Forecasting the instability of Polish banks

IF 0.6 4区 经济学 Q4 ECONOMICS Argumenta Oeconomica Pub Date : 2022-01-01 DOI:10.15611/aoe.2022.2.06
Marcin Łupiński
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Abstract

The paper presents a formalised procedure of the identification of financial stability EWI (Early Warning Indicators) for the Polish banking sector, in which a two-step procedure was applied. First, the author used a logit model to estimate of the biggest Polish banks’ probabilities of default (PDs). Next, the calculated individual banks’ PDs were used to prepare aggregated domestic banking system stability. In the last step, employing a set of multivariate Markov-switching models with distributed lags (MMSM-DL), the author applied this measure to identify EWI from the candidate macro, private and public debt, banking sector, financial markets and property prices indicators. The best performing EWI were selected with application of area under the receiver operating characteristic (AUROC) metrics and compared with an output of a popular logistic regression (LR) model. To the best author’s knowledge, this article presents for the first time a fully formalised analytical framework based on the MMSM-DL approach that combines microprudential and macroprudential data for the Polish banks financial stability EWI identification. Moreover, the survey supports the hypothesis that the Polish banking sector is stable with use of a formalised econometric procedure.
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预测波兰银行的不稳定性
本文提出了确定波兰银行业金融稳定EWI(早期预警指标)的正式程序,其中采用了两步程序。首先,作者使用logit模型来估计波兰最大银行的违约概率(pd)。接下来,计算出的单个银行的pd被用来准备国内银行体系的总体稳定性。在最后一步,作者采用一组多变量马尔可夫切换模型(mmms - dl),从候选宏观、私人和公共债务、银行业、金融市场和房地产价格指标中识别EWI。应用receiver operating characteristic (AUROC)指标选择了表现最好的EWI,并与流行的logistic回归(LR)模型的输出进行了比较。据作者所知,本文首次基于MMSM-DL方法提出了一个完全形式化的分析框架,该框架结合了波兰银行金融稳定EWI识别的微观审慎和宏观审慎数据。此外,通过使用正式的计量经济学程序,该调查支持了波兰银行业稳定的假设。
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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