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Modelin-g credit risk with a Tobit model of days past due

机译:ModelIn-G使用Tobit Mode的信用风险到期日

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In this paper we propose a novel credit risk modelling approach where number of days past due is modeled instead of a binary indicator of default. In line with regulatory requirements, the number of days overdue on loan repayments are transformed to a binary variable by applying 90-days past due threshold, and use it as the dependent variable in default probability models. However, potentially useful information is lost with this transformation. Lower levels of days past due are expected to be good predictors of future incidence of default. We show that a dynamic Tobit model, where number of days overdue is used as a censored continuous dependent variable, significantly outperforms models based on binary indicators of default. It correctly identifies more than 70% of defaulters and issues less than 1% of false alarms. Its superiority is confirmed also by more accurate rating classification, higher rating stability over the business cycle and more timely identification of defaulted borrowers. The implications for banks are clear. By modelling number of days past due they can significantly improve risk identification and reduce procyclicality of IRB capital requirements. Moreover, we show how modelling of days past due can be used also for stage allocation for the purposes of IFRS9 reporting. (C) 2020 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种新的信用风险建模方法,其中由于违约的二进制指示器而被建模的日期数量。符合法规要求,通过应用到期阈值,贷款偿还的日期逾期将转换为二进制变量,并将其用作默认概率模型中的依赖变量。但是,潜在的有用信息丢失了这种转变。由于未来违约发病率的较低的日子较低的日子较低。我们展示了一种动态的Tobit模型,其中逾期的天数用作截取的连续依赖变量,显着优于默认二进制指示器的模型。它正确地识别超过70%的违规者,并且不到1%的错误警报的问题。其优越性也得到了更准确的评级分类,更高的商业周期稳定性,更及时地识别违约借款人。对银行的影响很清楚。通过建模过去的天数,他们可以显着提高风险识别并降低IRB资本要求的性能性。此外,我们展示了如何用于IFRS9报告的舞台分配的日期日期的型号。 (c)2020 Elsevier B.v.保留所有权利。

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