Stock trend forecasting, which forecasts stock prices' future trends, plays an essential role in investment. The stocks in a market can share information so that their stock prices are highly correlated. Several methods were recently proposed to mine the shared information through stock concepts (e.g., technology, Internet Retail) extracted from the Web to improve the forecasting results. However, previous work assumes the connections between stocks and concepts are stationary, and neglects the dynamic relevance between stocks and concepts, limiting the forecasting results. Moreover, existing methods overlook the invaluable shared information carried by hidden concepts, which measure stocks' commonness beyond the manually defined stock concepts. To overcome the shortcomings of previous work, we proposed a novel stock trend forecasting framework that can adequately mine the concept-oriented shared information from predefined concepts and hidden concepts. The proposed framework simultaneously utilize the stock's shared information and individual information to improve the stock trend forecasting performance. Experimental results on the real-world tasks demonstrate the efficiency of our framework on stock trend forecasting. The investment simulation shows that our framework can achieve a higher investment return than the baselines.
翻译:预测股票价格未来趋势的股票趋势预测在投资中发挥着关键作用。市场中的股票可以共享信息,从而使其股票价格高度相关。最近提出了几种方法,通过从网上提取的股票概念(例如技术、因特网零售)对共享信息进行排雷,以改进预测结果;然而,以前的工作假设股票与概念之间的联系是静止的,忽视了股票与概念之间的动态相关性,限制了预测结果。此外,现有方法忽视了隐性概念所携带的宝贵共享信息,这些概念衡量股票在人工界定的股票概念之外的共同性。为克服以往工作的缺点,我们提议了一个新的股票趋势预测框架,以便从预先界定的概念和隐性概念中充分清除以概念为导向的共享信息。拟议框架同时利用股票共享信息和个人信息来改进股票趋势预测业绩。现实世界任务实验结果显示了我们股票趋势预测框架的效率。投资模拟表明,我们的框架可以实现比基线更高的投资回报。