银行预警建模框架及其应用

J. Lang, T. Peltonen, Peter Sarlin
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引用次数: 31

摘要

本文提出了一个具有最优样本外预测特性的预警模型框架,并将其应用于预测欧洲银行的危机。本文的主要贡献有三个方面。首先,本文引入了一个概念框架来指导构建预警模型的过程,该框架突出并结构化了建模者需要做出的众多复杂选择。其次,对概念框架提出了一种灵活的建模解决方案,支持实时模型选择。具体来说,我们提出的解决方案是将损失函数方法与正则化逻辑回归和交叉验证相结合来评估预警模型,以找到具有最佳实时样本外预测特性的模型规范。第三,本文通过将建模框架应用于欧盟银行的大型数据集,并展示了一些预警模型可视化的例子,说明了如何将建模框架用于支持微观和宏观审慎政策的分析。JEL分类:G01, G17, G21, G33, C52, C54
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A Framework for Early-Warning Modeling with an Application to Banks
This paper proposes a framework for deriving early-warning models with optimal out-of-sample forecasting properties and applies it to predicting distress in European banks. The main contributions of the paper are threefold. First, the paper introduces a conceptual framework to guide the process of building early-warning models, which highlights and structures the numerous complex choices that the modeler needs to make. Second, the paper proposes a flexible modeling solution to the conceptual framework that supports model selection in real-time. Specifically, our proposed solution is to combine the loss function approach to evaluate early-warning models with regularized logistic regression and cross-validation to find a model specification with optimal real-time out-of-sample forecasting properties. Third, the paper illustrates how the modeling framework can be used in analysis supporting both microand macro-prudential policy by applying it to a large dataset of EU banks and showing some examples of early-warning model visualizations. JEL Classification: G01, G17, G21, G33, C52, C54
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