Quantitative stock trading based on Machine Learning (ML) and Deep Learning (DL) has gained great attention in recent years thanks to the ever-increasing availability of financial data and the ability of this technology to analyze the complex dynamics of the stock market. Despite the plethora of approaches present in literature, a large gap exists between the solutions produced by the scientific community and the practices adopted in real-world systems. Most of these works in fact lack a practical vision of the problem and ignore the main issues afflicting fintech practitioners. To fill such a gap, we provide a systematic review of the main dangers affecting the development of an ML/DL pipeline in the financial domain. They include managing the stochastic and non-stationary characteristics of stock data, various types of bias, overfitting of models and devising impartial valuation methods. Finally, we present possible solutions to these critical issues.

Avoiding the Pitfalls on Stock Market: Challenges and Solutions in Developing Quantitative Strategies / Bergianti, M.; Cioffo, N.; Del Buono, F.; Paganelli, M.; Porrello, A.. - 3486:(2023), pp. 489-494. (Intervento presentato al convegno 2023 Italia Intelligenza Artificiale - Thematic Workshops, Ital-IA 2023 tenutosi a ita nel 2023).

Avoiding the Pitfalls on Stock Market: Challenges and Solutions in Developing Quantitative Strategies

Del Buono F.;Paganelli M.;Porrello A.
2023

Abstract

Quantitative stock trading based on Machine Learning (ML) and Deep Learning (DL) has gained great attention in recent years thanks to the ever-increasing availability of financial data and the ability of this technology to analyze the complex dynamics of the stock market. Despite the plethora of approaches present in literature, a large gap exists between the solutions produced by the scientific community and the practices adopted in real-world systems. Most of these works in fact lack a practical vision of the problem and ignore the main issues afflicting fintech practitioners. To fill such a gap, we provide a systematic review of the main dangers affecting the development of an ML/DL pipeline in the financial domain. They include managing the stochastic and non-stationary characteristics of stock data, various types of bias, overfitting of models and devising impartial valuation methods. Finally, we present possible solutions to these critical issues.
2023
2023 Italia Intelligenza Artificiale - Thematic Workshops, Ital-IA 2023
ita
2023
3486
489
494
Bergianti, M.; Cioffo, N.; Del Buono, F.; Paganelli, M.; Porrello, A.
Avoiding the Pitfalls on Stock Market: Challenges and Solutions in Developing Quantitative Strategies / Bergianti, M.; Cioffo, N.; Del Buono, F.; Paganelli, M.; Porrello, A.. - 3486:(2023), pp. 489-494. (Intervento presentato al convegno 2023 Italia Intelligenza Artificiale - Thematic Workshops, Ital-IA 2023 tenutosi a ita nel 2023).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1366791
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