COVID-19 期间欧元区的信用风险建模:来自 ICAS 框架的证据

Georgios Chortareas, Apostolos G. Katsafados, Theodore Pelagidis, Chara Prassa
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引用次数: 0

摘要

本文在内部信用评估系统(ICAS)框架内建立了一个逻辑回归模型,用于预测希腊经济中的企业违约情况。我们考虑了 COVID-19 大流行和相关政府金融支持计划(旨在防范金融脆弱性)对非金融企业违约概率的影响,以及相关行业和企业规模效应。在开发 ICAS 框架的过程中,我们解决了统计方法与机器学习方法的预测性能以及不平衡数据集问题等方法论问题,指出了评估此类具有强大预测能力的模型的方法。我们的研究结果表明,金融支持措施的效果在大流行病冲击中占主导地位,从而大大降低了企业违约的概率,而基于规模和行业的模型显示,微型企业和服务业企业受益最大。此外,利用随机森林模型,我们的研究结果凸显了传统统计模型的透明度与机器学习模型的预测价值之间的权衡。
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 modelling within the euro area in the COVID‐19 period: Evidence from an ICAS framework
This paper develops a logistic regression model in an in‐house credit assessment system (ICAS) framework for predicting corporate defaults in the Greek economy. We consider the impact of the COVID‐19 pandemic and the associated government financial support schemes, aiming to protect against financial vulnerabilities, on the probability of default of non‐financial firms, as well as the relevant sectoral and firm‐size effects. In developing the ICAS framework, we address methodological issues such as the predictive performance of statistical versus machine learning approaches and the imbalanced dataset problem, indicating ways to evaluate such models with strong predictive power. Our findings suggest that the effect of the financial support measures dominates the pandemic shocks, thus substantially reducing the probability of firms' default, while the size‐ and industry‐based models show that firms in the micro and services sectors benefited the most. Furthermore, using a random forest model, our findings highlight the trade‐off between the transparency of traditional statistical models and the predictive value of machine learning models.
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