聆听混乱的低语:面向新闻的股票趋势预测的深度学习框架

Ziniu Hu, Weiqing Liu, Jiang Bian, Xuanzhe Liu, Tie-Yan Liu
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引用次数: 261

摘要

股票走势预测在寻求股票投资利润最大化中起着至关重要的作用。然而,由于股票市场的高度波动性和非平稳性,精确的趋势预测是非常困难的。互联网上爆炸性的信息,加上自然语言处理和文本挖掘技术的不断发展,使投资者能够从在线内容中揭示市场趋势和波动性。不幸的是,网上股市相关内容的质量、可信度和全面性参差不齐,很大一部分是低质量的新闻、评论甚至谣言。为了应对这一挑战,我们模仿人类面对如此混乱的在线新闻的学习过程,遵循三个原则:顺序内容依赖,多样化影响,有效和高效学习。在本文中,为了抓住前两个原则,我们设计了一个混合注意网络(HAN),根据最近相关新闻的顺序来预测股票趋势。此外,我们应用自定进度学习机制来模仿第三个原则。对现实世界股票市场数据的大量实验证明了我们的框架的有效性。进一步的模拟表明,基于我们提出的框架的直接交易策略可以显着增加年化回报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Listening to Chaotic Whispers: A Deep Learning Framework for News-oriented Stock Trend Prediction
Stock trend prediction plays a critical role in seeking maximized profit from the stock investment. However, precise trend prediction is very difficult since the highly volatile and non-stationary nature of the stock market. Exploding information on the Internet together with the advancing development of natural language processing and text mining techniques have enabled investors to unveil market trends and volatility from online content. Unfortunately, the quality, trustworthiness, and comprehensiveness of online content related to stock market vary drastically, and a large portion consists of the low-quality news, comments, or even rumors. To address this challenge, we imitate the learning process of human beings facing such chaotic online news, driven by three principles: sequential content dependency, diverse influence, and effective and efficient learning. In this paper, to capture the first two principles, we designed a Hybrid Attention Networks(HAN) to predict the stock trend based on the sequence of recent related news. Moreover, we apply the self-paced learning mechanism to imitate the third principle. Extensive experiments on real-world stock market data demonstrate the effectiveness of our framework. A further simulation illustrates that a straightforward trading strategy based on our proposed framework can significantly increase the annualized return.
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