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Financial news-based stock movement prediction using causality analysis of influence in the Korean stock market

机译:基于对韩国股市影响力的因果关系分析,基于财经新闻的股票走势预测

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摘要

With the advent of the Big Data era and the development of machine learning technologies, predicting stock movements by analyzing news articles, which are unstructured data, has been studied actively. However, so far no attempts have been made to utilize the asymmetric relationship of firms. Thus far, most papers focus on only the target firm, and few papers focus on the target firm and relevant firms together. In this article, we propose a novel machine learning model to forecast stock price movement based on the financial news considering causality. Specifically, our method analyzes the causal relationship between companies, and it accounts for the directional impact within the Global Industry Classification Standard sectors. In our proposed method, transfer entropy is used to find causality, and multiple kernel learning is used to combine features of target firm and causal firms. Based on a Korean market dataset and out-of-sample test, our experimental results reveal that the proposed causal analytic-based framework outperforms two traditional state-of-the-art algorithms. Furthermore, the experimental results show that the proposed method can predict the stock price directional movements even when there is no financial news on the target firm, but financial news is published on causal firms. Our findings reveal that identifying causal relationship is important in prediction problems, and we suggest that it is important to develop machine learning algorithms and it is also important to find connections with well-established theories such as the complex system theory.
机译:随着大数据时代的到来和机器学习技术的发展,通过分析作为非结构化数据的新闻文章来预测股票走势已得到了积极的研究。但是,到目前为止,还没有尝试利用企业的不对称关系。到目前为止,大多数论文只关注目标公司,很少论文关注目标公司和相关公司。在本文中,我们提出了一种新颖的机器学习模型,该模型基于考虑因果关系的财经新闻来预测股票价格的走势。具体来说,我们的方法分析了公司之间的因果关系,并说明了《全球行业分类标准》行业内的方向性影响。在我们提出的方法中,转移熵用于发现因果关系,多核学习用于结合目标公司和因果公司的特征。基于韩国市场数据集和样本外测试,我们的实验结果表明,所提出的基于因果分析的框架优于两种传统的最新算法。此外,实验结果表明,即使目标公司没有财务新闻,但因果公司也发布财务新闻,该方法仍可以预测股票价格的走势。我们的发现表明,确定因果关系对于预测问题很重要,并且我们建议开发机器学习算法很重要,找到与诸如复杂系统理论之类的公认理论的联系也很重要。

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