-up is complemented with an out-of-sample set-up to mitigate the limited number of credit crisis observations available in credit risk data sets. The two-stage/transformed model outperforms the other techniques when forecasting out-of-time for the home equity/corporate data set, while the non-parametric regression tree is the best performer when forecasting out-of-sample. The incorporation of macroeconomic variables significantly improves the prediction performance. The downturn impact ranges up to 5% depending on the data set and the macroeconomic conditions defining the downturn. These conclusions can help financial institutions when estimating LGD under the internal ratings-based approach of the Basel Accords in order to estimate the downturn LGD needed to calculate the capital requirements. Banks are also required as part of stress test exercises to assess the impact of stressed macroeconomic scenarios on their Profit and Loss (P&L) and banking book, which favours the accurate identification of relevant macroeconomic variables driving LGD evolutions.
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subjects Bank accounts
Banking
Business and Management
Capital requirements
Credit ratings
Credit risk
Datasets
Default
Equity
Feature selection
Forecasting
Forecasting models
Gross domestic product
Linear models
Linear regression
Lines of credit
Liquidity
Loan agreements
Loan defaults
Macroeconomic modeling
Macroeconomics
Management
Modeling
Operations research
Operations Research/Decision Theory
Regression analysis
Regulation of financial institutions
Revolving credit
Special Issue Paper
Special Issue Papers
Studies
title Forecasting Loss Given Default models: impact of account characteristics and the macroeconomic state
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