Liquidity Stress Detection in the European Banking Sector

Richard Heuver, Ron Triepels
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引用次数: 2

Abstract

Liquidity stress constitutes an ongoing threat to financial stability in the banking sector. A bank that manages its liquidity inadequately might find itself unable to meet its payment obligations. These liquidity issues, in turn, can negatively impact the liquidity position of many other banks due to contagion effects. For this reason, central banks carefully monitor the payment activities of banks in financial market infrastructures and try to detect early-warning signs of liquidity stress. In this paper, we investigate whether this monitoring task can be performed by supervised machine learning. We construct probabilistic classifiers that estimate the probability that a bank faces liquidity stress. The classifiers are trained on a dataset consisting of various payment features of European banks and which spans several known stress events. Our experimental results show that the classifiers detect the periods in which the banks faced liquidity stress reasonably well.
欧洲银行业的流动性压力检测
流动性压力对银行业的金融稳定构成持续威胁。流动性管理不当的银行可能会发现自己无法履行支付义务。由于传染效应,这些流动性问题反过来又会对许多其他银行的流动性状况产生负面影响。因此,中央银行仔细监测银行在金融市场基础设施中的支付活动,并试图发现流动性压力的早期预警信号。在本文中,我们研究是否可以通过监督机器学习来执行该监控任务。我们构造概率分类器来估计银行面临流动性压力的概率。分类器是在由欧洲银行的各种支付特征组成的数据集上训练的,这些数据集跨越了几个已知的压力事件。我们的实验结果表明,分类器可以很好地检测银行面临流动性压力的时期。
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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