中央银行和政府干预下的信用风险模型

B. Engelmann
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引用次数: 1

摘要

自2019冠状病毒病爆发以及随后央行和政府的干预措施以来,信贷建模方面出现了新的挑战。几十年来相当稳定的信贷风险与宏观经济驱动因素之间的关系已经破裂。一个例子是失业率,它被广泛用于预测零售贷款部门的违约率。自2020年中期以来,由于政府的干预措施,如每月向公民付款,使他们能够在失业或企业倒闭导致收入损失的情况下偿还债务,这种做法不再奏效。这导致违约率大大低于信贷模型的预测。在本文中,使用美国联邦储备银行在2021年第一季度发布的数据,提出了一个框架,量化中央银行和政府干预的影响,并展示了如何将干预情景纳入信贷模型,以提高其短期预测的准确性,并允许分析师评估长期情景。此外,干预的潜在副作用,如通货膨胀加剧,是量化的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Risk Modeling in the Presence of Central Bank and Government Intervention
Since the outbreak of Covid-19 and the central bank and government interventions that followed, new challenges in credit modeling have emerged. Relations between credit risk and macroeconomic drivers that have been fairly stable over decades have broken down. An example is the unemployment rate which has been widely used in predicting default rates in retail loan segments. Since mid-2020 this no longer works because of government interventions like monthly payments to citizens which allows them to service their debt despite suffering income loss due to unemployment or business closures. This results in substantially lower default rates than predicted by credit models. In this article, using data published by the US Federal Reserve Bank in Q1 2021, a framework is suggested that quantifies the effect of central bank and government interventions and shows how to include intervention scenarios into credit models improving the accuracy of their short-term predictions and allowing analysts to evaluate long-term scenarios. Furthermore, potential side-effects of intervention like increased inflation are quantified.
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