Aarhus Universitets segl

DeepFINA. Deep Learning for Financial Investor Network Analysis

The inability of conventional financial models to meet empirical observations from real-world markets has led to a growing level of dissatisfaction. Existing models set unrealistic assumptions for investors’ behavioral characteristics and the information flow inside and outside the market.

   

The few recent interdisciplinary studies following data-driven analyses are based on crude behavioral investor categorizations, generic attributes for expressing properties of these investor categories (like age and gender), and simple (linear) mathematical models. The project will study financial activities at the individual investor level and its evolution over time, based on data-driven methodologies. 


Partners


Principal Investigator from ECE, AU:


About the project:

Grant source:
Danmarks Frie Forskningsfond, Teknologi og Produktion

Granted amount:
DKK 6.191.605

Project start:
01/09/2023