意大利银行流动性风险预警指标:机器学习方法

Stefano Nobili, Maria Ludovica Drudi
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引用次数: 10

摘要

本文开发了一个早期预警系统来识别可能面临流动性危机的银行。为了获得一个衡量银行流动性脆弱性的稳健系统,我们比较了三种模型的预测性能——logistic LASSO、随机森林和极端梯度增强——以及它们的组合。利用2014年12月至2020年1月的流动性危机事件的综合数据集,我们的预警模型的信号根据政策制定者对第一类和第二类错误的偏好进行了校准。与大多数关注违约风险并通常提出4至6个季度预测范围的文献不同,我们分析流动性风险并考虑3个月的预测范围。关键的发现是,结合不同的估计过程可以提高模型的性能,并产生准确的样本外预测。结果表明,组合模型实现了极低的假阴性百分比,低于文献中通常报道的值,同时限制了假阳性的数量。
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A Liquidity Risk Early Warning Indicator for Italian Banks: A Machine Learning Approach
The paper develops an early warning system to identify banks that could face liquidity crises. To obtain a robust system for measuring banks’ liquidity vulnerabilities, we compare the predictive performance of three models – logistic LASSO, random forest and Extreme Gradient Boosting – and of their combination. Using a comprehensive dataset of liquidity crisis events between December 2014 and January 2020, our early warning models’ signals are calibrated according to the policymaker's preferences between type I and II errors. Unlike most of the literature, which focuses on default risk and typically proposes a forecast horizon ranging from 4 to 6 quarters, we analyse liquidity risk and we consider a 3-month forecast horizon. The key finding is that combining different estimation procedures improves model performance and yields accurate out-of-sample predictions. The results show that the combined models achieve an extremely low percentage of false negatives, lower than the values usually reported in the literature, while at the same time limiting the number of false positives.
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