Financial time series forecasting: an empirical analysis of Fama-French 3 factor model portfolios
Giordano, Ferdinando (A.A. 2023/2024) Financial time series forecasting: an empirical analysis of Fama-French 3 factor model portfolios. Tesi di Laurea in Computational finance, Luiss Guido Carli, relatore Nicola Borri, pp. 38. [Bachelor's Degree Thesis]
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Abstract/Index
Financial time series and theoretical aspects of the models proposed. Introduction to financial time series. Challenges and characteristics in financial time series forecasting. Theoretical foundations of forecasting models. Traditional time series models. Introduction to machine learning models for time series. Deep learning models for time series. Recurrent neural networks and LSTMs. Evaluation metrics for forecasting performance. The Fama-French 3 factor model. The capital asset pricing model (CAPM). Limitations of CAPM and the need for multi-factor models. The Fama-French 3 factor model. Empirical evidence and applications. Forecasting Fama-French portfolios. Data source and content. Distribution and Correlation Analysis of Portfolio Returns. ARIMA model application and results. GARCH model for volatility forecasting. Forecasting with machine learning models. XGBoost model application and results. Random forest vs GARCH for volatility forecasting. Forecasting returns with deep learning models.
References
Bibliografia: p. 34.
Thesis Type: | Bachelor's Degree Thesis |
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Institution: | Luiss Guido Carli |
Degree Program: | Bachelor's Degree Programs > Bachelor's Degree Program in Management and Computer Science, English language (L-18) |
Chair: | Computational finance |
Thesis Supervisor: | Borri, Nicola |
Academic Year: | 2023/2024 |
Session: | Extraordinary |
Deposited by: | Alessandro Perfetti |
Date Deposited: | 24 Jun 2025 14:00 |
Last Modified: | 24 Jun 2025 14:00 |
URI: | https://tesi.luiss.it/id/eprint/42622 |
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