Identifying Extreme Events in the Stock Market: A Topological Data Analysis

Anish Rai, Buddha Nath Sharma, Salam Rabindrajit Luwang, Md. Nurujjaman, Sushovan Majhi
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Abstract

This paper employs Topological Data Analysis (TDA) to detect extreme events (EEs) in the stock market at a continental level. Previous approaches, which analyzed stock indices separately, could not detect EEs for multiple time series in one go. TDA provides a robust framework for such analysis and identifies the EEs during the crashes for different indices. The TDA analysis shows that $L^1$, $L^2$ norms and Wasserstein distance ($W_D$) of the world leading indices rise abruptly during the crashes, surpassing a threshold of $\mu+4*\sigma$ where $\mu$ and $\sigma$ are the mean and the standard deviation of norm or $W_D$, respectively. Our study identified the stock index crashes of the 2008 financial crisis and the COVID-19 pandemic across continents as EEs. Given that different sectors in an index behave differently, a sector-wise analysis was conducted during the COVID-19 pandemic for the Indian stock market. The sector-wise results show that after the occurrence of EE, we have observed strong crashes surpassing $\mu+2*\sigma$ for an extended period for the banking sector. While for the pharmaceutical sector, no significant spikes were noted. Hence, TDA also proves successful in identifying the duration of shocks after the occurrence of EEs. This also indicates that the Banking sector continued to face stress and remained volatile even after the crash. This study gives us the applicability of TDA as a powerful analytical tool to study EEs in various fields.
识别股市极端事件:拓扑数据分析
本文采用拓扑数据分析(TDA)方法,从大陆层面检测股票市场的极端事件(EEs)。以往分别分析股票指数的方法无法一次性检测出多个时间序列的 EE。TDA 为此类分析提供了一个稳健的框架,并能识别不同指数在暴跌期间的 EE。TDA 分析表明,全球主要指数的 $L^1$、$L^2$ 准则和 Wasserstein 距离($W_D$)在股灾期间突然上升,超过了$\mu+4*\sigma$ 的临界值,其中$\mu$ 和$\sigma$ 分别是准则或 $W_D$ 的均值和标准偏差。我们的研究将 2008 年金融危机的股指暴跌和 COVID-19 在各大洲的大流行确定为 EE。鉴于指数中不同板块的表现不同,我们在 COVID-19 大流行期间对印度股市进行了板块分析。行业分析结果表明,在 EE 发生后,我们观察到银行业在很长一段时间内出现了超过 $\mu+2*\sigma$ 的强烈暴跌。而医药行业则没有发现明显的峰值。因此,TDA 在识别 EE 发生后的冲击持续时间方面也被证明是成功的。这也表明,即使在股灾发生后,银行业仍然面临压力并保持波动。这项研究让我们看到了 TDA 作为一种强大的分析工具在研究各个领域的 EEs 时的适用性。
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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