Challenging the Status Quo: Advancing Bitcoin Price Prediction through Innovative Machine Learning Techniques

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dc.contributor.advisor Corazza, Marco it_IT
dc.contributor.author Pasti, Riccardo <1998> it_IT
dc.date.accessioned 2023-06-19 it_IT
dc.date.accessioned 2023-11-08T14:55:26Z
dc.date.issued 2023-07-18 it_IT
dc.identifier.uri http://hdl.handle.net/10579/23951
dc.description.abstract The global surge in cryptocurrency markets, particularly Bitcoin, has generated a growing demand for accurate and reliable price prediction models. Traditional forecasting methods, while helpful, have demonstrated certain limitations in terms of accuracy and adaptability. This study aims to challenge the status quo by advancing Bitcoin price prediction through the application of innovative machine learning techniques. The research investigates the current state of Bitcoin price forecasting, evaluating the performance of conventional models and identifying their weaknesses. Furthermore, the study explores a wide range of machine learning algorithms, including regression techniques, time series analysis, deep learning models, and ensemble methods, to improve the existing prediction strategies. The selection of these algorithms is based on their potential to enhance the accuracy, robustness, and adaptability of the models. Using a comprehensive dataset of historical Bitcoin prices, market indicators, relevant macroeconomic factors, and sentiment analysis data on the crypto market, the study conducts a comparative analysis of the selected machine learning techniques. By applying rigorous model evaluation criteria, the research highlights the most promising approaches for superior Bitcoin price prediction. Additionally, the study delves into the interpretability of these models, emphasizing the importance of understanding the underlying factors that drive price changes. The best-performing model is then utilized to backtest simple trading strategies, providing valuable insights into the practical application of the proposed prediction techniques in the context of cryptocurrency trading. The inclusion of sentiment analysis data in a second scenario further extends the understanding of the complex interplay between market sentiment and price fluctuations, offering a more comprehensive perspective on the drivers of Bitcoin price movements. it_IT
dc.language.iso en it_IT
dc.publisher Università Ca' Foscari Venezia it_IT
dc.rights © Riccardo Pasti, 2023 it_IT
dc.title Challenging the Status Quo: Advancing Bitcoin Price Prediction through Innovative Machine Learning Techniques it_IT
dc.title.alternative Challenging the Status Quo Advancing Bitcoin Price Prediction through Machine Learning RICCARDO PASTI 868552 (Repaired) it_IT
dc.type Master's Degree Thesis it_IT
dc.degree.name Data analytics for business and society it_IT
dc.degree.level Laurea magistrale it_IT
dc.degree.grantor Dipartimento di Economia it_IT
dc.description.academicyear 2022/2023_sessione estiva_10-luglio-23 it_IT
dc.rights.accessrights closedAccess it_IT
dc.thesis.matricno 868552 it_IT
dc.subject.miur SECS-S/06 METODI MATEMATICI DELL'ECONOMIA E DELLE SCIENZE ATTUARIALI E FINANZIARIE it_IT
dc.description.note The global surge in cryptocurrency markets, particularly Bitcoin, has generated a growing demand for accurate and reliable price prediction models. Traditional forecasting methods, while helpful, have demonstrated certain limitations in terms of accuracy and adaptability. This study aims to challenge the status quo by advancing Bitcoin price prediction through the application of innovative machine learning techniques. The research investigates the current state of Bitcoin price forecasting, evaluating the performance of conventional models and identifying their weaknesses. Furthermore, the study explores a wide range of machine learning algorithms, including regression techniques, time series analysis, deep learning models, and ensemble methods, to improve the existing prediction strategies. The selection of these algorithms is based on their potential to enhance the accuracy, robustness, and adaptability of the models. Using a comprehensive dataset of historical Bitcoin prices, market indicators, relevant macroeconomic factors, and data on the crypto market, the study conducts a comparative analysis of the selected machine learning techniques. By applying rigorous model evaluation criteria, the research highlights the most promising approaches for superior Bitcoin price prediction. it_IT
dc.degree.discipline it_IT
dc.contributor.co-advisor it_IT
dc.date.embargoend 10000-01-01
dc.provenance.upload Riccardo Pasti (868552@stud.unive.it), 2023-06-19 it_IT
dc.provenance.plagiarycheck None it_IT


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