We exploit a recent computational framework to model and detect financial crises in stock markets, as well as shock events in cryptocurrency markets, which are characterized by a sudden or severe drop in prices. Our method manages to detect all past crises in the French industrial stock market starting with the crash of 1929, including financial crises after 1990 (e.g. dot-com bubble burst of 2000, stock market downturn of 2002), and all past crashes in the cryptocurrency market, namely in 2018, and also in 2020 due to covid-19. We leverage copulae clustering, based on the distance between probability distributions, in order to validate the reliability of the framework; we show that clusters contain copulae from similar market states such as normal states, or crises. Moreover, we propose a novel regression model that can detect successfully all past events using less than 10% of the information that the previous framework requires. We train our model by historical data on the industry assets, and we are able to detect all past shock events in the cryptocurrency market. Our tools provide the essential components of our software framework that offers fast and reliable detection, or even prediction, of shock events in stock and cryptocurrency markets of hundreds of assets.
翻译:我们利用最近的计算框架来模拟和发现股票市场的金融危机,以及暗通货币市场的冲击事件,其特点是价格突然或严重下跌。我们的方法是设法探测法国工业股票市场从1929年崩溃开始的所有过去危机,包括1990年以后的金融危机(例如,2018年的dot-com泡沫泡沫爆发,2002年的股票市场下滑),以及过去在暗通货币市场的所有崩溃,即2018年和2020年的危机。我们利用基于概率分布之间的距离的 Coppulae集群,以验证框架的可靠性;我们显示,集群包含来自正常国家或危机等类似市场国家的椰子。此外,我们提出了一个新的回归模式,能够利用前一个框架所需的不到10%的信息成功探测过去的所有事件。我们用工业资产的历史数据来培训我们的模型,我们能够检测在暗通货币市场中的所有过去冲击事件。我们的工具提供了软件框架的基本组成部分,可以快速和可靠地探测,甚至预测成百个股票和暗通货币市场的冲击事件。