Predicting stock prices from textual information is a challenging task due to the uncertainty of the market and the difficulty understanding the natural language from a machine's perspective. Previous researches focus mostly on sentiment extraction based on single news. However, the stocks on the financial market can be highly correlated, one news regarding one stock can quickly impact the prices of other stocks. To take this effect into account, we propose a new stock movement prediction framework: Multi-Graph Recurrent Network for Stock Forecasting (MGRN). This architecture allows to combine the textual sentiment from financial news and multiple relational information extracted from other financial data. Through an accuracy test and a trading simulation on the stocks in the STOXX Europe 600 index, we demonstrate a better performance from our model than other benchmarks.
翻译:从文字信息预测股票价格是一项具有挑战性的任务,因为市场不确定,而且难以从机器的角度理解自然语言。以往的研究主要侧重于基于单一新闻的情绪提取。然而,金融市场上的股票可能高度相关,一个关于一个股票的新闻可以迅速影响其他股票的价格。考虑到这一影响,我们提议一个新的股票流动预测框架:多格经常网股票预测。这一结构可以将金融新闻的文字情绪和其他金融数据中提取的多种关系信息结合起来。通过对STOXX欧洲600指数中的股票进行精确测试和贸易模拟,我们从模型上展示出比其他基准更好的业绩。