股指预测框架:整合技术与拓扑中尺度指标

Zi Qi, Zhan Bu, Xi Xiong, Hongliang Sun, Jie Cao, Chengcui Zhang
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引用次数: 4

摘要

随着中国金融市场在预测未来股市走势方面的重要性日益增强,几乎所有人都在关注中国金融市场。传统的方法通常采用各种统计技术或机器学习方法进行股指预测,并且通常依赖于对技术指标的分析。在现有文献中,研究人员很少尝试利用时序股票相关网络的拓扑特征来预测股票指数。记住这一点,我们首先使用经典的可见度图模型(VGM)计算任意两只股票的相关系数。然后,利用平面最大滤波图(PMFG)方法,从历史股票定量数据中生成时间股票相关网络。接下来,我们选择了14个经常被采用的技术指标(ti)和5个从时间股票相关网络中提取的拓扑中尺度指标(tmi)作为6个机器学习分类器的预测变量。为了提高预测精度并解决潜在的过拟合问题,我们修改了经典的顺序向后选择(SBS)算法,以学习每个分类器最重要的预测变量。然后,我们对三个中国股票指数进行了一系列的综合实验,以验证我们的预测框架的性能。实验结果表明,与仅使用ti或tmi的传统方法相比,使用ti和tmi的组合方法显著提高了预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Stock Index Prediction Framework: Integrating Technical and Topological Mesoscale Indicators
With its growing importance in predicting future stock trends, nearly everyone watches the Chinese financial market. Traditional approaches typically employ a variety of statistical techniques or machine learning methods for stock index predicting, and often rely on analysis of technical indicators. In the existing literature, researchers rarely attempt to predict the stock index by using the topological features of temporal stock correlation networks. Keeping this in mind, we first calculate the correlation coefficient of any two stocks using the classic Visibility Graph Model (VGM). Then, by using the Planar Maximally Filtered Graph (PMFG) method, we generate temporal stock correlation networks from historical stock quantitative data. Next, we choose fourteen frequently adopted Technical Indicators (TIs) and five Topological Mesoscale Indicators (TMIs, extracted from the temporal stock correlation networks) as predictive variables of six machine learning classifiers. To improve forecast accuracy and to address potential overfitting problems, we modify the classic Sequential Backward Selection (SBS) algorithm to learn the most significant predictive variables for each classifier. We then conduct a series of comprehensive experiments on three Chinese stock indices to validate our prediction framework's performance. Experimental results show that using a combination of TIs and TMIs significantly improves forecast accuracy over conventional methods that use either TIs or TMIs exclusively.
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