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Forecasting recovery rates on non-performing loans with machine learning

机译:预测机器学习非执行贷款的恢复率

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We compare the performance of a wide set of regression techniques and machine-learning algorithms for predicting recovery rates on non-performing loans, using a private database from a European debt collection agency. We find that rule-based algorithms such as Cubist, boosted trees, and random forests perform significantly better than other approaches. In addition to loan contract specificities, predictors that refer to the bank recovery process - prior to the portfolio's sale to a debt collector - are also shown to enhance forecasting performance. These variables, derived from the time series of contacts to defaulted clients and client reimbursements to the bank, help all algorithms better identify debtors with different repayment ability and/or commitment, and in general those with different recovery potential. (C) 2020 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:我们使用来自欧洲债务收集机构的私人数据库来比较广泛的回归技术和机器学习算法的性能,以预测非执行贷款的恢复率。我们发现基于规则的算法,如Cubist,Boosted树木和随机森林比其他方法更好。除了贷款合同的特殊性之外,还提到了对债务收集者的投资组合销售之前提到了银行恢复过程的预测因素 - 也被证明可以提高预测性能。这些变量从与银行的默认客户端和客户报销的时间序列派生的这些变量,帮助所有算法更好地识别具有不同还款能力和/或承诺的债务人,以及一般恢复潜力的债务人。 (c)2020国际预测研究所。由elsevier b.v出版。保留所有权利。

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