Author:
So Mike K. P.,Mak Anson S. W.,Chu Amanda M. Y.
Abstract
AbstractSystemic risk in financial markets refers to the breakdown of a financial system due to global events, catastrophes, or extreme incidents, leading to huge financial instability and losses. This study proposes a dynamic topic network (DTN) approach that combines topic modelling and network analysis to assess systemic risk in financial markets. We make use of Latent Dirichlet Allocation (LDA) to semantically analyse news articles, and the extracted topics then serve as input to construct topic similarity networks over time. Our results indicate how connected the topics are so that we can correlate any abnormal behaviours with volatility in the financial markets. With the 2015–2016 stock market selloff and COVID-19 as use cases, our results also suggest that the proposed DTN approach can provide an indication of (a) abnormal movement in the Dow Jones Industrial Average and (b) when the market would gradually begin to recover from such an event. From a practical risk management point of view, this analysis can be carried out on a daily basis when new data come in so that we can make use of the calculated metrics to predict real-time systemic risk in financial markets.
Funder
The Hong Kong University of Science and Technology research grant “Big Data Analytics on Social Research”
Publisher
Springer Science and Business Media LLC
Reference56 articles.
1. Eisenberg, L. & Noe, T. H. Systemic risk in financial systems. Manag. Sci. 47, 236–249 (2001).
2. Kaufman, G. G. & Scott, K. E. What is systemic risk, and do bank regulators retard or contribute to it?. Indep. Rev. 7, 371–391 (2003).
3. Haldane, A. G. & May, R. M. Systemic risk in banking ecosystems. Nature 469, 351–355 (2011).
4. Wikipedia contributors. 2015–2016 stock market selloff—Wikipedia, the free encyclopedia (2021) (Accessed 31 Oct 2021).
5. Zhong, X. & Raghib, M. Revisiting the use of web search data for stock market movements. Sci. Rep. 9, 1–8 (2019).
Cited by
12 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献