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Predicting Bank Failures: A Synthesis of Literature and Directions for Future Research

机译:预测银行失败:对未来研究的文学和方向的合成

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Risk management has been a topic of great interest to Michael McAleer. Even as recent as 2020, his paper on risk management for COVID-19 was published. In his memory, this article is focused on bankruptcy risk in financial firms. For financial institutions in particular, banks are considered special, given that they perform risk management functions that are unique. Risks in banking arise from both internal and external factors. The GFC underlined the need for comprehensive risk management, and researchers since then have been working towards fulfilling that need. Similarly, the central banks across the world have begun periodic stress-testing of banks’ ability to withstand shocks. This paper investigates the machine-learning and statistical techniques used in the literature on bank failure prediction. The study finds that though considerable progress has been made using advanced statistical and computational techniques, given the complex nature of banking risk, the ability of statistical techniques to predict bank failures is limited. Machine-learning-based models are increasingly becoming popular due to their significant predictive ability. The paper also suggests the directions for future research.
机译:风险管理是Michael Mcaleer非常兴趣的主题。即使最近的2020年,他的Covid-19风险管理论文已发布。在他的记忆中,本文专注于金融公司的破产风险。特别是金融机构,银行被认为是特别的,因为他们执行独特的风险管理功能。银行业务的风险来自内部和外部因素。 GFC强调了对全面风险管理的需求,从那时起,研究人员就致力于满足这种需求。同样,世界各地的央行已经开始定期的压力测试银行承受震荡的能力。本文调查了在银行故障预测上的文献中使用的机器学习和统计技术。鉴于银行风险的复杂性,鉴于银行风险的复杂性,统计技术预测银行故障的能力有限,虽然采用了高级统计和计算技术,但鉴于银行风险的复杂性,但仍有相当大的进展。由于其显着的预测能力,基于机器学习的模型越来越受欢迎。本文还提出了未来研究的指示。

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