LSR-IGRU:基于长期短期关系和改进 GRU 的股票走势预测

Peng Zhu, Yuante Li, Yifan Hu, Qinyuan Liu, Dawei Cheng, Yuqi Liang
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引用次数: 0

摘要

股票价格预测是金融领域的一个挑战性问题,受到广泛关注。近年来,随着深度学习和图神经网络等技术的快速发展,越来越多的研究方法开始关注股票之间相互关系的探索。然而,现有方法大多关注股票的短期动态关系,并直接将关系信息与时间信息进行整合。然而,现有方法大多关注股票的短期动态关系,并直接将关系信息与时间信息整合,往往忽略了股票市场中股票之间复杂的非线性动态特征和潜在的高阶交互关系。因此,我们在本文中提出了基于股票长期短期关系和改进的 GRU 输入的股价趋势预测模型LSR-IGRU。首先,我们构建了股票之间的长期短期关系矩阵,首次利用二级行业信息捕捉股票的长期关系,并利用隔夜价格信息建立短期关系。接下来,我们改进了 GRU 模型的每一步输入,使模型能够更有效地整合时间信息和长期短期关系信息,从而显著提高了预测股票走势变化的准确性。最后,通过在中国和美国股票市场的多个数据集上进行广泛实验,我们验证了所提出的 LSR-IGRU 模型优于当前最先进的基线模型。我们还将所提出的模型应用于一家金融公司的算法交易系统,与其他基线方法相比,该模型获得了显著较高的累计投资组合回报。我们的资料来源发布在https://github.com/ZP1481616577/Baselines\_LSR-IGRU.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LSR-IGRU: Stock Trend Prediction Based on Long Short-Term Relationships and Improved GRU
Stock price prediction is a challenging problem in the field of finance and receives widespread attention. In recent years, with the rapid development of technologies such as deep learning and graph neural networks, more research methods have begun to focus on exploring the interrelationships between stocks. However, existing methods mostly focus on the short-term dynamic relationships of stocks and directly integrating relationship information with temporal information. They often overlook the complex nonlinear dynamic characteristics and potential higher-order interaction relationships among stocks in the stock market. Therefore, we propose a stock price trend prediction model named LSR-IGRU in this paper, which is based on long short-term stock relationships and an improved GRU input. Firstly, we construct a long short-term relationship matrix between stocks, where secondary industry information is employed for the first time to capture long-term relationships of stocks, and overnight price information is utilized to establish short-term relationships. Next, we improve the inputs of the GRU model at each step, enabling the model to more effectively integrate temporal information and long short-term relationship information, thereby significantly improving the accuracy of predicting stock trend changes. Finally, through extensive experiments on multiple datasets from stock markets in China and the United States, we validate the superiority of the proposed LSR-IGRU model over the current state-of-the-art baseline models. We also apply the proposed model to the algorithmic trading system of a financial company, achieving significantly higher cumulative portfolio returns compared to other baseline methods. Our sources are released at https://github.com/ZP1481616577/Baselines\_LSR-IGRU.
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