Abstract

Research objective: The aim of the article is to analyze the effectiveness and accuracy of deep learning in predicting trends and changes related to financialization.
 Methodology: In preparing this scientific article, the focus was on conducting a literature review and analyzing existing research that utilized deep learning techniques to forecast the phenomenon of financialization. The principles, algorithms, and techniques applied in deep learning were discussed, with a particular emphasis on their potential applications in predicting financialization trends.
 Main conclusions: The results indicate that deep learning can be a powerful tool for forecasting financialization, demonstrating high predictive accuracy.
 Application of the study: The discoveries from this article can find practical application in the field of financialization, supporting better investment decision-making and risk management.
 Originality/Novelty of the study: The work adds value by showcasing the potential of deep learning as an advanced tool for forecasting financialization, which can significantly impact the development of this domain.

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