Application Research of Deep Learning in Financial Time Series Prediction

Lin Zou
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引用次数: 0

Abstract

The market’s every twitch has the power to ripple through the entire economic landscape. Think of stock indices as the market’s temperature gauge, signaling whether it’s heating up or cooling down. For the current methods of predicting stock indices using deep learning models, the computational complexity of deep learning models is relatively high. Therefore, how to reduce computational costs without compromising prediction performance has become a key and difficult point for future work. This study only conducted predictive research on market data and did not apply the two deep learning models proposed by our institute to time series data in other fields. Therefore, applying the deep learning model proposed in this article to time series in other non-financial fields is a key direction for future research. This study not only provides a new perspective for predicting markets, but also lays the foundation for further application of deep learning technology in the financial field.
深度学习在金融时间序列预测中的应用研究
市场的每一次波动都有波及整个经济格局的力量。可以把股指看作是市场的温度表,表明市场是在升温还是在降温。对于目前使用深度学习模型预测股票指数的方法,深度学习模型的计算复杂度较高。因此,如何在不影响预测性能的前提下降低计算成本成为未来工作的重点和难点。本研究仅对市场数据进行了预测研究,未将研究所提出的两种深度学习模型应用于其他领域的时间序列数据。因此,将本文提出的深度学习模型应用于其他非金融领域的时间序列是未来研究的重点方向。本研究不仅为市场预测提供了新的视角,也为深度学习技术在金融领域的进一步应用奠定了基础。
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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