Forecasting Expected and Unexpected Losses

M. Juselius, Nikola A. Tarashev
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引用次数: 5

Abstract

Extending a standard credit-risk model illustrates that a single factor can drive both expected losses and the extent to which they may be exceeded in extreme scenarios, ie “unexpected losses.” This leads us to develop a framework for forecasting these losses jointly. In an application to quarterly US data on loan charge-offs from 1985 to 2019, we find that financial-cycle indicators – notably, the debt service ratio and credit-to-GDP gap – deliver reliable real-time forecasts, signalling turning points up to three years in advance. Provisions and capital that reflect such forecasts would help reduce the procyclicality of banks’ loss-absorbing resources.
预测预期和意外损失
扩展一个标准的信用风险模型表明,一个单一的因素既可以驱动预期损失,也可以驱动在极端情况下超过预期损失的程度,即“意外损失”。这促使我们制定一个共同预测这些损失的框架。在对1985年至2019年美国季度贷款冲销数据的应用中,我们发现金融周期指标——尤其是偿债比率和信贷与gdp之差——提供了可靠的实时预测,提前三年预示转折点。反映这种预测的拨备和资本将有助于降低银行吸收亏损资源的顺周期性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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