Application of machine learning for financialization modeling

Zuzanna Korytnicka
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Abstract

Research objective: The objective of this article is to present the application of machine learning techniques in modeling the phenomenon of financialization and analyze their effectiveness in predicting and understanding this phenomenon. Methodology: The methodology is based on data collection and processing from various sources. Subsequently, machine learning techniques such as regression, classification, decision trees, and neural networks were applied to train predictive models and analyze the phenomenon of financialization. Main conclusions: Data analysis using machine learning techniques allowed for the identification of key factors and patterns related to financialization. It has been demonstrated that machine learning models can effectively predict financialization trends and provide insight into the mechanisms and factors influencing this phenomenon. Application of the study: The study has significant implications for various fields, such as economics, finance, and economic policy. The application of machine learning techniques in modeling financialization can aid in making better investment decisions, assessing risk, monitoring financial stability, and developing more effective regulatory strategies. Originality/Novelty of the study: This article contributes an original perspective to the scientific literature by focusing on the application of machine learning techniques in the context of financialization. The work presents a new insight into this phenomenon and provides evidence of the effectiveness of machine learning-based models in analyzing and forecasting financialization.
机器学习在金融化建模中的应用
研究目的:本文的目的是展示机器学习技术在金融化现象建模中的应用,并分析其在预测和理解这一现象方面的有效性。方法论:方法论是基于从各种来源收集和处理的数据。随后,机器学习技术如回归、分类、决策树和神经网络被应用于训练预测模型和分析金融化现象。主要结论:使用机器学习技术进行数据分析,可以识别与金融化相关的关键因素和模式。研究表明,机器学习模型可以有效地预测金融化趋势,并深入了解影响这一现象的机制和因素。研究应用:本研究对经济、金融、经济政策等多个领域具有重要意义。机器学习技术在金融化建模中的应用可以帮助做出更好的投资决策,评估风险,监控金融稳定性,制定更有效的监管策略。研究的原创性/新颖性:本文通过关注机器学习技术在金融化背景下的应用,为科学文献提供了一个原创的视角。这项工作提出了对这一现象的新见解,并提供了基于机器学习的模型在分析和预测金融化方面的有效性的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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