Stock Movement Modeling Based on the Analysis of Negative Correlation

K. Chansilp
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引用次数: 0

Abstract

This research presents the data-driven modeling method to derive a combined trading model from the analysis of negative correlations among the top-five active stocks from each sector of the Thailand stock market. The negative movements are computed from the closing price direction of major stocks in the eight biggest sectors. The highly negative correlated stocks among market groups are then used to build predictive trading models with three algorithms: regression analysis, generalized linear modeling, and chi-square automatic interaction detection. An ensemble from the combination of the best two models is then created. The experimental results reveal that the proposed method of trading based on negative movement analysis can accurately predict closing price of the active stock with low error rate around 1.86%.
基于负相关分析的股票走势建模
本研究提出了数据驱动的建模方法,通过分析泰国股票市场各部门前五名活跃股票之间的负相关关系,推导出组合交易模型。负走势是根据八大板块中主要股票的收盘价格方向计算的。运用回归分析、广义线性建模和卡方自动交互检测三种算法,对市场组间高度负相关股票建立预测交易模型。然后将最好的两个模型组合在一起创建一个整体。实验结果表明,本文提出的基于负面走势分析的交易方法能够准确预测活跃股票的收盘价,错误率较低,约为1.86%。
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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16
审稿时长
8 weeks
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