论文标题
添加:增强拆卸蒸馏框架以改善股票趋势预测
ADD: Augmented Disentanglement Distillation Framework for Improving Stock Trend Forecasting
论文作者
论文摘要
股票趋势预测已成为流行的研究方向,在金融领域引起广泛关注。尽管深度学习方法已经取得了令人鼓舞的结果,但仍有许多局限性,例如如何从原始库存数据中提取清洁功能。在本文中,我们介绍了\ emph {增强的分解蒸馏(add)}方法,以从噪声原始数据中删除干涉特征。具体而言,我们提出1)分离结构,将多余和市场信息与股票数据分开,以避免两个因素互相预测的因素。此外,通过应用2)在解散框架上采用动态自我介绍方法,也可以去除其他隐式干扰因素。此外,由于我们框架中的解码器模块,3)提出了一种新的策略,以根据不同的过度和市场特征来增强培训样本以提高性能。我们对中国股票市场数据进行实验。结果表明,我们的方法可大大提高股票趋势预测性能以及通过回测的实际投资收入,这强烈证明了我们方法的有效性。
Stock trend forecasting has become a popular research direction that attracts widespread attention in the financial field. Though deep learning methods have achieved promising results, there are still many limitations, for example, how to extract clean features from the raw stock data. In this paper, we introduce an \emph{Augmented Disentanglement Distillation (ADD)} approach to remove interferential features from the noised raw data. Specifically, we present 1) a disentanglement structure to separate excess and market information from the stock data to avoid the two factors disturbing each other's own prediction. Besides, by applying 2) a dynamic self-distillation method over the disentanglement framework, other implicit interference factors can also be removed. Further, thanks to the decoder module in our framework, 3) a novel strategy is proposed to augment the training samples based on the different excess and market features to improve performance. We conduct experiments on the Chinese stock market data. Results show that our method significantly improves the stock trend forecasting performances, as well as the actual investment income through backtesting, which strongly demonstrates the effectiveness of our approach.