This thesis investigates how deep learning, specifically Deep Neural Networks (DNNs), can be theoretically understood and effectively applied to predict stock returns in the context of nonparametric regression. Empirically, the study shows that DNNs outperform traditional methods in forecasting U.S. stock returns, identifying key predictive stock characteristics. Theoretically, it develops a rigorous mathematical framework to explain why DNNs are effective at modeling complex relationships. By combining empirical success with theoretical insights, the thesis advances both machine learning and econometrics, offering a deeper understanding of DNNs for future research and real-world data analysis.
History
Campus location
Australia
Principal supervisor
Jiti Gao
Additional supervisor 1
Bin Peng
Additional supervisor 2
Yanrong Yang
Year of Award
2025
Department, School or Centre
Econometrics and Business Statistics
Course
Doctor of Philosophy
Degree Type
DOCTORATE
Faculty
Faculty of Business and Economics
Rights Statement
The author retains copyright of this thesis. It must only be used for personal non-commercial research, education and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission. For further terms use the In Copyright link under the License field.