How to quickly and automatically mine effective information and serve investment decisions has attracted more and more attention from academia and industry. And new challenges have been raised with the global pandemic. This paper proposes a two-phase AlphaMLDigger that effectively finds excessive returns in the highly fluctuated market. In phase 1, a deep sequential NLP model is proposed to transfer blogs on Sina Microblog to market sentiment. In phase 2, the predicted market sentiment is combined with social network indicator features and stock market history features to predict the stock movements with different Machine Learning models and optimizers. The results show that our AlphaMLDigger achieves higher accuracy in the test set than previous works and is robust to the negative impact of COVID-19 to some extent.
翻译:如何迅速和自动地挖掘有效信息,为投资决策服务,吸引了学术界和行业越来越多的关注。全球大流行病带来了新的挑战。本文件提出了两阶段的阿尔法ML挖掘机,在高度波动的市场中实际发现了过多的回报。在第一阶段,建议采用一个深层次的相继NLP模式,将Sina Microblog博客的博客转换为市场情绪。在第二阶段,预测的市场情绪与社会网络指标特征和股市历史特征相结合,以预测股票流动,采用不同的机器学习模型和优化器。结果显示,我们的阿尔法MLD挖掘机在测试集中比以往的工程更加精准,在某种程度上对COVID-19的负面影响非常活跃。