by
In a new study published in Journal of Finance and Data Scienceresearchers at Han University of Applied Sciences International School of Business in the Netherlands, have introduced topological tail dependence theory, a new methodology for predicting stock market volatility during turbulence.
“This research bridges the gap between the abstract field of topology and the real world of finance. What’s really interesting is that this combination will help us better understand and predict stock market behavior during turbulent times. “We now have a powerful tool to do this,” said Hugo Gobat-Souto, sole author of the study.
Enhance financial forecasting with persistent homology
By incorporating persistent homology (PH) information through empirical testing, Souto Accuracy Leveraging nonlinear and neural network models to predict stock market volatility during turbulent periods.
“These findings signal a major shift in the world of financial forecasting, providing more reliable tools for investors, financial institutions and economists,” Sout added.
In particular, this approach avoids dimensionality barriers and is particularly useful for detecting complex correlations and nonlinear patterns that are often difficult with traditional methods.
“It was interesting to observe that forecast accuracy consistently improved, especially during the 2020 crisis,” Souto said.
Broad implications and future directions
The findings are not limited to one particular type of model. It spans a variety of models, from linear models to nonlinear models and even advanced neural network models. These discoveries open the door to improved overall financial forecasting.
“This discovery confirms the validity of the theory and encourages the scientific community to delve deeper into this exciting new intersection of mathematics and finance,” Souto concluded.
References: “Topological tail dependence: Evidence from forecasting realized volatility” by Hugo Gobato Souto, October 14, 2023. Journal of Finance and Data Science.
DOI: 10.1016/j.jfds.2023.100107
Source: scitechdaily.com