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Using Structured Events to Predict Stock Price Movement: An Empirical Investigation

机译:利用结构化事件预测股价走势:一项实证研究

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It has been shown that news events influence the trends of stock price movements. However, previous work on news-driven stock market prediction rely on shallow features (such as bags-of-words, named entities and noun phrases), which do not capture structured entity-relation information, and hence cannot represent complete and exact events. Recent advances in Open Information Extraction (Open IE) techniques enable the extraction of structured events from web-scale data. We propose to adapt Open IE technology for event-based stock price movement prediction, extracting structured events from large-scale public news without manual efforts. Both linear and nonlinear models are employed to empirically investigate the hidden and complex relationships between events and the stock market. Large-scale experiments show that the accuracy of S&P 500 index prediction is 60%, and that of individual stock prediction can be over 70%. Our event-based system outperforms bags-of-words-based baselines, and previously reported systems trained on S&P 500 stock historical data.
机译:事实表明,新闻事件影响股价走势。但是,以前有关新闻驱动的股票市场预测的工作依赖于浅层特征(例如词袋,命名实体和名词短语),这些特征无法捕获结构化的实体关系信息,因此无法表示完整而准确的事件。开放信息提取(Open IE)技术的最新进展使得能够从Web规模的数据中提取结构化事件。我们建议将Open IE技术用于基于事件的股价走势预测,无需手动操作即可从大型公共新闻中提取结构化事件。线性模型和非线性模型均用于根据经验研究事件与股票市场之间隐藏和复杂的关系。大规模实验表明,标准普尔500指数预测的准确性为60%,单个股票预测的准确性可以超过70%。我们基于事件的系统优于基于词袋的基准,并且以前报告的系统接受过S&P 500股票历史数据的培训。

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