论文标题

使用预测现金流量对贷款恢复决策时间的损失优化

The loss optimisation of loan recovery decision times using forecast cash flows

论文作者

Botha, Arno, Beyers, Conrad, de Villiers, Pieter

论文摘要

从经验上说明了一种理论方法在寻找最佳的时间来抛弃贷款,从而最大程度地减少了信贷损失。这是通过预测贷款组合的未来现金流量到合同期限的基础,作为对现实世界“不完整”投资组合的固有右汇票的一种补救措施。两种技术,一个简单的概率模型以及一个八态马尔可夫链,用于独立预测这些现金流。作为比较实验框架的一部分,我们从住宅抵押数据中的不同细分市场中培训这两种技术。结果,在经验上,恢复决策的暗示时间被认为是不确定现金流和竞争成本的多周期优化问题。我们的程序使用犯罪措施作为中央标准,有助于找到理想情况下应为给定投资组合发生贷款回收的损失最佳阈值。此外,投资组合的历史风险概况及其预测都显示出会影响恢复决策的时机。因此,这项工作可以促进对相关的银行政策或策略的修订,以优化贷款收款流程,尤其是有抵押贷款的贷款流程。

A theoretical method is empirically illustrated in finding the best time to forsake a loan such that the overall credit loss is minimised. This is predicated by forecasting the future cash flows of a loan portfolio up to the contractual term, as a remedy to the inherent right-censoring of real-world `incomplete' portfolios. Two techniques, a simple probabilistic model as well as an eight-state Markov chain, are used to forecast these cash flows independently. We train both techniques from different segments within residential mortgage data, provided by a large South African bank, as part of a comparative experimental framework. As a result, the recovery decision's implied timing is empirically illustrated as a multi-period optimisation problem across uncertain cash flows and competing costs. Using a delinquency measure as a central criterion, our procedure helps to find a loss-optimal threshold at which loan recovery should ideally occur for a given portfolio. Furthermore, both the portfolio's historical risk profile and forecasting thereof are shown to influence the timing of the recovery decision. This work can therefore facilitate the revision of relevant bank policies or strategies towards optimising the loan collections process, especially that of secured lending.

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