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Forecasting stock price movements with multiple data sources: Evidence from stock market in China

机译:预测多个数据来源的股票价格走势:来自中国股票市场的证据

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We employ multiple heterogeneous data sources, including historical transaction data, technical indicators, stock posts, news and Baidu index, to predict the directions of stock price movements. We focus on the distinctive predicting patterns of active and inactive stocks, and we examine the predictive power of support vector machine (SVM) in different levels of activity for a single stock. We construct a total of 14 data source combinations according to the above 5 heterogeneous data sources, and choose three forecasting horizons, namely 1 day, 2 days and 3 days, so that we can investigate the forecast effects of stock price movements in China A-share market under different data source combinations and forecasting horizons. It is concluded that the optimal data source combinations of active and inactive stocks are different. Active stocks achieve the highest accuracy when combining multiple non-traditional data sources, while inactive stocks obtain the highest accuracy when combining traditional data sources with non-traditional data sources. We further divide each stock into inactive periods, active periods and very active periods, and compare the forecast effects of the same stocks in different periods. We conclude that, for most combinations of data sources, the more active the stock is, the more accurate we achieve, which indicates that our approach is more powerful for predicting the price movements of stocks in active and very active periods. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们采用多个异构数据来源,包括历史交易数据,技术指标,股票邮政,新闻和百度指数,预测股票价格走势的方向。我们专注于活跃和非活动股的独特预测模式,我们研究了单一库存不同活动水平的支持向量机(SVM)的预测力。我们根据上述5个异构数据来源构建了14个数据源组合,并选择三个预测视野,即1天,2天和3天,以便我们可以调查股票价格变动在中国的预测效果 - 在不同的数据源组合和预测视野下分享市场。得出结论,活动和非活动股票的最佳数据源组合不同。在结合多个非传统数据源时,主动股可以实现最高的准确性,而非活动股票在将传统数据源与非传统数据源组合时获得最高精度。我们进一步将每股股票分为非活动期,活动期和非常有效期,并比较不同时期相同股票的预测效果。我们得出结论,对于数据来源的大多数组合,股票越活跃,我们的实现越准确,这表明我们的方法更加强大,以预测股票在积极和非常有效期内的价格变动。 (c)2019 Elsevier B.v.保留所有权利。

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