定量金融视角下个人投资者行为的理论探讨:机器学习应用的可能性

Xinchen Zhou
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引用次数: 0

摘要

在现代金融领域,理解个人投资者的行为是一项复杂而关键的任务。随着金融市场的不断复杂化和数字化,个人投资者的行为模式和决策过程越来越受到学者和市场监管机构的关注。本研究从定量金融的角度出发,理论化了机器学习在分析和预测个人投资者行为方面的潜在应用。尽管投资者的行为受到无数因素的影响,如个体差异、市场条件、信息因素和心理偏见,但我们仍然可以在他们的行为中找到共同的模式。此外,我们认为机器学习技术在预测个人投资者的行为方面具有巨大的潜力。本研究为理解和预测个人投资者行为提供了新的视角和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Theoretical Discussion on Individual Investor Behavior from a Quantitative Finance Perspective: Possibilities for Machine Learning Applications
Understanding the behaviors of individual investors is a complex and crucial task in the modern financial landscape. As the financial markets continue to grow in complexity and digitalization, the behavior patterns and decision- making processes of individual investors are increasingly drawing the attention of scholars and market regulators. This study embarks from a quantitative finance perspective, theorizing on the potential application of machine learning in analyzing and predicting individual investor behavior. Despite the myriad influences on investor behavior—such as individual differences, market conditions, information factors, and psychological biases—we still identify common patterns in their behavior. Furthermore, we propose that machine learning technology holds significant potential for predicting the behavior of individual investors. This study presents new perspectives and methods for understanding and predicting the behavior of individual investors.
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