COVID 风险叙事:大流行病期间叙事风险计量识别的计算语言学方法。

Digital finance Pub Date : 2022-01-01 Epub Date: 2021-11-29 DOI:10.1007/s42521-021-00045-3
Yuting Chen, Don Bredin, Valerio Potì, Roman Matkovskyy
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引用次数: 0

摘要

在本文中,我们研究了叙事在股票市场中的作用,尤其关注与正在发生的 COVID-19 大流行病之间的关系。大流行病为病毒性金融市场叙事的发展提供了一个自然环境。因此,我们将大流行病视为流行叙事与金融市场之间关系的自然实验。我们采用金融新闻自然语言处理(NLP)来描述重要叙述的演变。通过这种方法,我们将高维叙事信息缩减为少数几个可解释的重要特征,同时避免过度拟合。除常见特征外,我们还将病毒性视为叙事的新特征,其灵感来自席勒(Am Econ Rev 107:967-1004, 2017)。我们的目的是确定当前的叙述是受股市行情驱动还是被股市行情驱动。我们以冠状病毒叙事为重点,记录了其在严重事件驱动的股市下跌前后演变的一些风格化事实。我们发现,与大流行病相关的叙事受到股市条件的影响,并成为酝酿长期经济叙事的地窖。我们成功地发现了一种常年性的风险叙事,其冲击随之而来的是市场的严重下跌和市场波动的长期加剧。在样本外测试中,自全球 COVID-19 大流行开始以来,这种叙事就开始流行,当时与大流行相关的叙事在新闻媒体中占主导地位,表现出负面情绪,并与 "危机 "背景有更多联系。我们的研究结果鼓励使用叙事来评估长期市场状况,并对事件驱动的严重市场下跌发出预警。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

COVID risk narratives: a computational linguistic approach to the econometric identification of narrative risk during a pandemic.

COVID risk narratives: a computational linguistic approach to the econometric identification of narrative risk during a pandemic.

COVID risk narratives: a computational linguistic approach to the econometric identification of narrative risk during a pandemic.

COVID risk narratives: a computational linguistic approach to the econometric identification of narrative risk during a pandemic.

In this paper, we study the role of narratives in stock markets with a particular focus on the relationship with the ongoing COVID-19 pandemic. The pandemic represents a natural setting for the development of viral financial market narratives. We thus treat the pandemic as a natural experiment on the relation between prevailing narratives and financial markets. We adopt natural language processing (NLP) on financial news to characterize the evolution of important narratives. Doing so, we reduce the high-dimensional narrative information to few interpretable and important features while avoiding over-fitting. In addition to the common features, we consider virality as a novel feature of narratives, inspired by Shiller (Am Econ Rev 107:967-1004, 2017). Our aim is to establish whether the prevailing narratives drive or are driven by stock market conditions. Focusing on the coronavirus narratives, we document some stylized facts about its evolution around a severe event-driven stock market decline. We find the pandemic-relevant narratives are influenced by stock market conditions and act as a cellar for brewing a perennial economic narrative. We successfully identified a perennial risk narrative, whose shock is followed by a severe market drop and a long-term increase of market volatility. In the out-of-sample test, this narrative went viral since the start of the global COVID-19 pandemic, when the pandemic-relevant narratives dominate news media, show negative sentiment and were more linked to "crisis" context. Our findings encourage the use of narratives to evaluate long-term market conditions and to early warn event-driven severe market declines.

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