A systematic review of early warning systems in finance

Ali Namaki, Reza Eyvazloo, Shahin Ramtinnia
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Abstract

Early warning systems (EWSs) are critical for forecasting and preventing economic and financial crises. EWSs are designed to provide early warning signs of financial troubles, allowing policymakers and market participants to intervene before a crisis expands. The 2008 financial crisis highlighted the importance of detecting financial distress early and taking preventive measures to mitigate its effects. In this bibliometric review, we look at the research and literature on EWSs in finance. Our methodology included a comprehensive examination of academic databases and a stringent selection procedure, which resulted in the final selection of 616 articles published between 1976 and 2023. Our findings show that more than 90\% of the papers were published after 2006, indicating the growing importance of EWSs in financial research. According to our findings, recent research has shifted toward machine learning techniques, and EWSs are constantly evolving. We discovered that research in this area could be divided into four categories: bankruptcy prediction, banking crisis, currency crisis and emerging markets, and machine learning forecasting. Each cluster offers distinct insights into the approaches and methodologies used for EWSs. To improve predictive accuracy, our review emphasizes the importance of incorporating both macroeconomic and microeconomic data into EWS models. To improve their predictive performance, we recommend more research into incorporating alternative data sources into EWS models, such as social media data, news sentiment analysis, and network analysis.
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对金融早期预警系统的系统回顾
预警系统(ews)对于预测和预防经济和金融危机至关重要。ews旨在为金融问题提供早期预警信号,使政策制定者和市场参与者能够在危机扩大之前进行干预。2008年金融危机凸显了及早发现金融危机并采取预防措施减轻其影响的重要性。在这篇文献计量学综述中,我们回顾了关于金融领域ews的研究和文献。我们的方法包括对学术数据库的全面检查和严格的选择程序,最终选择了1976年至2023年间发表的616篇文章。我们的研究结果表明,超过90%的论文发表于2006年之后,这表明ews在金融研究中的重要性日益增加。根据我们的发现,最近的研究已经转向机器学习技术,而ews也在不断发展。我们发现这一领域的研究可以分为四类:破产预测、银行危机、货币危机和新兴市场、机器学习预测。每个集群都对ews使用的方法和方法提供了不同的见解。为了提高预测的准确性,我们的综述强调了将宏观经济和微观经济数据纳入ewmodels的重要性。为了提高其预测性能,我们建议进行更多的研究,将替代数据源纳入EWS模型,如社交媒体数据、新闻情感分析和网络分析。
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